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Development of renewable energy-based power system for the irrigation support: case studies

  • Kumaril Buts ORCID logo EMAIL logo , Lillie Dewan and M. P. R. Prasad
Published/Copyright: June 19, 2023
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Abstract

The development of renewable energy-based applications is nowadays a forced demand of society, for chasing the target set by the governments and the concerned organizations, to reduce or limit the carbon penetration in the environment. Sincere efforts are being made by academics and researchers to create applications based on renewable energy that are reliable and efficient. Green revolutions increase agricultural fields and alter grain production rates, but they also increase energy consumption since agricultural machinery is used more efficiently, mostly for irrigation needs. The purpose of this work is to introduce a hybrid renewable energy system (HRES) that can take the place of the diesel pump often used for time-bound crop irrigation. This HRES system consists of a photovoltaic generator as the main power source supported by a battery energy storage system. For this hybrid system, the development of a Proportional & Integral (PI)-based integrated hybrid controller is proposed to regulate the charge/discharge cycle of the battery energy with maintaining the load demand simultaneously. Controlling of this hybrid system is carried out in the LabVIEW environment.

1 Introduction

Continuous energy is desired to develop and propagate any modern human development sector, and green energy supply is a forced demand of this present era.

The recent data available, the agriculture field needs 4 to 8 percent of the total energy demand (IRENA and FAO 2021). In the context of the Indian agriculture sector, total electricity consumption during 2019–20 was 17.67 % with a 6.92 %-year wise growth (the base year 2018–19). Apart from the electricity consumption (228172 GWh), it also includes 628 metric tonnes (738,823.53 L) of diesel used during the year 2019–20 mainly for irrigation support.

The agricultural sector is distinct because it requires 4 to 8 percent of the total energy demand and is vulnerable to energy demand (IRENA and FAO 2021).

Apart from rainwater, farmers are dependent on other irrigation methods. One method for displacing the water from a deep-dug well is a diesel pump. Diesel pumps are expensive and harmful to the environment and ecological system.

For irriga/tion, a hybrid system based on renewable energy can give a consistent power supply at the necessary load level.

The wind system, photovoltaic (PV), fuel cell, natural gas-based plant, and battery energy storage system (BESS) are a few examples of renewable energy genres that are well-established and benefit from advanced technology.

The use of photovoltaic (PV) technology is advantageous where sunshine is abundant but with little or no grid assistance. To lessen the demand for coal-related electricity, PV generators are now installed even in grid-tied distribution zones.

A PV system’s ability to produce electricity depends heavily on the availability of sunny days. A PV system must be combined with alternative backup power sources, such as Fuel Cell (FC) systems, Supercapacitor (SC) banks, or Battery Energy Storage Systems (BESS), for reliable operation on overcast days or at night.

For low-cost irrigation support, integrating the PV generator with a battery storage system is practical and reliable.

2 Literature review

Numerous studies and pieces of literature have been published on the integration of renewable energy sources, control strategies, and their applications in the domains of irrigation and/or farm equipment.

Even though renewable-based appliances are a cost-effective project, users do not always support the substitution of carbon-based energy demand with renewable energy. The requirement-based methodology is an effective strategy.

The use of a supercapacitor as an energy storage device for microgrid renewable energy systems is evaluated by Qusay et al. (2022). In this case study, the author discovered that charging the supercapacitor only with renewable energy sources can significantly improve the self-consumption of energy. Additionally, by adding a small amount of rapid-response energy storage, the system’s average annual self-consumption for the investigated load increases in comparison to the system without energy storage.

Community-based Food-Water-Energy (FEW) nexus approaches are presented by Whitney et al. (2019) to optimize food, energy, and water security at the regional and global scale. This approach is implemented in the local fish industry.

Oumaima et al. (2022) studied the technical and financial aspects of photovoltaic installations for self-consumption as well as the installation of solar streetlamps to improve the performance of nocturnal lighting in Kenitra, Morocco, to lower the energy bill of the two institutions: the National School of Applied Sciences (ENSA) and National School of Commerce and Management (ENCG). The author made the argument that this technology will eventually enable real-time, remote control of load usage for improved comfort without sacrificing energy bill reduction.

Zhang et al. (2018) has implemented a photovoltaic-based application for the treatment of wastewater containing Nickel by electrocoagulation process using solar irradiation intensity (SII).

