论文标题
智能住宅能源管理系统使用深厚的增强学习
Intelligent Residential Energy Management System using Deep Reinforcement Learning
论文作者
论文摘要
当今世界上对电力的需求及其基本性质的需求不断增加,要求智能家庭能源管理(HEM)系统可以减少能源的使用。这涉及安排从一天中的高峰时间安排负载,当时能源消耗是最高到较精简的一天中的较精细的时期,而能源消耗相对较低,从而减少了系统的峰值负载需求,从而导致较低的能源费用,并提高了负载需求的概况。这项工作引入了一种开发学习系统的新方法,该学习系统可以从经验中学习,以将负载从一次实例转移到另一个实例,并实现最大程度地减少总峰值负载的目标。本文提出了一个深入的加固学习(DRL)模型,以响应虚拟代理像人类一样学习任务。代理会为其在环境中采取的每项动作提供反馈;这些反馈将推动代理商学习环境,并在其学习阶段采取更明智的步骤。我们的方法的表现优于最先进的混合整数线性编程(MILP),以减少负载峰值。作者还设计了一个代理商,以学习同时减少消费者的电费和公用事业的系统峰值负载需求。对五个不同住宅消费者的负载分析了所提出的模型;所提出的方法通过大幅度降低电费,并通过提出的方法处理可移动负载时,增加了每个消费者的每月节省,并最大程度地减少了系统上的峰值负载。
The rising demand for electricity and its essential nature in today's world calls for intelligent home energy management (HEM) systems that can reduce energy usage. This involves scheduling of loads from peak hours of the day when energy consumption is at its highest to leaner off-peak periods of the day when energy consumption is relatively lower thereby reducing the system's peak load demand, which would consequently result in lesser energy bills, and improved load demand profile. This work introduces a novel way to develop a learning system that can learn from experience to shift loads from one time instance to another and achieve the goal of minimizing the aggregate peak load. This paper proposes a Deep Reinforcement Learning (DRL) model for demand response where the virtual agent learns the task like humans do. The agent gets feedback for every action it takes in the environment; these feedbacks will drive the agent to learn about the environment and take much smarter steps later in its learning stages. Our method outperformed the state of the art mixed integer linear programming (MILP) for load peak reduction. The authors have also designed an agent to learn to minimize both consumers' electricity bills and utilities' system peak load demand simultaneously. The proposed model was analyzed with loads from five different residential consumers; the proposed method increases the monthly savings of each consumer by reducing their electricity bill drastically along with minimizing the peak load on the system when time shiftable loads are handled by the proposed method.