A Smart Energy Management System for Residential Buildings Using IoT and Machine Learning

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Abstract

The Smart Energy Management System (SEMS) for Residential Buildings using IOT-based back propagation with ANN is a novel approach to optimize energy consumption in buildings by leveraging data from internet of things (IOT) devices. This system collects data on energy consumption, weather conditions, occupancy patterns, and sensor data from IOT devices such as motion sensors, temperature sensors, and smart appliances. The collected data is then preprocessed and used to train an artificial neural network (ANN) using back propagation algorithm. The trained model can then predict future energy demands, leading to cost savings and reduced environmental impact by optimizing energy consumption in a residential building. The proposed algorithm can be used as a foundation for building an effective SEMS using IOT-based back propagation with ANN.

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APA

Joy Kiruba, P., Ahila, R., Biruntha, M., & Kalpana, R. (2023). A Smart Energy Management System for Residential Buildings Using IoT and Machine Learning. In E3S Web of Conferences (Vol. 387). EDP Sciences. https://doi.org/10.1051/e3sconf/202338704009

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