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A strategic review: the role of commercially available tools for planning, modelling, optimization, and performance measurement of photovoltaic systems

  • Akhlaque Ahmad Khan ORCID logo EMAIL logo and Ahmad Faiz Minai
Published/Copyright: March 20, 2023
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Abstract

Solar power and photovoltaic (PV) systems have become crucial components of the world’s energy portfolio. The PV systems may be engineered in a number of ways, including off-grid, on-grid, and tracking. Incorporating PV systems with traditional sources of power like diesel generators (DGs) or other renewable sources, like windmills, is possible. In this situation, developers, investigators, and experts are striving to create the best design that accommodates the load demand in regards to technological, financial, ecological, and social aspects. To assist in figuring out the best PV size and design, numerous tools, models, and heuristics were created and rolled out. The majority of the tools, models, and techniques used to build PV systems over the past 70 years were described, assessed, and evaluated in this article. It was observed that methods for optimising PV system designs evolved with time and demand. Tool design is often divided into segments such as artificial and classical, solo and hybrid approaches, and others. Hybrid approaches, nevertheless, gained prominence to become the most popular approach because of its adaptability and capacity for handling challenging issues. This paper’s evaluation also helps the readers choose a PV system design tool (approximately 46) that is suited for their needs.

1 Introduction

Using renewable energy sources (RESs) is the modern scientific and technical paradigm shift that aims to lessen human dependency on fossil fuels. It is indeed crucial to find new sources of energy in order to satisfy the burgeoning demand for electricity while mitigating the negative environmental and social impacts. Renewable energy sources provide numerous benefits, such as sustainability, lower emissions, and financial gains. It is required to integrate multiple sources for a trustworthy system, creating a hybrid model based on RESs, due to the fragmented nature of plenty of RES.

Solar energy is becoming an indispensable form of energy, whether it is integrated alone or in a hybrid with other RES or non-RES. Thermal and/or lighting purposes are the major ways solar energy is used. Solar thermal energy is used to boil water and create vapour or heated air, or both, for a variety of applications, including home and industrial uses, oil enhanced recovery, and so on. DC electric power is generated directly from sunlight irradiation using PV (solar) cells. When powering AC loads, an inverter can convert the electrical current from DC to AC or vice versa. The PV/T hybrid solar scheme comprises both sunlight and heat in a single system. Solar cells, which make up the smallest part of a photovoltaic (PV) system, are collectively referred to as PV modules. The solar cell, the smallest component of an SPV system, is colloquially referred to as a PV module due to the fact that by connecting numerous solar cells in series-shunt, the current (I), voltage (V), power (P), and energy output (Eo) are significantly increased (Alwaeli et al. 2019).

Figure 1 demonstrates the design of PV systems in various modes, including off-grid/standalone, on-grid/grid-connected, and hybrid systems. Standalone (SA) is mostly employed in secluded and remote locales. Battery packs, converters, and PV modules are all present in SA. On-grid PV systems are those that are installed by vendors as either a freestanding power plant or on rooftops under the framework of a service agreement with a service supplier. In addition to solar energy, the hybrid system also integrates wind turbines, diesel generators, digesters, etc. The production process, materials required, approach, and efficiency of the PV technology were all optimized. Additionally, the price of PV technology has plummeted and is now competitive with alternative energy technologies in some locales.

Figure 1: 
PV system configurations. (a) Off-grid/Standalone (SA) System, (b) ON-Grid/Grid-Connected (GC) System, (c) Hybrid System.
Figure 1:

PV system configurations. (a) Off-grid/Standalone (SA) System, (b) ON-Grid/Grid-Connected (GC) System, (c) Hybrid System.

For more than 50 years, PV system design and quality assessment have been among the fascinating issues confronting the field of renewable energy (RE), and they’re still indispensable. The researchers carried out both experimental and simulated investigations. Numerous topics were addressed by the investigation, including selecting the best design parameters for an intended application, assessing technical and/or economical factors, assessing the ecological footprint, developing various PV system designs, choosing the best hybrid model, etc. (Salmanoğlu and Çetin 2013) created a method using tools and software to figure out the optimal design for PV and WT energy systems. The programme was used to develop alternative plans for 81 municipalities in Turkey. They have checked and assessed the instances for consistency (Gholami et al. 2022). This improved upon previous electrical models used for solar power installations. Evaluations and ratings have been made on the core diode-based circuit model as well as the recommended enhancements.

Designing the necessary system that suits the intended purpose is the initial stage in utilising PV technology. To employ PV technology, you must first develop the necessary system to suit the application. The developers, investigators, technologists, and entrepreneurs that work with PV technology have access to a broad range of tools, methodologies, and models (De Soto et al. 2006; Khan et al. 2022; Minai et al. 2021). The device or mechanism that turns sunlight into electricity is a PV module or system. Changing climatic conditions, however, have an impact on the design and functionality of SPV systems. The PV modelling process employs mathematical formulas. On the other hand, PV tool/software applications are using these mathematical formulas with a simple user interface and designed capabilities to discover significant findings (i.e. technical, economical, environmental parameters, etc.). The approach, setup, evaluation metrics, precision, and adaptability of the PV software are distinct (De Soto et al. 2006; Khan et al. 2022). The objective of this article is to upgrade the cutting-edge models, optimization techniques, and tools and software used to design SPV systems.

The layout of this article contains an introduction, followed by a section on PV models, optimization, and simulation tools and software, where a concise overview of about 40 PV models and tools from the previous 50 years is provided. The development of tools and software used commercially is also counted (approximately 46). The details of the single and hybrid PV system design algorithms are reviewed and summarized in the next section. The discussion and conclusions are the outcome of a thorough review.

1.1 Novelty of the paper

The novelty of this systematic review is that:

  1. It provides a comprehensive dataset that will aid scholars in identifying the latest trends regarding the modelling approaches used in solar system sizing.

  2. This in-depth analysis will demonstrate the developments in tools, modelling, and studying PV behaviour.

Additionally, the innovative, motivating, and inspired arguments are what models and software are available for designing PV systems? How have these software, techniques, and models changed throughout time? What performance metrics are produced by various tools and software? Which tool or software is better equipped to meet my necessities?

2 PV models, optimization, and tools/softwares

Investigators, technical experts, trainees, scholars, and professionals utilize an assortment of models and tools/software to construct and assess the technical and economical feasibility of SPV systems. These models, optimization approaches, and tools/software are introduced, reviewed, summarized, and given a brief overview in this section. In this part, the models were introduced first, followed by an examination of the tools. There are both commercial options, such as HOMER, and freely available ones, such as PVWatts.

2.1 Model of array performance based on five parameters

Based on the 4-parameter one-diode model, the 5-parameter model is recommended. Wisconsin Solar Energy Laboratory’s original one-diode model has been upgraded with the help of the new proposal. As a means of improving PV power forecasts under STC, the newly suggested model was implemented into TRANSYS (De Soto et al. 2006). The five-parameter model can successfully forecast the I-V curve’s form if the idealization factor coefficient, diode reverse saturation current, light current, series resistance, and shunt resistance are all known quantities. These settings need to be suitable for the amount of radiation striking a given cell and its internal temperature (Boyd et al. 2011).

