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The utilization of deep reinforcement learning in the development of an Internet of Things based home energy management system marks a groundbreaking approach to enhance residential energy consumption optimization. This system harnesses the capabilities of deep reinforcement learning algorithms to intelligently oversee and distribute energy resources within a household setting. With a primary focus on user satisfaction as a pivotal metric, the system learns to make real-time decisions aligned with homeowners' preferences and requirements, ensuring a seamless and efficient energy usage experience. This pioneering technology holds the potential to substantially diminish energy wastage and elevate overall user contentment within the domain of residential energy management. The growing demand for effective and sustainable home energy management solutions has instigated the exploration of cutting-edge technologies to optimize energy consumption while concurrently ensuring occupant satisfaction. In this vein, this work introduces an inventive Home Energy Management System (HEMS) that leverages DRL, promising unparalleled levels of energy efficiency and user comfort.
Radhamani et al. (Fri,) studied this question.