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Title Smart Energy Management And Demand Response In Internet Of Energy-Enabled Constructions
ID_Doc 50830
Authors Sutariya K.; Thulasiram R.; Batra R.; Kumar A.; Kumar D.; Kaushik N.
Year 2025
Published Journal of Electrical Engineering and Technology
DOI http://dx.doi.org/10.1007/s42835-025-02309-z
Abstract The exponential rise in the demand for electrical energy brought by the world’s population growth will result in a shortage of electricity in the future. The internet-of-things (IoT) will lead to the integration of more sophisticated gadgets into homes. Demand response (DR) initiatives enable smart cities to participate actively in the power market. Which help them manage energy more effectively and fulfil the rising demand for energy. As part of our approach, we have combined the concepts of Bacterial Foraging Optimization (BFO) and Wind-Driven Optimization (WDO) to create a hybrid algorithm known as Multitask Driven Particle Honey Bee Swarm Optimization (MT-PHBSO). As a result, a strategy that makes use of MT-PHBSO has been created to manage how much power is used by smart devices in dwellings that have IOT abilities. The objectives of this scheduling strategy are to save power expenditures, improve User Comfort (UC) and lessen the Peak-to-Average Ratio (PAR). By automatically interacting with DR signals, the MT-PHBSO-based solution tackles the primary problem of consumer information constraint in reacting to charge-based DR programs. The effectiveness and efficiency of the recommended method based on MT-PHBSO have been tested through extensive simulations. The assessment criteria were PAR, UC, cost of power and energy usage. The results of the simulation show that the suggested (MT-PHBSO) based method outperforms the benchmark techniques. © The Author(s) under exclusive licence to The Korean Institute of Electrical Engineers 2025.
Author Keywords Demand Response (DR); Distribution System Operators (DSOs); Energy Management (EM); Peak to Average Ration (PAR); Smart Grid (SG)


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