2.2 Solar advisor model (SAM)

The SNL and the NREL worked together to create the “Solar Advisor Model” (SAM) software. There is a vibrant user network and a steady stream of updates and enhancements to the model, making it suitable for usage in a stand-alone system. Before the entire model was released, a paper by discussed the idea of developing a comprehensive modelling tool under the name PVSunVisor (Mehos and Mooney 2005). This programme is used to do a technical assessment of the PV and a cost-benefit analysis. The programme can also optimize and do sensitivity analyses. Attempts to use the SAM approach to define a configuration for a demo power station faced challenges. Power cycles are predetermined by some of SAM’s settings, which may or may not be realistic. Adjusting the power cycle of the plant may be difficult because precise, well-specified data is required for making reliable projections about the plant’s actual output from the power output. Station factors such as solar radiation intensity and storage hours are prioritized while working with the SAM system. These variables allow one to deduce why the LCOE and total station output are what they are. In order to increase a project’s profitability, it is important to lower the LCOE values by increasing plant production while decreasing costs (Ezeanya et al. 2018).

2.3 Sandia photovoltaic array performance model (SPAPM)

The SNL created a model and software to assess the efficiency of PV arrays based on their 12 years of experience with PVSS, PVForm, and PVSIM. The suggested SPAPM model accounts for PV modules’ optical, thermal, and electrical properties. The model utilised hourly weather observations. The programme may be used to create, optimize, and assess photovoltaic installations (Cameron et al. 2008). The programme also generates a variety of comparisons based on the measured data. To directly calculate the output of PV modules under their working circumstances, climatic data is commonly analysed using SPAPM (Madaeni et al. 2012).

2.4 Sandia inverter performance model (SIPM)

In order to assess PV systems that are linked to the grid in a way that accounts for inverter characteristics, the SNL created SIPM in a similar vein to SPAPM (King et al. 2004). The inverter’s modelling equations and coefficients have been developed. SAM and PV DesignPro, which include the SIPM and SPAPM, will be explored in the following sections. The nonlinear behaviour of inverters may be analysed using the SIPM model, leading to greater efficiency and a larger market share at high power outputs (Petrana et al. 2018).

2.5 Evans and Facinelli model (E&FM)

With funding from SNL, researchers at the Arizona State University developed the “Evans and Facinelli” model in 1970 to evaluate the effectiveness of PV installations (Hottel and Woertz 1942). At first, the model was used once a month to evaluate the MPPT efficacy of the energy stored in a PV array or battery packs. TRNSYS was used for the model’s implementation, and it has since been improved upon for more functionality and precision. The accuracy and number of assessment results of the offered equations from the model have been enhanced with the introduction of several new features (Florschuetz 1979). The outcomes are also presented in a wider variety of formats, including numerical data, graphical representations, etc. However, SNL is not actively using, updating, or otherwise maintaining the model.

2.6 Aurora solar software

Aurora Solar creates solar PV-enabled cloud-based software. Aurora Solar, the manufacturer of the system, markets it primarily to businesses and homeowners. The energy may be calculated with the help of this program. The Aurora Solar Design Application Site evaluation, shading analysis, system design, performance estimates, and cost-benefit analysis are all included in one single solar design application.

2.7 REopt software

Since 2007, NREL has been working on the REopt software in order to better find and select the most cost-effective renewable energy projects across a portfolio of locales. Investigators at NREL use the REopt techno-economic decision support platform to improve the efficiency of energy systems in structures of all kinds, including buildings, universities, communities, microgrids, and more. REopt suggests the best combination of renewable energy, conventional generation, and energy storage technologies to maximize efficiency, reliability, carbon reduction, and power output.

The amount of shadow-free land on the site is being calculated. Aurora Solar creates cloud-based applications that facilitate solar PV. Aurora Solar produces the Aurora system, which is popular in both the commercial and residential markets. Users are able to compute energy with the help of this programme. Solar power system design software: Aurora Solar.

2.8 BlueSol PV software

BlueSol is an international software company that designs solar systems. From the first feasibility analysis through the finalization of the project documents, it facilitates the whole process of building a PV system. BlueSol is an easy-to-use programme that maintains every aspect of your PV system. It was developed using a normal Microsoft interface.

2.9 CPE software

To help customers do a cost-benefit analysis of PV systems before making purchases or contacting installers, CPRC created the CPE. Because of this, the simulator requires as few user actions as possible. The study generates parameters for cash flow, payback time, and other forms of cost analysis (Perez et al. 2003).

2.10 SolarPro software

To aid in the process of designing and assessing PV systems, the Kyoto, Japan-based Laplace System published its SolarPro software simulation tool in 1997. The system accommodates a variety of PV setups, including home and business installations, freestanding arrays, and tracking mechanisms (Thula et al. 2017). In addition, the effect of shadowing from trees, surrounding buildings, or PV arrays was taken into account throughout the design process. What’s more, the I–V curves for the PV modules are created automatically by the program. Shadow impact assessment, I–V slope assessment, cost assessment, and system strength assessment are the four primary features of SolarPro. The most precise design of the photovoltaic module may be achieved by analysing the shadowing effect (Turcotte, Ross, and Sheriff 2001). If you want to make sure your PV modules are working properly, this programme will examine their I–V curves quickly and correctly. This programme can precisely predict both the power output and the cost of the system by factoring in the position of the PV modules (in terms of latitude and longitude) and the local meteorological conditions (Ishaque et al. 2011). With the use of SolarPro Software’s modelling, we can easily identify the optimal placement and shading configurations for the arrays thanks to a thorough understanding of how solar radiation is distributed across them. The programme can calculate the reflector dispersion and provide visualizations. SolarPro now has the capability of using animations to show things like moving shadows, ongoing computations, hourly system performance, etc. (Lalwani et al. 2010).

2.11 INSEL software

In 1991, the German firm Doppelintegral GmbH created a piece of software called INSEL (Integrated Simulation Environment Language) to simulate the effects of switching to renewable energy sources. This programme is used in conjunction with MATLAB’s capabilities to develop and evaluate solar thermal and photovoltaic systems. Any group with an interest in renewable energy systems, whether students, scientists, engineers, or businesses, may benefit from using this programme. It is important to note that INSEL has its own meteorological data. In order to accurately predict solar output, the programme relied on German-specific solar irradiance data. When assessing the PV system’s technical and financial merits, INSEL uses a simple one-diode model. The application may be used to design renewable energy systems by determining which parts of the system need to be assembled. This programme includes weather data from over 2000 locations around the world. Also included is a library of PV and solar thermal systems currently in operation. Hourly measurements of sun radiation, temperature, dampness, and wind velocity are also recorded and kept by INSEL at these locations. Every one of these locations may have its monthly and annual averages retrieved by the programme in either way. Ever since its debut, this program’s database and capabilities have been the focus of ongoing development.

2.12 Polysun software

Polysun, a PV system optimization and analysis programme, was created and published in 2009 by Swiss firm Vela Solaris. The programme simulates many photovoltaic (PV) technology variants, including a-Si, c-Si, CdTe, c-Si, CiS, Ribbon, and HIT. The programme not only provides a technical examination but also an in-depth economic analysis (Witzig et al. 2010). For the first time ever, the application has been designed so that users may create their own systems. The software continues to grow its collection of renewable energy system models while keeping its high standard of quality. Several new features, including support for heat pumps (Lacoste 2009), thermography (Witzig et al. 2010), PV (Lacoste 2009), PVT (Witzig et al. 2010), and solar cooling (Rezaei and Witzig 2009), have recently been included in the programme.

