TY - JOUR
T1 - Home Energy Management Strategy‐Based Meta‐Heuristic Optimization for Electrical Energy Cost Minimization Considering TOU Tariffs
AU - Liemthong, Rittichai
AU - Srithapon, Chitchai
AU - Ghosh, Prasanta K.
AU - Chatthaworn, Rongrit
N1 - Funding Information:
Funding: This work was supported by the Research and Graduate Studies, Khon Kaen University and the Faculty of Engineering, Khon Kaen University under grant number Mas. Ee‐6/2563
Funding Information:
Acknowledgments: The authors would like to acknowledge the Research and Graduate Studies, Khon Kaen University and the Faculty of Engineering for supporting the funding for the publication of this research.
Publisher Copyright:
© 2022 by the authors. Licensee MDPI, Basel, Switzerland.
PY - 2022/1/1
Y1 - 2022/1/1
N2 - It is well documented that both solar photovoltaic (PV) systems and electric vehicles (EVs) positively impact the global environment. However, the integration of high PV resources into distribution networks creates new challenges because of the uncertainty of PV power generation. Ad-ditionally, high power consumption during many EV charging operations at a certain time of the day can be stressful for the distribution network. Stresses on the distribution network influence higher electricity tariffs, which negatively impact consumers. Therefore, a home energy management system is one of the solutions to control electricity consumption to reduce electrical energy costs. In this paper, a meta‐heuristic‐based optimization of a home energy management strategy is presented with the goal of electrical energy cost minimization for the consumer under the time‐of-use (TOU) tariffs. The proposed strategy manages the operations of the plug‐in electric vehicle (PEV) and the energy storage system (ESS) charging and discharging in a home. The meta‐heuristic optimization, namely a genetic algorithm (GA), was applied to the home energy management strategy for minimizing the daily electrical energy cost for the consumer through optimal scheduling of ESS and PEV operations. To confirm the effectiveness of the proposed methodology, the load profile of a household in Udonthani, Thailand, and the TOU tariffs of the provincial electricity authority (PEA) of Thailand were applied in the simulation. The simulation results show that the proposed strategy with GA optimization provides the minimum daily or net electrical energy cost for the consumer. The daily electrical energy cost for the consumer is equal to 0.3847 USD when the methodology without GA optimization is used, whereas the electrical energy cost is equal to 0.3577 USD when the proposed methodology with GA optimization is used. Therefore, the proposed optimal home energy management strategy with GA optimization can decrease the daily electrical energy cost for the consumer up to 7.0185% compared to the electrical energy cost obtained from the methodology without GA optimization.
AB - It is well documented that both solar photovoltaic (PV) systems and electric vehicles (EVs) positively impact the global environment. However, the integration of high PV resources into distribution networks creates new challenges because of the uncertainty of PV power generation. Ad-ditionally, high power consumption during many EV charging operations at a certain time of the day can be stressful for the distribution network. Stresses on the distribution network influence higher electricity tariffs, which negatively impact consumers. Therefore, a home energy management system is one of the solutions to control electricity consumption to reduce electrical energy costs. In this paper, a meta‐heuristic‐based optimization of a home energy management strategy is presented with the goal of electrical energy cost minimization for the consumer under the time‐of-use (TOU) tariffs. The proposed strategy manages the operations of the plug‐in electric vehicle (PEV) and the energy storage system (ESS) charging and discharging in a home. The meta‐heuristic optimization, namely a genetic algorithm (GA), was applied to the home energy management strategy for minimizing the daily electrical energy cost for the consumer through optimal scheduling of ESS and PEV operations. To confirm the effectiveness of the proposed methodology, the load profile of a household in Udonthani, Thailand, and the TOU tariffs of the provincial electricity authority (PEA) of Thailand were applied in the simulation. The simulation results show that the proposed strategy with GA optimization provides the minimum daily or net electrical energy cost for the consumer. The daily electrical energy cost for the consumer is equal to 0.3847 USD when the methodology without GA optimization is used, whereas the electrical energy cost is equal to 0.3577 USD when the proposed methodology with GA optimization is used. Therefore, the proposed optimal home energy management strategy with GA optimization can decrease the daily electrical energy cost for the consumer up to 7.0185% compared to the electrical energy cost obtained from the methodology without GA optimization.
KW - Energy storage system
KW - Genetic algorithm (GA)
KW - Minimum electrical energy cost for the consumer
KW - Optimal home energy management strategy
KW - Plug‐in electric vehicle
KW - Solar photovoltaic
KW - Time‐of‐use (TOU) tariffs
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U2 - 10.3390/en15020537
DO - 10.3390/en15020537
M3 - Article
AN - SCOPUS:85122890032
SN - 1996-1073
VL - 15
JO - Energies
JF - Energies
IS - 2
M1 - 537
ER -