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首页> 外文期刊>Cognitive Systems Research >Demand response management system with discrete time window using supervised learning algorithm
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Demand response management system with discrete time window using supervised learning algorithm

机译:采用监督学习算法的离散时间窗口需求响应管理系统

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摘要

Demand Response (DR) is a key attribute to enhance the operation of smart grid. Demand response improves the performance of the electric power systems and also deals with peak demand issues. Demand Response (DR) implementation for residential consumers is potentially accredited by Home Energy Management System (HEMS). This paper presents an algorithm for home energy management system to shift the schedulable loads in a residential home, that neglects consumer discomfort and minimizes electricity bill of energy consumption using Hourly-Time-Of-Use (HTOU) pricing scheme. Supervised learning algorithm is used in this paper to learn the usage patterns of consumers to allow schedulable appliances at a residential home to autonomously overcome consumer discomfort. Simulation results confirms that the proposed algorithm effectively decreases consumer electricity bill, decreases peak load demand and also avoids consumer discomfort. (C) 2018 Elsevier B.V. All rights reserved.
机译:需求响应(DR)是增强智能电网操作的关键属性。需求响应提高了电力系统的性能,也有处理峰值需求问题。住宅消费者的需求响应(DR)实施可能是由家庭能源管理系统(HEMS)的认可。本文介绍了家庭能源管理系统的算法,将住宅中的可预定负载转移,忽略消费者的不适,并尽量使用每小时使用(HTOU)定价方案来最大限度地减少电能消耗的电费。本文使用了监督学习算法,以了解消费者的使用模式,以便在住宅家处允许预定设备自主地克服消费者的不适。仿真结果证实,所提出的算法有效地降低了消费者电费,降低了峰值负荷需求,并避免了消费者的不适。 (c)2018年elestvier b.v.保留所有权利。

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