An advantage of this programme is that it may reuse the same simulation kernel across several contexts. The numerical model’s dependability and steadiness are improved by this addition. One other perk of the programme is that it facilitates online collaboration between the homeowner and the program’s designers (in the form of both the architect and the designer). The ability to include cutting-edge technology like thermoelectric systems into the software is another recent addition (Witzig et al. 2010).

2.13 PVSol software

The German software company Valentin Energy Software released PVSol in 1998 for use in designing and assessing PV installations. Solar PV system design and economic assessment software. The planned PV module system’s location, needed load, and yearly consumption are all input by the user into the programme. Details of the planned inverter are included, as are the specifications of the solar modules that will be employed (including all modules, such as kind, position, and slant angle). The PVSol programme suggests a new, better system, down to the exact module and inverter placement. provides information such as the PV plant’s yearly output of electricity, its performance ratio, and the solar portion (Kumar et al. 2017).

2.14 RETScreen

In order to determine whether or not a renewable energy (RE) scheme is financially and ecologically viable, experts utilize RETScreen, a programme developed by Natural Resources Canada (Yimen and Dagbasi 2019). The software has several intriguing uses, including evaluating the effectiveness of solar systems in different regions of the world. This programme can calculate the financial and ecological implications of different RE techniques throughout a substantial area of the globe. Both standalone and interconnected systems, such as WTs and water pumping systems (WPSs), are within the scope of the program’s analysis capabilities. The software uses NASA’s meteorological information to make forecasts. Adding technical, economic, and environmental considerations to RETScreen has made it more appealing to engineers and academics studying renewable energy systems. A unique feature of this application is that it includes weather reports from more than 6000 different locations on the ground. The statistics range from wind maps to the monthly intensity of solar radiation to yearly temperatures. Data about the electricity output of solar cells and wind turbines is also included in the software. The ability to use a wide variety of live languages is a defining feature of the software (more than 30 dialects). Researchers claim that software failure to account for the impact of solar panel temperature on PV system performance led to the negative findings. The issue of data sharing after retrieval is also present (retscreen.net).

2.15 PV F-Chart software

When it comes to modelling and evaluating PV systems, nobody does it better than the folks at the University of Wisconsin with their innovative PV F-Chart. Various solar energy systems, including those that are connected to the grid, those that operate independently, and those that rely on batteries, may all be analysed with the help of the PV F-Chart. This software also analyses mono- and dual-axis monitoring systems. The programme also calculates the model’s monthly mean performance for each hour of the day (Fayaz et al. 2018) from a technical and economic standpoint. More than 300 sites across the world’s weather are included in this software, and more may be easily added. Multiple battery-powered PV system models are available in this programme. Unique aspects of the software include how quickly changes can be made, how much information can be downloaded at any one time of the month, and how much things cost to buy and sell. The software can do these computations for both stationary and mobile PV systems, on either one or two axes of movement, respectively. The programme may collect information on how the planned stations can be used to reduce emissions of greenhouse gases. The software is compatible with both centralized and decentralized networks (Chen et al. 2011).

2.16 IPSYS software

With the help of the C++ programming language, the developers of IPSYS have created a hybrid energy model simulator that may be used to improve the efficiency of energy systems in outlying regions (Kosek et al. 2014).IPSYS can work with a wide variety of energy sources, including PV, WT, shale gas, fuel cells, and storage mechanisms like hydro dams and battery packs.

2.17 HySys software

The Spanish research organization CIEMAT has developed a programme called HySys (an acronym for “Hybrid Power System Balance Analyser”). The programme is quite similar to IPSYS, except it was written specifically for use inside MATLAB. The programme in question can examine the useful life of hybrid systems and provide estimates of their size. Many modern technologies, such as photovoltaic (PV) arrays, WTs, and DGs, are designed to function autonomously, meaning they don’t need to be connected to the national grid.

2.18 Modelica/Dymola software

Germany’s “Fraunhofer Institute for Solar Energy” (ISE) created the OOP language-based Modelica/Dymola to simulate hybrid energy models. When compared to IPSYS and HySys, the Modelica/Dymola environment is quite comparable. Hybrid systems may be modelled using this programme (consisting of PVSs, WTs, DGs, FCs, and BTs). The weather and average daily sunlight hours are used as inputs in this model. The yearly energy cost and the total cost of ownership of the hybrid system may both be determined with the help of this programme (Aronson et al. 1981).

2.19 HySim software

HySim was developed by SNL in 1987 to look at the potential for using solar modules, batteries, and a standard DG in tandem. HySim wants the greatest possible result and places extra weight on the financial factors. HySim computes monetary metrics such as life cycle cost, fuel cost, energy level cost, O&M expenses, and configuration-specific cost comparisons. After 1996, when HybSim (Kendrick et al. 2003) was created, this programme stopped being used.

2.20 HybSim software

Hybrid Simulation Model is SNL’s newest renewable energy programme (HybSim). The new method was used to compare many HRES and identify the one that had the most technological and economic benefits. DGs with PVSs and BTs are only one example of the hybrid architectures that may be simulated using HybSim. The energy of hybrid systems, such as those in remote areas that rely on solar panels, diesel backup generators, and batteries for backup, needs meteorological data to be collected and analysed. In this case, the software was sufficiently reliable for the system to be used (Sinha and Chandel 2014).

2.21 RAPSIM

Australian researchers at Murdoch University have created a hybrid energy system similar to HybSim and Hysim (Ochacker and Tamer Khatib 2014). RAPSIM can first calculate the power flow by calculating the amount of power produced by each source.

2.22 SOMES

Similar to RAPSIM, the “Simulation and Optimization Model for Energy Systems (SOMES)” was developed at Utrecht University in the Netherlands to analyse the performance of HRES. RAPSIM relies heavily on solar irradiance and ambient temperature for its calculations. RAPSIM, on the other hand, offers the best layout for a variety of energy system setups that may include PV, WT, battery, and DG. Additionally, the programme supplies data for a feasibility evaluation of the proposed system (Ochacker and Tamer Khatib 2014). Because of its intended application in educational settings, RAPSim has a user-friendly graphical interface. In addition to providing customers with specialized algorithms to manage their PV stations, the application also provides users with readily expandable features that allow them to integrate the specified PV system models.

2.23 PVSYST software

The energy lab at Switzerland’s University of Geneva created the PVSYST programme to study solar arrays by using weather records. The software’s accessibility and straightforward graphical user interface make it useful for both professional design engineers and academic settings (Mermoud 1995). Evolving the photovoltaic system’s perspective, shading effect, mismatch, etc., is just one example of how PVSYS’s adaptability can be put to use in the design process (Kumar et al. 2017). Also cites PVSYS as the most cutting-edge software available for modelling and analysing PV systems across all of their many uses (SA or GC-WPS). The application has capabilities to help maximize the potential of the intended PV station by considering factors like shadowing. Existing versions of this programme have a large database that lets users do in-depth economic analyses (Kumar 2017).

2.24 TRNSYS software

The energy modelling programme UW-Hybrid, a new simulation model in TRNSYS, is used to study hybrid energy systems that combine renewable and conventional sources of power, including solar, wind, diesel, and batteries. It is quite similar to the Hybrid2 software, but in a new setting. When calculating solar irradiance, UW-Hybrid relied on a straightforward isotropic sky model (Kazem et al. 2013a). TRNSYS may be used to model the behaviour of transient systems and is a graphically-based programme with a lot of customization options. TRNSYS is often used for heating and cooling purposes in solar systems. There has been a lot of recent work evaluating hybrid photovoltaic and thermal energy systems using TRNSYS, so it is important to realise this.

