Intelligent rush repair of unmanned distribution network based on deep reinforcement learning

Yue Zhao, Yang Chuan, Shi Pu, Xuwen Han, Shiyu Xia, Yanqi Xie
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Abstract

With the continuous expansion of China's power grid scale and the increasing number of power users year by year, it is necessary to ensure the normal power supply of users. When a power failure occurs, it is particularly critical whether the emergency repair task can be completed quickly and scientifically. In this paper, an intelligent repair model of “unmanned” distribution network based on deep reinforcement learning is proposed, which adopts speech recognition tech-nology and deep reinforcement learning algorithm to achieve the “unmanned” of the whole system. Users can transmit the emergency repair information to the voice recognition module of the power supply emergency repair center by voice, SMS and IMS, and the module will get the emergency repair position and the amount of emergency repair tasks. Then, the resource allocation module is used to learn the emergency repair resource allocation strategy online, and the intelligent control of emergency repair in distribution network is realized. To verify the proposed algorithm, it is compared with two typical allocation strategies under the same settings. The results of the experiments demonstrate that the method based on deep reinforcement learning performs better in terms of emergency repair delay and intelligent emergency repair of the power supply in distribution networks.
基于深度强化学习的无人配电网智能抢修
随着中国电网规模的不断扩大和电力用户数量的逐年增加,保障用户的正常供电是十分必要的。当发生电源故障时,能否快速、科学地完成抢修任务显得尤为关键。本文提出了一种基于深度强化学习的配电网“无人”智能维修模型,该模型采用语音识别技术和深度强化学习算法实现整个系统的“无人”。用户可以通过语音、短信、IMS等方式将应急抢修信息传递给电源应急抢修中心语音识别模块,该模块将获得应急抢修位置和应急抢修任务量。然后,利用资源分配模块在线学习应急抢修资源分配策略,实现配电网应急抢修智能控制。为了验证所提出的算法,将其与相同设置下的两种典型分配策略进行了比较。实验结果表明,基于深度强化学习的方法在配电网供电的应急抢修延迟和智能应急抢修方面都有较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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