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Title Hybrid Technique-based Optimal Energy Management in Smart Home Appliances
Authors (C. P. Shirley) ; (Depaa RA B) ; (A. Priya) ; (R. Sarala) ; (Rajdeep Singh Solanki) ; (Malini K. V) ; (Ch. Venkatakrishna Reddy)
DOI https://doi.org/10.5573/IEIESPC.2024.13.5.425
Page pp.425-434
ISSN 2287-5255
Keywords Air conditioning; Demand response (DR); Solar; Home energy management system (HEMS); Battery energy storage system; Electric vehicle
Abstract This manuscript presents a hybrid method for optimal energy management in smart home appliances. The proposed approach combines the Ebola Optimization Search Algorithm (EOSA) with the performance of spiking neural networks (SNN). The key objective of the proposed strategy is cost reduction through day-ahead load scheduling while also considering the best demand response (DR), and self-consumption of photovoltaic (PV). The EOSA method manages air conditioning (AC) and ensures thermal comfort. In addition, the SNN method was used to predict the optimal system control signal. Comparative analysis with existing systems, such as PSO, RFA, and BCO, showed that the proposed strategy resulted in 13% cost savings. The proposed system considered parameters, such as solar radiation, occupant presence, and electricity prices. The proposed technique is implemented in the MATLAB software, and the performance is compared with existing approaches. The efficiency of the proposed approach is higher than the existing techniques.