2.25 PVSIM software

Specifically dubbed PVSIM (King et al. 2004), SNL’s model and software for simulating large-scale solar systems were established in 1996. The new software incorporates the assessment of PV modules inside a PV array. PVSIM checks for overshoot as well as undershoot, overheating, unit heating (from 25 °C to 50 °C), cell mismatch, and unit block diodes. Solar cells were simulated in the computer programme as a pair of similar diode circuits (Van Dyk et al. 2005).

The PV system’s current-voltage characteristics may be determined with adequate precision using PVSim-GUI, despite the fact that it only uses basic methodologies. Series resistance (Bissels et al. 2014), shunt resistance (Saleem and Karmalkar 2009), idealization factors (Bashahu and Nkundabakura 2007), and fill factor (Silvestre and Castan 2002) are only some of the important characteristics of the PV device model that may be calculated by the programme. Using this programme, you can test out how your BV system would function in a number of hypothetical scenarios and evaluate how well your plant would perform under each scenario. This programme is helpful for training purposes and may be used for analysis and simulation of PV systems (Shekoofa et al. 2015).

2.26 PVWatts software

Using the SNL PVForm model as inspiration, the NREL built PVWatts to mimic a grid-connected PV system. The performance evaluation of the proposed model incorporates models of solar radiation and power temperature coefficients. Scientists, students, and engineers worked together to make the PVWatts web app as user-friendly as possible. Many of the processes and models used to predict the PV system’s performance are built into PVWatts, but they are not exposed to the user. This programme hides the site’s interface by rendering it as a drawing, and it also lets the user sketch out the solar array installation zones (Kumar et al. 2017). Users enter their position, solar radiation statistics for said region, PV system details and scale, PV technology, installation choices, slope angle (in 0–90°), and azimuth angle (in 0–360°). The software models the PV system’s size and runs the numbers to calculate the annual energy production, monthly energy yield, and monthly and yearly electricity pricing.

2.27 PVToolbox

The “PVToolbox” hybrid system model was developed using Matlab Simulink and is tailored to the climate of Canada. This model was developed by the Energy Technology Center at Natural Resources Canada.

2.28 PVForm software

SNL’s PVForm (Menicucci 1985) is yet another solar energy simulation and program. Errors in the irradiance prediction are accounted for using the new approach. To make the model accessible on desktop and server systems, it has been included in a stripped-down application. The PV system was modelled in the software so that technical and financial considerations could be made. The programme also supports both off-grid and grid-tied PV installations (Menicucci and Fernandez 1989). PVForm was designed to run on PCs using the command-line operating system MS-DOS (Ropp et al. 1997) (as distinct from the graphical operating system Windows).

2.29 PV DesignPro software

The PV DesignPro programme was developed via a joint effort between SNL and the MSESC. Models, algorithms, and databases created with and for SNL are all part of the programme. For the purpose of designing and evaluating PV arrays using various technologies, several researchers have utilised the programme (Perez et al. 2004). PV-DesignPro does a year-long simulation of a solar station’s operation and provides hourly statistics for this operation (Automation et al. 2008). The planned system type and climatic data are both important considerations when compiling this information. This software comes in three different variations: stand-alone PV systems with battery banks may be modelled with PV-DesignPro; interconnected PV systems without storage (battery packs) can be modelled with “PV-DesignPro-G;” and WPSs can be simulated with “PV-DesignPro-P” (Tiba and Barbosa 2002).

PV-DesignPro may be used to analyse and plan PV installations. In addition to accounting for cost changes associated with the planned system installation, the software also provides realistic estimates of the system’s potential output and the energy produced by the plant over the course of a year of operation (Deshmukh et al. 2006; Lalwani et al. 2010).

2.30 CPF software

Clean Power Finance (CPF) is a piece of software that was created in 2007 by Energy Matters LLC specifically for the purpose of designing photovoltaic (PV) systems. Both technical and financial considerations are handled by the programme.

2.31 Solar Estimate software

Solar Estimate, another tool created by Energy Matters LLC, is used for estimating solar resource use in industrial and household settings. The Solar Estimate is a web-based programme that helps you figure out the design parameters and costs by letting you put in information about your location and your utility company.

2.32 OnGrid software

Northern California saw the 2005 debut of OnGrid, a programme designed for use throughout the United States in calculating the performance of photovoltaic (PV) installations. Furthermore, OnGrid relied on PVWatts models when figuring out how much energy a PV system would produce. As grid-connected PV systems become more commonplace in the United States, however, financial incentives have been included in the estimate.

2.33 PVOptimize software

KGA Associates created PVOptimize, a PV system design and assessment programme based on the PVWatts program. There is just one version of the programme available, and it only works in California.

2.34 PVSS software

Solar System Simulation Program (PVSS) is a FORTRAN simple code developed by SNL that may be used to simulate either SA or GC PV systems for the purposes of sizing, designing, and evaluating their overall performance. This programme employs a simple diode model and is one of the first efforts at a tool for PV design, dating back to 1978 (Goldstein and Case 1978). The software’s use of elementary model equations allowed it to simulate 16 different PV setups. However, neither a cost-benefit nor an impact study analysis has been provided. This programme uses a model with a single diode to determine voltage and current. When it comes to the technical implementation of PV systems from the perspective of electrical behaviour, PVSS became the first group to attempt to formulate a code. PVSS is now a suite of control programmes running on both Linux and Microsoft Windows workstations. The operating system and any necessary security updates are taken care of by these applications (Young and Yung 2001).

2.35 HOMER software

NREL created and published free software in 2005 for the public to use called HOMER. It is a time-step simulator for evaluating renewable energy systems, using as inputs the hourly demand and environmental data; it helps find the best configuration of renewable energy sources, given a set of limitations and sensitivity factors.

Two of HOMER’s most impressive qualities are its capacity to find the appropriate solution based on cost evaluations and its potential to do an impact competency study in order to comprehend tradeoffs among various technology upgrades and economic concerns (Alwaeli et al. 2019). The programme may take into account a wide variety of system architectures as well as a wide range of battery options. KiBaM is the code that HOMER uses to show how much juice it has left in the battery. The model may combine the following subsystems: photovoltaic cells, hydropower, wind power, batteries, conventional power generation, an ac-to-dc converter, an electrolyzer, a hydrogen storage tank, and a reformer. In its probes, HOMER employs a tried-and-true module style. Climate and insolation data for HOMER may come from either the TMY2 database or from user-supplied data.

2.36 SOLSTOR software

For the purpose of enhancing the systems integration and cost assessment of HRES, SNL developed a second software programme in the mid-1970s. SOLSTOR focuses on PV, WT, power conditioning, and energy storage. Additionally, SOLSTOR assesses both off-grid and grid-connected renewable energy installations. SOLSTOR may generate system performance characteristics in addition to finding the best possible design and minimizing LCC. This program’s strengths lie in its simplicity and its ability to analyse available backup power sources. The programme can calculate the average off-grid power cost and the recurrent energy cost of the system. Additionally, time of day (ToD), load profile, and electricity prices could be adjusted.

2.37 SOLCEL software

In 1977, the SOLCEL programme was created to optimize the scale, design, and layout of PV systems (Linn 1977).