A PV system for irrigation applications in non-grid-supported remote rural areas for small-scale applications in Iran has been discussed by Ghasemi-Mobtaker et al. (2020).

Maka et al. (2022) analyzed the solar water pump design for remote, desert, and rural places where the electric grid connection is problematic. The author examined the design of the solar water pump system and predicted performance under actual environmental circumstances in this research. A system that enables an examination of the operational behavior of a photovoltaic solar water pumping system has been designed and simulated using the PV system.

Control operations carried out in the LabVIEW environment are currently receiving more attention than those carried out on other software platforms. Some of the built-in characteristics of the LabVIEW environment include simple operation and real-time data accessibility.

Bendib, Belmili, and Boulouma (2018) presented the photovoltaic generator characteristics in the LabVIEW environment and suggested some inherent technical advantages for controlling the hybrid system in the LabVIEW environment.

A Plethora of research work has been reported regarding renewable-based power applications, home appliances, farm machinery, and especially irrigation support in remote rural areas.

However, no one research article has yet been reported concerning the irrigation system design according to the specific crop needs.

Thus, this research paper presented for the very first time a renewable-energy-based irrigation system designed according to the crop requirement. This proposed system is capable to work day-night and in all-weather to fulfill the time-bound irrigation support.

The proposed PV and battery storage-based hybrid system is simulated in MATLAB at first and then implemented on the hardware available in Advance Power System Lab (APS), NIT Kurukshetra India in the LabVIEW environment, tested with varying solar radiation.

The paper is organized into six sections: after a brief introduction in section one, section two covers the related field’s literature review. Section three describes the field study and the problem statement. Section four covers the system description with a short idea about the PV system, the battery energy storage system, the DC microgrid, and their controlling techniques, respectively. Section five deals with the controller design and the hardware development followed by a conclusion in section six and references (Figure 1).

Figure 1: 
Solar radiation data for the simulation and hardware work.
Figure 1:

Solar radiation data for the simulation and hardware work.

3 Problem statements

The water requirement of the crop is calculated using simple water balance models (Aryal 2012; Bouman 2009), which include different inflows and outflows of water in the crop, as shown in Figure 2.

(1) E R + I = E T + E + P + S + S D + C W S

where, ER: effective rainfall, I: irrigation supply, ET: evapotranspiration loss, E: evaporation loss, P: Deep percolation loss, S: seepage loss, SD: surface drainage or run-off loss, and CWS: changed in water status.

Figure 2: 
Water balances (inflows and outflows) of a typical crop.
Figure 2:

Water balances (inflows and outflows) of a typical crop.

From Equation (1), it is clear that if effective rainfall is not available, water balance solely depends on irrigation.

Case Study I. Irrigation support for the rapeseed-mustard crop.

Site location: Bharatpur, India (27.0150 N latitude and 77.0300 E longitude, 178.37 m above mean sea level).

Of all agricultural products produced globally, vegetable oil accounts for one of the biggest production shares (40 percent). India mostly cultivates oil seeds on marginal lands that are dependent on monsoon rainfall (unirrigated) and use low input levels. Rapeseed mustard is a significant crop among oilseed crops, and India ranks third globally in this regard. It is mostly grown in rainfed ecosystems with the help of stored monsoonal rainwater and a few wintry showers, and it is confined to Rajasthan (one state in the nation), which is in the country’s northwest, for 50 % of its total area.

Rapeseed mustard can support a large number of farmers’ livelihoods with effective crop management in these regions. To effectively utilize the limited moisture available during the crop season, particularly at crucial times of crop growth and high evaporative demand (2–6 mm per day), sound management strategies for rapeseed mustard are required (Rathore et al. 2019).

In general, irrigation is used during crop time in mustard-growing regions. By adding irrigation water and rainfall, the total amount of water applied (input water) was calculated. The entire water balance was calculated considering the input of irrigation water from rainfall and water productivity.

At the pre-flowering and pod-filling stages, the mustard leaf’s relative water content (RWC) was evaluated. Based on the leaf’s fresh, dry, and turgid weight, the RWC is approximated in percent. The equations for Relative water content (RWC) and soil moisture dynamics were used to calculate various growth, water productivity, and energy factors.

