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Autonomous Household Energy Management Using Deep Reinforcement Learning

机译:使用深度强化学习的自主家庭能源管理

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With the massive growth of smart meters and availability of data, there is a unique opportunity to offer novel services to utility customers. The emergence of new technologies can be used to learn a customer's electrical consumption patterns and to offer customized solutions for minimizing electricity cost. One such technology is deep reinforcement learning (DRL), which is explored in this paper. The proposed approach for autonomous household energy management utilizes deep Q-learning with a novel method to deal with potential scalability issues that involves grouping dependent electrical devices. The defined reward function addresses the problems of previous research by adding more scenarios for the penalty and reward. Transfer learning using an adviser agent is also utilized to improve training time. By grouping dependent devices, we are able to resolve the problem of scalability. The results of these experiments demonstrate that DRL can be utilized to autonomously control household energy consumption.
机译:随着智能电表的迅猛发展和数据的可用性,提供了向公用事业客户提供新颖服务的独特机会。新技术的出现可用于了解客户的用电模式,并提供定制化的解决方案以最大程度地降低电费。一种这样的技术是深度强化学习(DRL),本文将对此进行探讨。提出的用于自主家庭能源管理的方法利用深度Q学习和一种新颖的方法来处理涉及将相关电气设备分组的潜在可伸缩性问题。定义的奖励功能通过添加更多惩罚和奖励方案来解决先前研究的问题。使用顾问代理进行的转移学习也可以用来缩短培训时间。通过对相关设备进行分组,我们能够解决可伸缩性问题。这些实验的结果表明,DRL可用于自主控制家庭能源消耗。

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