The programmes were created using the FORTRAN programming language. Both stand-alone and grid-connected PV systems may benefit from using the software. The simulation made use of hourly data. Both technical and financial considerations are made. We took into account how temperature affects PV performance. The programme takes into account a year’s worth of weather predictions and chooses the best layout for the budget. The programme has three distinct releases. Additionally, SOLCEL software is very effective at assessing how shade and sun exposure will affect PV installations (Yoo 2011). In order to determine where on a solar panel shadows will fall, the programme employs a technique described in (Quaschning and Hanitsch 1998). In order to get reliable data, it is necessary to conduct a survey of the region surrounding the solar stations using facilities like a fish-eye webcam. Using SOLCEL software to design enormous PV energy plants to satisfy the requirements of a town, for example, is not feasible due to the strategy’s single control point applicability (Wang et al. 2014).

2.38 Hybrid2 software

The investigators from the University of Massachusetts Amherst developed the Hybrid2 programme to enhance HRES. Using probabilistic methods, Hybrid2 allows for the creation and improvement of hybrid systems that include RESs like WT and solar PV, fossil fuel power sources like DGs, and storage solutions like battery packs. The versatile Hybrid2 software platform allows for in-depth, long-term profitability analysis of a variety of different hybrid power stations.

The optimizer may model various electrical components, including photovoltaic (PV) panels, wind turbines, diesel generators, batteries, and loads. We compare cSi, CdTe, CiS, and aSi PV modules. The solar irradiance of the Hybrid2 is a mystery. The latest version of Hybrid has been enhanced with a number of new features and fixes to user complaints from earlier versions. For instance (Manwell et al. 2005), there’s the problem with making the solar radiation information slope more visually appealing, the inaccuracy in the light load model, etc. HYBRID 2 can run simulations of the future for as long as 1 h. It can model up to three different systems, including ones with renewable energy sources like wind and solar power, conventional power sources like a diesel generator, and storage options like batteries (Green and Manwell 1995). With this updated edition, the user may quickly and simply setup projects in the programme and validate their work for any input problems. GRI (Sinha and Chandel 2014) additionally allows users to add graphical annotations to the output data.

2.39 REPS.OM software

REPS.OM is a software tool that helps with the technical and financial evaluation of potential PV system designs. Even if you are not an expert in the subject, you should have no trouble using the program. Basically, the programme just needs some basic information from the user, including the kind of PV module, battery, and system, as well as the location. The efficacy of a hybrid model may be optimized by a software program, despite the size of the solar PV array, the slope angle, the battery storage capacity, the air velocity, or the power of the DG. It is important to note that the Liu and Jordan model was only used to calculate energy coefficients and was not used to simulate PV. A model developed by researchers Liu and Jordan was used to determine the optimal inclination. Every year, the programme computes technical behaviour and cost analysis. A MATLAB GUI was used to create the original REPS.OM code (Kazem et al. 2022).

2.40 iHOGA software

The University of Zaragoza’s Electric Engineering Department developed a C++ programme for optimization and simulation called HOGA (Spain). It might be put to good use within hybrid energy systems (HESs) that produce power (DC and AC), hydrogen, and/or pump water (either alone or in combination).

Renewable, nonrenewable, and HESs may all be created and assessed with the optimizer’s help. The optimizer may plan a wide variety of systems, such as those based on photovoltaics (PV), diesel generators (DG), wind turbines (WT), and batteries (SB like HOMER and REPS.OM). This optimizer’s output is a comprehensive feasibility assessment that takes into account technological, economic, and environmental factors. iHOGA might be employed to figure out the best design of a HES that incorporates RE-producing methods such as SPV, WT, HTs, FCs, H2 tanks, electrolyzers, and BTs. Through the deployment of a net metering system (NMS), this plan makes it easier to purchase and sell power to the grid (Sinha and Chandel 2014).

2.41 HelioScope

Folsom Lab USA has unveiled HelioScope, a new tool for designing solar systems that combines certain aspects of PVSyst with AutoCAD design capability to help designers create a whole design in a single application. HelioScope mainly needs the location’s address, array arrangement, PV module, and inverter specifications. By using this programme, one may calculate the amount of energy that would be produced while taking weather and climate-related losses into consideration. Analysis of shading, wiring, component efficiency, panel mismatches, and ageing is also possible to provide recommendations for equipment and array architecture. When displaying the results of simulations, this tool also provided yearly production, weather data sets, performance ratios, and other system metrics. As a web-based tool, HelioScope may be used from any connected computer and requires no downloading of software.

2.42 Solarius PV

A professional solar PV calculator called Solarius PV was created by the Italian business ACCA Software to make it simple to construct photovoltaic systems and find the optimum practical and financial outcome. Using input such as weather information, modules, inverters, batteries, etc., this model generates technical and economical analyses for system setup. The overall performance of the solar system may be determined by Solarius PV, together with its profitability and amortisation period (total yearly output with a timetable for hourly production). This programme enables testing the impacts of shade projected onto the PV modules by close-by obstructions like antennas and chimneys and visually viewing shadow interferences.

2.43 SOLARGIS pvPlanner

In 2010, SolarGIS released pvPlanner, a programme used to simulate PV systems. SOLARGIS pvPlanner is an online modelling application that uses high-performance algorithms and high-temporal and spatial-resolution climatic and geographic data to design and optimize solar systems, accompanied by maps. With this programme, you can quickly and easily simulate the effects of different PV technologies and mounting choices on energy output, making it a useful tool for site prospection. The SolarGIS interface allows the user to do a search for a certain site, pick a PV system configuration (including system capacity, module type, inverter specs, mounting system, azimuth, inclination angle, etc.), and then perform the corresponding simulations. These models use as input information from the likes of 19 geostationary satellites stationed in 5 main locations, as well as atmospheric and meteorological models run by the ECMWF and NOAA meteorological data centres. Long-term monthly and annual readings of global horizontal irradiation (GHI), global in-plane or tilted irradiation (GTI), diffuse horizontal irradiation (DIF), reflected irradiation (RI), and temperature (TEMP) are the primary outputs of the simulation procedure.

2.44 iGRHYSO

The GRHYSO is a C++ software that optimizes hybrid renewable energy systems connected to the grid; the iGRHYSO (improved Grid-connected Renewable Hybrid Systems Optimization) is an upgraded version of the GRHYSO. We regret that this programme is only available in Spanish. Modelling and optimising storage battery systems for renewable energy (solar, wind, small hydro, etc.) and alternative energy (battery chemistry, hydrogen, etc.) is the focus of iGRHYSO. You can get this application from the NASA website, and it is great for plugging in your own irradiation, wind, and temperature readings. The application may also be used to study how temperature affects the production of renewable energy sources like solar cells and wind turbines. This programme can handle a wide range of electricity sales and purchases from the grid. The internal rate of return (IRR) may be calculated as a measure of success. It is possible to export simulation data to an Excel file and examine it there.

2.45 SOLSIM

SOLSIM (Ibrahim et al. 2011) was created by researchers at Germany’s Fachhochschule Konstanz to simulate the performance of hybrid renewable power plants that combine solar panels, wind turbines, diesel engines, batteries, and bioenergy systems to produce electricity and heat. With its few configuration settings, this programme may do basic economic analysis (e.g. photovoltaic panel tilt angles). Using SOLSIM, you may input a significant quantity of granular data to fine-tune your simulation. Each simulation generates a vast quantity of data, but the program’s graphical user interface makes it simple to understand and use by displaying the data in increments of an hour, a day, a week, or a month (Schaffrin et al. 1998). That programme is now unavailable.