Table 1 lists the weather conditions that prevailed during the crop’s growing season.

Table 1:

Monthly average weather conditions during the crop-yielding period (The year 2020–21).

Months Average temperature (Deg. C) Average rainfall (mm) Evaporation (mm/day)
October 32.1–34.6 30.8 3.6
November 27.9–30.2 6.0 2.0
December 22.4–20.6 13.3 1.2
January 17.0–16.9 55.7 0.4
February 21.6–25.9 10.4 2.1
March 29.4–28.7 13.8 2.3

Case Study II. Drip-mulch irrigation for tomato crop.

Site location: East Sikkim District, Sikkim, India (27.330 N latitude and 88.60 E longitude, l650 meters above mean sea level).

Because of its high nutritional value, extensive production, and widespread use as a vegetable, tomatoes are regarded as one of the most productive and protective foods. It is produced in a broad variety of climatic conditions throughout India, which is the world’s second-largest producer after China (Reddy et al. 2018). It is a warm-season crop, and drip.

Irrigation and moisture conservation with different mulches are thought to improve water use efficiency and help farmers accomplish their main goal of “more crop per drop.” Due to its accurate and direct distribution of water to the root zone and significant irrigation water savings, drip irrigation is widely used, particularly for fruit and vegetable crops. The amount of irrigation needed was calculated by subtracting the projected value of ETc from the effective and predicted (80 %) rainfall. At an average pressure of 0.3 kg/cm2, it was discovered that the average discharge per dripper was 1.24 lph.

The treatment, which used drip irrigation along with mulch instead of the control, saved 62 percent of irrigation water. As water is sprayed immediately near the crop’s root zone in the needed quantity, water loss due to percolation, runoff, seepage, and soil evaporation may be reduced, increasing WUE and saving irrigation water under drip irrigation with mulch.

As a result of the current study, it can be said that using mulch and drip irrigation together significantly boosted both yield and WUE.

The study of case-I and case-II, reveals that the water requirement from the initial to the late season (as given in Tables 1 and 2), an irrigation pump of the capacity shown in Table 3, will be sufficient for the time-bound irrigation support of the crops.

Table 2:

Estimated water requirement for different growth stages of tomato.

Crop stage Duration (Day) K C ETo ETa Dripper discharge (L/h) Time of operation over 2 days (in minutes)
Initial 20 0.46 2.46 1.13 3.5 9.30
Development 30 0.83 2.05 1.70 3.5 13.98
Mild season 40 1.08 3.14 3.39 3.5 27.90
Late season 25 0.86 3.87 3.32 3.5 27.31
  1. K C , crop coefficient; ETo, evapotranspiration; ETa, actual crop evapotranspiration.

Table 3:

Performance of a typical 0.5 hp single-phase irrigation water pump.

Specifications Descriptions
Power rating 0.5 HP (0.37 kW)
Full load current 2 A
Rated voltage 210 V
Water head 4 m
Discharge 15.5 L per sec (LPS)

The advantages of this system include its reliability, efficiency, and affordability for time-bound irrigation support of the crops.

In the next section, a brief description of this hybrid system’s components and working is given.

4 System descriptions

This proposed hybrid system contains a photovoltaic generator and a stack of battery systems. The line diagram of this proposed hybrid system is shown in Figure 3.

Figure 3: 
Line diagram of the hybrid renewable energy system (hybrid RES).
Figure 3:

Line diagram of the hybrid renewable energy system (hybrid RES).

As shown in Figure 3, the PV generator is connected to a boost converter, and the battery system is attached to a bidirectional buck-boost converter. Both the converter is joined at the DC-link capacitor.

4.1 The PV system

The photovoltaic effect is the illumination of two different materials’ common connections by photon irradiation that results in electrical potential. With single and two-diode models, the electrical characteristics of a PV system can be represented. Popular and accurate, the single diode model represents how PV cells behave.

The mathematical modeling of the PV system output voltage can be described as follows using the single diode model: (Buts, Dewan, and Prasad 2020).

(2) V P V = N S n k T q ln [ I S C I P V + N P N P I 0 ] N S N P R S I P V

where, N S : the number of series cells per string, n: ideality factor, k: Boltzmann’s constant [J/deg K], T: PV cell temperature [deg K], q: electronic charge [C], I SC: short-circuit cell current [A], I PV: PV cell output current [A], N P : the number of parallel strings, I 0 : PV cell reverse saturation current [A], and R S : series resistance of the PV cell [Ω].

