Abstract
With the advancement of smart grid technology, the consumers get the opportunity to participate in various demand response (DR) programs. They can reduce their electricity bill by participating in DR programs. Along with the consumers, the power utility companies also get benefits due to the reduction in high energy peaks on the demand curve. In this paper, we propose an energy scheduling model for the scheduling of smart appliances at home. For the scheduling of appliances, two different dynamic pricing schemes are selected, i) time of use scheme, ii) real time pricing scheme. Along with this, a small renewable energy source in form of rooftop photovoltaic panels is also included to analyse its effect on energy scheduling solution. Finally, the scheduling problem is solved by mixed integer linear programming (MILP) technique. The CPLEX solver of GAMS software is used to apply MILP technique. A case study by considering different cases is done to analyse the effectiveness of formulated model and selected solution approach for the scheduling of the appliances. The simulation results by considering both the pricing schemes have been achieved and compared to get the better idea of the pricing schemes on the energy scheduling results.
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Artikel in diesem Heft
- Microgrid Architecture Evaluation for Small and Medium Size Industries
- Application of V2G and G2V Coordination of Aggregated Electric Vehicle Resource in Load Levelling
- Design of Filter based Wide Area Damping Controllers in Power System
- A Study of Efficient MPPT Techniques for Photovoltaic System Using Boost Converter
- Estimation of Battery Soc for Hybrid Electric Vehicle using Coulomb Counting Method
- Combined Frequency Equivalent Model for Power Transmission Network Dynamic Behavior Analysis
- Generator Coherency Using Zolotarev Polynomial Based Filter Bank and Principal Component Analysis
- Techniques for the Identification of Critical Nodes Leading to Voltage Collapse in a Power System
- Computational Studies of Voltage Regulation Provided by Wind Farms Through Reactive Power Control
- Energy Scheduling of Smart Appliances at Home under the Effect of Dynamic Pricing Schemes and Small Renewable Energy Source
- High Rate Pulse Discharge of Lithium Battery in Electromagnetic Launch System
- A Balanced Operation of Static VAR Compensator for Voltage Stability Improvement and Harmonic Minimization