2.46 Hybrid Designer

Hybrid Designer (Schaffrin et al. 1998) was made possible by the South African Department of Minerals and Energy and was created by the Energy and Development Research Centre (EDRC) at the University of Cape Town. In Africa’s climate, this technique is most useful for applications that don’t need constant access to the power grid. This genetic algorithm–based software is intuitive and can compare alternatives for achieving the lowest possible total cost of ownership during their lifetime. A full solution, including technical considerations and life cycle costs, may be generated by simulating many sources in Hybrid Designer, including photovoltaics, wind generators, batteries, and engine generators.

Application-wise, software may be broken down into the categories shown in Figure 2. Each category’s software may be further segmented into photovoltaic (PV) and hybrid systems.

Figure 2: 
PV system design classifications.
Figure 2:

PV system design classifications.

3 Evolution of PV modelling software/tools

The software’s primary categories and subcategories are explained, and then some examples of similar software are provided. Some programmes may fit into many categories; HOMER, for example, may be thought of as both a computation and a cost plan. It should be noted that the provided software samples are more closely tied to the actual application. One such programme that does such an examination using a limited optimization method is called “RETScreen.” However, certain PV-specific tools, such as “PV F-Chart,” are only capable of standalone design and cannot handle hybrid systems. Whereas other programmes, such as “Solar Design Tool” and “PV DesignPro-G,” focus only on hybrid PV systems. Other programs, such as “HOMER,” “PVSYST,” “REPS.OM,” “Solar Pro,” and “TRNSYS,” consider the financial and technical evaluations of alternative energy technologies. In addition, there is variation in the precision of the intended systems, and over- or undersizing might occur depending on the information that is provided and used (i.e. minutes, hourly, daily, monthly, etc.). Some programmes, for instance “INSEL,” take into account the impact of shadowing (caused by dust, debris, etc.) and sun-tracking (seasonal influence) in the design (Kaldellis and Fragos 2011; Khan et al. 2021; Kazem 2020). PVSOL is one piece of software that can view PV arrays, both those that are incorporated into a roof and those that are installed in parallel. It has been noted that certain models, notably HOMER, can estimate the effects of shading or darting. On top of that, the accuracy of software optimization tools like HOMER is limited by the information and limitations provided by the user. The input data is directly connected to the optimal PV design in the HOMER programme. The user, for instance, may first submit a variety of PV models, battery sizes, etc., and the programme would then choose the best design from among them.

Table 1 compares the given approaches and programme tools based on their ability to enhance a range of PV system configurations, including standalone PV, hybrid PV/WT, hybrid PV/DG, and grid-connected PV. The software’s capacity to simulate the PV system’s behaviour so that its performance may be predicted at a later date is also compared. It has been discovered that applications like HOMER and REPS.OM can mimic several hybrid energy systems (PV, wind, diesel, solar thermal, etc.). However, other models, like the NREL SAM, can only mimic individual PV systems and have a limited capacity to simulate energy systems overall (PV and diesel only). The load profile (Kazem and Khatib 2013a; Khatib et al. 2013), the ideal tilt angle (Alsadi and Khatib 2018; Kazem et al. 2013b), and the input of meteorological data (Al-Waeli et al. 2018; Imam and Al-turki 2020) are the characteristics that have the greatest effect on the precision of the sizing optimization. Table 2 provides a comparison of publicly available software packages.

Table 1:

Evaluation of available commercial PV modelling programmes.

Commercial tools Configuration Types Simulation capability
SA GC PV/WT PV/DG
REopt
Aurora solar
BlueSol
PVWatts
DIAFEM
EASYPV
SISIFO
OpenSolar
Solcast
HySim
HybSim
TRNSYS
E&FM
SOLCEL
PVSS
PVForm
PVSIM
SPAPM
SIPM
SAM
RETScreen
PV F-Chart
Solar design tool
TRNSYS
INSEL
SAM
PVSyst
Solar pro
PV-SOL expert
PV Design Pro-G
HOMER
REPS.OM
iHOGA
Hybrid2
SolarGIS pvPlanner
Hybrid Designer
Solarius PV
HelioScope
iGRHYSO
SOLSIM
Table 2:

Evaluation and comparison of open-source applications.

Softwares Advantages Disadvantages
HOMER
  1. It is convenient and simple to use

  2. Clearly laying forth the information

  3. Capacity for managing large amounts of data per hour, visualised graphically

  1. Using “black box” software

  2. Models based on first-order linear equations

  3. The daily average form of time series data cannot be imported

RETScreen
  1. Strong NASA meteorological and product databases

  2. In terms of core competencies, financial analysis ranks highest

  3. User-friendly; it’s based on the familiar excel format

  1. No choices for importing time-series data

  2. A reduction in the number of possible input methods

  3. Inadequate access to data-mining and visualization tools

HYBRID2
  1. Convenient and simple to use

  2. A variety of possible electrical loads

  3. A more precise dispatching choice

  1. Not compatible with versions of Windows introduced after XP

  2. Certain mistakes in simulation were found, despite the fact that the project was developed without a hitch

iHOGA
  1. Use a genetic algorithm and a risk assessment to find the best solution for one or more goals

  2. Needed little calculation time

  3. Net metering energy purchases and sales

  1. The free academic edition includes several analytical restrictions

  2. License activation requires an internet connection

As demonstrated in the preceding section, a wide range of programmes and models are used for PV system optimization and sizing. These programmes and models can be classified in a variety of ways, including traditional and cutting-edge. Where traditional approaches rely on analytical, iterative, numerical, and probabilistic techniques, contemporary ones are more likely to employ a combination of natural and artificial means. However, modern approaches are gradually replacing traditional ones. In this research, single and hybrid algorithms are used to categorize the plethora of software and models available for PV system design and sizing. An energy system’s optimum size is calculated using a novel method that takes into account both the maximal and minimal values of a given function. The hybrid optimization method is more adaptable, precise, and dependable since it employs two or more functions to locate the optimal solution with low convergence and rapid computation time.

4 PV system design

4.1 A unified methodology for the design of PV systems

Two independent approaches, classical and artificial, exist for optimising the same algorithm. The literature provides a wide range of indicators for PV system evaluation.

Table 3 shows that the most important metrics are reliability (RL), economics (EC), and environment (EN). Tables 2 and 3 provide comparisons between traditional and artificial systems in terms of dependability, cost, and impact on the environment. Each indicator has its own unique set of key performance indicators (KPIs), some of which measure reliability (LPSP, LOPL, TED, DPSP, EENS, LOLR, ELF, D, P(R), REP), some measure cost effectiveness (NPC, TIC, COE, LCC), and still others measure the impact on the environment (TCO2E, EE, LCA). Measures the technological, economic, and environmental (TEE) sustainability of a system using a predefined metric. Some of these programmes and models can even construct unique setups, such as completely off-grid, completely hybrid, completely tracking, and completely grid-connected systems.

Table 3:

Several instances of classical optimization.