4.2 Battery energy storage system (BESS)

A stack of cells connected in series or parallel to supply the required voltage or current level is referred to as a battery energy storage system (BESS).

The two distinct formulae for the charging and discharging modes are used individually to calculate the battery voltage, V Batt. Equations (3)(5) were used to model the battery’s characteristics mathematically (Fan et al. 2018).

(3) V B a t t ( c h a r g e ) = V O K Q max 0.1 Q max q i * K Q max Q max q i t + A exp ( B q )

(4) V B a t t ( d i s c h a r g e ) = V O K Q max Q max 1 i * K Q max Q max i t + A exp ( B q )

where, V O : the battery’s constant output voltage [V], K: the polarization constant [(Ah)−1], Q max: the battery’s maximum capacity [Ah], i *: reference current [A], i: measured (actual) current [A], q: battery’s available capacity [Ah], A: exponential voltage [V], and B: exponential capacity [(Ah)−1].

The state of the charge of the battery (SOCBatt) is calculated as:

(5) S O C B a t t = 100 ( 1 i ( t ) d t Q )

where, i: instantaneous current [A], and Q: charge stored [C].

4.3 DC-link

Through their respective converters, the solar PV system and battery system serve as a DC source and are coupled to the DC-link capacitor.

Figure 4 illustrates how the PI controller maintains the DC-Link voltage.

Figure 4: 
PI-based integrated hybrid controller.
Figure 4:

PI-based integrated hybrid controller.

4.4 Power converters

In the suggested system, the bidirectional buck/boost converter is linked to the battery stack for charging and discharging phenomena, respectively, and the boost converter is connected to the PV generator.

Between the DC link and the single-phase transformer lies a single-phase inverter. The most effective and trustworthy method of managing the power converter is pulse width modulation (PWM) (Hole and Goswami 2022; Shayegh et al. 2021).

This method is employed to regulate the inverter’s frequency as well as the converters.

4.5 Controller design for PV-BESS power management

A PI-based hybrid controller is proposed for the power management of this hybrid system. This hybrid control approach regulates the load current by maintaining the load voltage at the desired level and ensuring the battery charging/discharging cycle is proper. The working of this hybrid controller is shown in Figure 4.

As shown in Figure 4, the outer loop of the controller which is associated with the battery storage system, maintains the battery voltage, while the inner loop regulates the battery current. The load voltage of the system is maintained by maintaining the DC-Link voltage.

The working principle of this hybrid controller is, that when the PV system generates more power than the load demand then this surplus power is stored in the battery storage system; and when there is less power or no power available from the PV source then the battery energy system injects sufficient power to the system for maintaining the load demand.

Accordingly, two cases are arising, first when the PV current is more than the load current, and second when the load current is more than the PV current; i.e.,

Case 1. When I PV ≥ I Load

In this situation, the battery stack goes to charging mode.

Case 2. When IPV < I Load

In this situation, the battery stack injects power into the system.

5 Implementation

The proposed hybrid system is first simulated on MATLAB-Simulink R2021b and then implemented on the hardware available in the Advance Power System Lab, NIT Kurukshetra, India, in the LabVIEW environment.

5.1 MATLAB implementation and results

The line diagram of the system illustrated in Figure 3 and the mathematical modeling described in equations (2)(5) are the foundations for the MATLAB model as shown in Figure 5(a). MATLAB simulation results are shown in Figure 5(b). As with the hardware configuration, precise ratings of the MATLAB components are taken, as seen in Table 4.

Figure 5: 
MATLAB simulation block-set and results of the proposed HRES. (a) MATLAB simulation block-set, (b) MATLAB simulation results.
Figure 5: 
MATLAB simulation block-set and results of the proposed HRES. (a) MATLAB simulation block-set, (b) MATLAB simulation results.
Figure 5:

MATLAB simulation block-set and results of the proposed HRES. (a) MATLAB simulation block-set, (b) MATLAB simulation results.

Table 4:

Essential parts & specifications of the hardware setup.