Assessment Key performance indicator Description Reference
Reliability LOLP Compares yearly energy shortfalls to annual load needs Kazem et al. (2013)a; Khatib et al. (2013)
LPSP Probability of demand shortfall relative to energy output Maleki et al. (2016a); Rajkumar et al. (2011)
DPSP Each hour’s worth of power outage Kamjoo et al. (2016)
TED The percentage of needed energy that was not provided to the user when demanded Kaabeche and Ibtiouen (2014)
LOLR Average hours per week when system demand is anticipated to be higher than generating capacity Khatod et al. (2010); Sanajaoba and Fernandez (2016)
NDE Amount of dump energy generated by renewable sources Ogunjuyigbe et al. (2016)
EENS During a certain time frame, the quantity of load energy was not provided Sanajaoba and Fernandez (2016); Mukhtaruddin et al. (2015)
ELF Amount of time spent in forced outages as a percentage of all time spent Baghaee et al. (2016)
REP Annualized percentage of renewable energy load met in relation to total annual energy demand Bhuiyan et al. (2015)
RSP The proportion of a given time period when generation is insufficient to meet demand Paliwal et al. (2014)
Economic LCC Expenses incurred in maintaining the system during its useful lifespan leaves out production and cleanup expenses Abbes et al. (2013); Askarzadeh and Coelho (2015); Kazem (2020)
NPC The sum of money spent on setting up, running, and eventually replacing the system during its useful lifespan Kaabeche and Ibtiouen (2014); Rodolfo et al. (2016)
COE The cost-to-energy ratio measures how much money and power a load uses during its lifespan Kazem and Khatib (2013a); Mokheimer et al. (2013); Paliwal et al. (2014)
TIC Take into account the initial investment, the cost of setup, the cost to operate and maintain the system each year, and the cost to replace it Hassan et al. (2015)
Environment LCA Emissions from raw material extraction, intermediate and final product processing, and shipping are all included in the whole life cycle evaluation of hybrid system components Shi and Yan (2017)
EE Nonrenewable primary energy is used in the production of hybrid system components that is not used during normal operation Abbes et al. (2013)
TCO2E Emissions of carbon dioxide during a certain time period, expressed in kilograms Zhao et al. (2015); Shi et al. (2015)

A few key points may be drawn from Tables 3 and 4, including:

  1. The software is adaptable to a wide range of power generation situations, such as SPV, WT, DG, FC, H2 tanks (HG), BM, and BG. Solar PV systems may be designed and evaluated on their own or in conjunction with other energy sources as a part of a hybrid system.

  2. Most programmes and models include an algorithm that can mimic PV, WT, and DG.

  3. It has been revealed that battery storage (BS) and hydrogen tanks are the two most common methods of energy conversion (HT). However, compared to HT, BS has a lot of support from models and software.

  4. To a large extent, electrical converters are used to effect the energy transformation (CO). Power electronics circuits like these converters are used to transform electrical quantities into other forms. Nonetheless, converters are classified into four types: direct current (DC) to alternating current (AC) to direct current (DC), direct current (AC) to direct current (DC), and direct current (AC) to direct current (DC).

  5. Most algorithms use a synthetic, objective-independent approach. Recent literature has seen just a trickle of investigations using the traditional method.

  6. The efforts of the algorithms are directed at reducing waste, expenses, and emissions. Algorithms are tested on a wide variety of KPIs, including LCOE, TCO, E, TCC, EE, GHG, TAOC, TAC, NPC, and TDP. The system was fine-tuned after careful consideration of technological feasibility, economics, ecology, and other factors. When it comes to finances, the total cost (TC) and the total annual cost (TAC) are the most crucial key performance indicators (KPIs).

  7. The best PV system design is determined by software, models, and algorithms that take into account optimal technical design parameters while minimizing costs and emissions.

  8. Some examples of available methods include: linear programming (LP), non-dominated sorting genetic algorithms (NDS-GA), genetic algorithms (GA), mixed-integer linear programming (MI-LP), adaptive genetic algorithms (AGA), mine blast algorithms (MBA), controlled elitist genetic algorithms (CE-GA), particle swarm optimization (PSO), mu-swarm optimization (MSO), and multi-objective particle swarm optimization (MOPSO), etc. In the past, “graphical user interface” (GUI) has been employed in certain approaches, such as (Gan et al. 2015)’s technique for finding the best possible layout for a wind and solar power installation. It is important to note that annual averages for wind speed and sun irradiation have been utilised.

Table 4:

Outlining a unified methodology optimization layout.

Techniques Energy sources Energy conversion Energy storage Method Minimized KPI Analysis Reference
PV WT DG FC HG BM BG CO EL BS HT
LP Classical TC EC & RL Eduardo et al. (2014)
MILP Classical LOCE EC Castro et al. (2015)
GA Artificial LCC, E, D EC, RL & EN Ogunjuyigbe et al. (2016)
AGA Artificial IC EC & RL Chen (2013)
NSGA-II Artificial TC, DPSP EC & RL Sheng et al. (2014)
Controlled elastic GA Artificial LCC, EE, LPSP EC & RL Fathy (2016)
MBA Artificial TAC EC & RL Sanchez et al. (2014)
PSO Artificial TC EC & RL Hassan et al. (2015); Naseem et al. (2021)
MPSO Artificial LCC, LOCE EC Baghaee et al. (2016)
MOPSO Artificial TIC EC & RL Shi and Yan (2017)
MLUCA Artificial TAC, GHG EC & EN Suhane et al. (2016)
ACO Artificial TC, TAC EC & RN Shi et al. (2015)
PICEA Artificial ACS, LPSP, GHG EC, RL & EN Gupta et al. (2015)
IFOA Artificial ATC, E EC & EN Maleki and Askarzadeh (2014a)
BBO Artificial COE EC Singh et al. (2016)
ABSO Artificial TAC EC & RL Gharavi et al. (2015)
ABC Artificial TC EC & RL Gharavi et al. (2015)
ICA Artificial NPC EC, RL & EN Sanajaoba and Fernandez (2016)
CS Artificial TC EC & RL Maleki and Askarzadeh (2014b)
DHS Artificial TAC EC & EN Chang and Lin (2015)

4.2 Hybrid-methodology-based PV system design

The preceding part focused on a single technique that outperformed artificial methods in terms of providing optimal design with quick computing. As the use of design-related software, models, and studies has increased with the worldwide proliferation of PV systems, however, more sophisticated optimization and precise design have become imperative. To bridge this gap, hybrid algorithms were developed, each of which combines elements of many separate algorithms (both artificial and classical). Literature evaluations show that complex PV system difficulties are more common in the outer suburbs, including islands and rural areas, and hybrid methodologies gave the most accurate design for these situations. The various hybrid algorithms are compared in Table 5.

From Table 5, we may draw a few conclusions, including the following:

  1. The software can be used with many different types of energy sources, but PV, WT, and DG are the most common

  2. As opposed to HT, most programmes and models provide energy conversion through BS.

  3. Electrical converters are primarily used to effectuate the energy transformation (CO).

  4. Most existing algorithms are optimized for planning off-grid PV systems and have limited functionality when it comes to creating grid-connected systems.

  5. The algorithms are designed with efficiency in mind, with a goal of reducing wasteful activity and associated costs and environmental impact. Algorithms examine a wide range of KPIs, including total cost, levelized cost of ownership, levelized capital cost, energy intensity, distribution, distribution cost, energy efficiency, energy production, total installed cost, total installed cost per kW hour, greenhouse gas emissions, annualized cost per kW hour, and net present cost per kW hour. The TC and TAC, however, are the most crucial KPIs.

  6. The programmes, models, and algorithms used to find the most efficient and cost-effective layout for a PV system.

Table 5:

Outlining a hybrid methodology optimization layout.

Techniques Energy sources Energy conversion Energy storage Method Minimized KPI Configuration Analysis Reference
PV WT DG FC HG BM BG CO EL BS HT SA GC
HBB-BC Artificial TPC EC, RL Ahmadi and Abdi (2016)
TLBO Artificial TAC, LPSP, FC EC, RL Cho et al. (2016)
Hybrid GA Artificial TC EC, RL Tito et al. (2016)
IPF Artificial TC EC, RL, SL Mukhtaruddin et al. (2015)
MESCA Artificial TAC EC, RL Zahboune et al. (2016)
MOEA Artificial NPC EC, RL Dufo-lopez et al. (2016)
Hybrid GA, ANN-MCS Artificial NPC EC, RL, SL Lujano-rojas et al. (2013)
SA-TS Artificial TAC EC, RL Katsigiannis et al. (2012)
Markov based GA Artificial TC EC, RL Hong et al. (2012)
DCH-SSA Artificial TAC EC, RL, EN Askarzadeh (2013)
HSMCS Artificial LCC EC, RL Maleki et al. (2016b)
Hybrid Iterative-GA Artificial TC EC, RL Khatib et al. (2012)
SA-PSO Artificial LCC EC, RL Zhou and Sun (2014)
NS-PSO Artificial LPSP, LCC, LEP, KI EC, RL Ma et al. (2016)
PSO based MCS Artificial TAC EC, RL Maleki et al. (2016b)
FPA-SA Artificial LPSP EC, RL Tahani et al. (2015)
HOMER Artificial COE, NPV EC, RL, EN Zahboune et al. (2016); Baneshi and Hadianfard (2016)
REPS.OM Artificial COE, NPV EC, RL, EN Kazem and Khatib (2013b); Kazem et al. (2014)
iHOGA Artificial COE, NPC EC, RL, EN Dufo-lópez et al. (2011); Fadaeenejad et al. (2014)

5 Discussion

In the previous paragraph, we compared numerous algorithms found in the scholarly literature. Because of its flexibility and simplicity, PSO is superior to other approaches for finding the optimal PV design. Table 5 shows that when compared to other methods for finding, converting, and storing energy, PSO and its variations perform very well. It is also worth noting that new PSO versions like SAPSO, NSPSO, etc. are being created and distributed on a regular basis. While (Askarzadeh and Coelho 2015; Fathy 2016; Singh et al. 2016) claim that HOMER, ABC, and PSO have a quicker computing time, MBA actually has a faster computational time than these methods, and SA has a less precise design than PSO, GA, and MBA. The iterative nature of TS’s methodology is also shown. In contrast, the REPS.OM iteration employs a more sophisticated and effective kind of flow discrete sampling in order to do computations more quickly. After examining how REPS.OM and HOMER optimise PV systems, it became clear that HOMER makes use of statistical information in a homogeneous way. To randomly select a dataset and find the best possible model, the REPS.OM method employs a three-pronged strategy (the developed layout area, the system availability degree, and the system price assessment) (Kazem and Khatib 2013b). Although GA and its modifications enhanced convergence, the authors (Connolly et al. 2010; Minai et al. 2021; Ogunjuyigbe et al. 2016; Tahani et al. 2015) note that doing so required a large number of iterations, which in turn increased processing time.

When comparing optimal PV design, hybrid algorithms perform better than any of their component methods. As was discussed in 4.2, hybrid algorithms tend to provide more reliable outcomes. In addition, FPA/SA, NSPSO, and TLBO are stated to have shorter computing times in (Ahmadi and Abdi 2016; Maleki et al. 2016a; Mukhtaruddin et al. 2015; Tito et al. 2016).

The technical and economical aspects of a PV system are prioritised in the programming and processes used for its design. But a few of the algorithms used in this project made it less bad for the environment.

As a result of algorithmic differences and other factors, the computation time, performance, and accuracy of the numerous available PV system optimization programmes might vary widely. The user’s needs, the data that’s readily accessible, etc. all play a role in determining the best programme to use. The appropriate software to use will be determined based on the input data for the PV system and the user’s requirements, as shown in Tables 3 and 4.

Unknown and unreported software statuses include INSEL, RAPSIM, HySim, and SOLSTOR.

There are a lot of articles on how to set up a PV system on its own. The precision of the optimal design, however, depends on a wide range of inputs. The load profile, optimal tilt angle, and climate data input have the greatest influence on precision. For instance, it is observed that utilising minutes’ worth of data is preferable to using hourly data and monthly average data for calculating solar irradiance, both of which have a greater impact on the design.

The majority of algorithms have been found to be concerned with technological and economic factors. However, environmental and societal factors should be taken into account for a more effective and practical design.

The literature shows that AI-powered software is more precise than traditional programmes, as asserted by (Kumar et al. 2020; Maleki and Askarzadeh 2014b; Rashid Khalifeh Soltani et al. 2021; Serrano-Luján et al. 2022). AI-powered software is essential to tackle issues with the architecture’s intricacy, computational time, and HES.

Some programmes, like HOMER, are more popular than others in terms of both use and downloads. One possible explanation is the wide range of user-friendly and sensitive analysis functions available for designing energy systems.

6 Conclusions

The current strategic review provided a thorough analysis of the available programmes, models, and algorithms for designing PV systems and hybrid systems. The photovoltaic array may be used to power off-grid, grid-connected, or hybrid installations. Parallel to the wind turbine, diesel generator, and/or storage components included in a conventional hybrid system, PV is also used. Maintaining a steady and consistent supply at the lowest possible cost and carbon footprint requires identifying the optimal system’s performance parameters and key performance indicators. When trying to find the optimal design and prevent either excessive or inadequate sizing, the input factors, such as the kind of meteorological data employed, play a crucial role. The findings demonstrated that the improved, observable precision was a direct outcome of using accurate meteorological data.

Algorithms for designing photovoltaic systems may be broken down into two categories: single and hybrid. According to the publications we looked at, several previous investigations used the same method. Recently, however, hybrid algorithms have taken the lead and are being used more often in the design of PV systems for remote locations and islands. On top of that, both classes of algorithms are beginning to make more use of AI than classical approaches. It was discovered that the primary goal of PV system design was to find the most optimal technological configuration that would have the least economic and environmental effect while having the most possible positive social impact.

Reviewing 46 different simulation softwares, it was found that HOMER, RETScreen, RAP.SOM, iHOGA, Hybrid2, SAM, and PVsyst were the most popular and useful tools because they could do many different types of analyses.

The authors suggest connecting the current programme to additional software packages like MATLAB to improve the quality and practicality of future research. To put it another way, the goal is to provide a simulation tool for MATLAB, preferably Simulink, since MATLAB is widely used in academic and scientific settings. Further, it is suggested that PV system design software include social effect assessment with environmental review. The authors suggest that optimization techniques and programmes be constantly improved via upgrades to make them more user-friendly.


Corresponding author: Akhlaque Ahmad Khan, Department of Electrical Engineering, Integral University, Lucknow 226026, India, E-mail:

Acknowledgement

The authors would like to acknowledge Integral University, Lucknow, for providing the MCN “IU/R&D/2023-MCN0001788.” The statements made herein are solely the responsibility of the authors.

  1. Author contributions: All the authors have accepted responsibility for the entire content of this submitted manuscript and approved submission.

  2. Research funding: None declared.

  3. Conflict of interest statement: The authors declare no conflicts of interest regarding this article.

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Received: 2022-11-26
Accepted: 2023-02-25
Published Online: 2023-03-20

© 2024 the author(s), published by De Gruyter, Berlin/Boston

This work is licensed under the Creative Commons Attribution 4.0 International License.

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