Sr. no Components Specifications
Controller parameters

1. Control card technology FPGA
2. Pull-up card for inverter gate firing 8 PWM signals

Single-phase inverter

1. DC input voltage 150 V
2. Output voltage, & current 112 V, 4 A
3. Switching frequency 10 kHz

LC filter for the inverter

1. Inductor 3 mH, 10 A
2. Capacitor 10 µF

PV specifications and ratings

1. Short-circuit current, & open-circuit voltage 20 A, 50 V
2. Maximum output power 1 kW

Boost converter for PV system

1. Input voltage, & current 50 V, 20 A
2. Output voltage, & current 150 V, 10 A
3. Switching frequency 20 kHz

Battery storage system

1. Battery type Lithium-ion
2. Output voltage, & capacity 72 V, 30 Ah

Bidirectional buck-boost converter for battery

1. Voltage, & current 105 V, 10 A
2. Switching frequency 20 kHz

5.2 Hardware implementation and results

The suggested hybrid system maintains the load demand with fluctuating solar irradiation by simultaneously maintaining the load voltage and the battery charging/discharging cycle, as can be seen from the MATLAB-Simulation results, as shown in Figure 5(b). Hardware implementation is carried out in the lab using the MATLAB model, as illustrated in Figure 6(a).

Figure 6: 
Hardware implementation and results of HRES. (a) Hardware setup of the hybrid system, (b) hardware results.
Figure 6: 
Hardware implementation and results of HRES. (a) Hardware setup of the hybrid system, (b) hardware results.
Figure 6:

Hardware implementation and results of HRES. (a) Hardware setup of the hybrid system, (b) hardware results.

The hybrid system’s hardware configuration consists of a battery stack, a solar PV emulator, power converters, and controllers with an FPGA architecture.

IGBT-based power switches are employed for the converters’ hardware implementation to provide quick and dependable operation.

With the aid of the Field Programmable Gate Array (FPGA) based PWM controlling technology, the hardware components are controlled in the LabVIEW environment.

With the aid of VHDL (Very High-Speed Integrated Chip Hardware Description Language) physical architecture, an FPGA-based micro-controller chip is employed in this hybrid system to generate and control the gate pulses.

The PI-based hybrid controller is implemented in VHDL code for the PWM control. The modified gate pulse controls the output of the converters.

Using a personal computer, the user can control the gate pulse (PC). Through a LAN/Ethernet cable, the PC connects with the FPGA-based microcontroller.

The hardware results of the hybrid system are shown in Figure 6(b).

The MATLAB and Hardware results of the hybrid system are obtained with the varying solar irradiance data, available in the APS Lab, as shown in Figure 1.

6 Discussions

The system is tested with the real local solar irradiance data, as shown in Figure 1, and the actual load demands.

The battery is run in charging/discharging mode for power storage or to lessen load demands. Output voltage and current with frequency are captured on a real-time high-definition oscilloscope (Keysight) during the battery charging and discharging time, respectively. According to the hybrid system’s simulation results, which are displayed in Figure 5(b); the suggested system can provide all of the required power during the whole irrigation season without any interruptions. As illustrated in Figure 6(b); the hardware result replicates the proposed system’s simulation result.

The following significant information is provided through comparative analyses of the hardware results and the MATLAB simulation:

  1. During a load shift, the battery charges and discharges quickly and effectively.

  2. The system meets the desired load needs and is stable.

  3. Frequency is still within the permitted range with a tolerance of 5 %.

  4. It may be argued that the intended system can generate enough power to drive the irrigation pump because the behavior of the system’s MATLAB model closely resembles that of the hardware setup in use.

  5. This hybrid system is capable of offering sufficient irrigation support day or night and in any kind of weather.

Additionally, it can be inferred from the simulation and hardware findings that the PI-based hybrid controller enables proper power management by maintaining the load voltage and the battery charging and discharging cycle.

7 Conclusions

The hybrid PV-BESS power system was created and modeled for irrigation, but it may be used for any crop in addition to paddy fields. This hybrid system is working in standalone mode with controlling activity in the LabVIEW environment.

Under a range of solar radiation and load demand situations, the dynamic behavior of the hybrid system is examined. The data used to determine solar radiation and power demand are taken from historical records. The LabVIEW-based control strategy for the developed system is efficient and exhibits excellent performance over an extended period.

By altering the component ratings, this system may be made to handle the increased load requirement. This hybrid system can be used to farm equipment and used to light up peasants’ homes during the off-irrigation time.


Corresponding author: Kumaril Buts, Department of Electrical Engineering, National Institute of Technology, Kurukshetra, 136119, India, E-mail:

Acknowledgment

To the coordinator, Advance Power System Lab, NIT, Kurukshetra, for providing the hardware-implementation opportunity.

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

  2. Research funding: This research work is completed at EED, NIT, Kurukshetra, India, without any financial support.

  3. Conflict of interest statement: No conflict financial interests exist.

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Received: 2022-10-04
Accepted: 2023-06-03
Published Online: 2023-06-19

© 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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  25. A novel mechatronic absorber of vibration energy in the chimney
  26. An IoT-based intelligent smart energy monitoring system for solar PV power generation
  27. Large-scale green hydrogen production using alkaline water electrolysis based on seasonal solar radiation
  28. Evaluation of performances in DI Diesel engine with different split injection timings
  29. Optimized power flow management based on Harris Hawks optimization for an islanded DC microgrid
  30. Experimental investigation of heat transfer characteristics for a shell and tube heat exchanger
  31. Fuzzy induced controller for optimal power quality improvement with PVA connected UPQC
  32. Impact of using a predictive neural network of multi-term zenith angle function on energy management of solar-harvesting sensor nodes
  33. An analytical study of wireless power transmission system with metamaterials
  34. Hydrogen energy horizon: balancing opportunities and challenges
  35. Development of renewable energy-based power system for the irrigation support: case studies
  36. Maximum power point tracking techniques using improved incremental conductance and particle swarm optimizer for solar power generation systems
  37. Experimental and numerical study on energy harvesting performance thermoelectric generator applied to a screw compressor
  38. Study on the effectiveness of a solar cell with a holographic concentrator
  39. Non-transient optimum design of nonlinear electromagnetic vibration-based energy harvester using homotopy perturbation method
  40. Industrial gas turbine performance prediction and improvement – a case study
  41. An electric-field high energy harvester from medium or high voltage power line with parallel line
  42. FPGA based telecommand system for balloon-borne scientific payloads
  43. Improved design of advanced controller for a step up converter used in photovoltaic system
  44. Techno-economic assessment of battery storage with photovoltaics for maximum self-consumption
  45. Analysis of 1-year energy data of a 5 kW and a 122 kW rooftop photovoltaic installation in Dhaka
  46. Shading impact on the electricity generated by a photovoltaic installation using “Solar Shadow-Mask”
  47. Investigations on the performance of bottle blade overshot water wheel in very low head resources for pico hydropower
  48. Solar photovoltaic-integrated energy storage system with a power electronic interface for operating a brushless DC drive-coupled agricultural load
  49. Numerical investigation of smart material-based structures for vibration energy-harvesting applications
  50. A system-level study of indoor light energy harvesting integrating commercially available power management circuitry
  51. Enhancing the wireless power transfer system performance and output voltage of electric scooters
  52. Harvesting energy from a soldier's gait using the piezoelectric effect
  53. Study of technical means for heat generation, its application, flow control, and conversion of other types of energy into thermal energy
  54. Theoretical analysis of piezoceramic ultrasonic energy harvester applicable in biomedical implanted devices
  55. Corrigendum
  56. Corrigendum to: A numerical investigation of optimum angles for solar energy receivers in the eastern part of Algeria
  57. Special Issue: Recent Trends in Renewable Energy Conversion and Storage Materials for Hybrid Transportation Systems
  58. Typical fault prediction method for wind turbines based on an improved stacked autoencoder network
  59. Power data integrity verification method based on chameleon authentication tree algorithm and missing tendency value
  60. Fault diagnosis of automobile drive based on a novel deep neural network
  61. Research on the development and intelligent application of power environmental protection platform based on big data
  62. Diffusion induced thermal effect and stress in layered Li(Ni0.6Mn0.2Co0.2)O2 cathode materials for button lithium-ion battery electrode plates
  63. Improving power plant technology to increase energy efficiency of autonomous consumers using geothermal sources
  64. Energy-saving analysis of desalination equipment based on a machine-learning sequence modeling
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