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Deep Reinforcement Learning Based Volt-VAR Optimization in Smart Distribution Systems

机译:基于深度加强基于智能分配系统的VAR优化

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摘要

This paper develops a model-free volt-VAR optimization (VVO) algorithm via multi-agent deep reinforcement learning (DRL) in unbalanced distribution systems. This method is novel since we cast the VVO problem in distribution networks to an intelligent deep Q-network (DQN) framework, which avoids solving a specific optimization model directly when facing time-varying operating conditions in the systems. We consider statuses/ratios of switchable capacitors, voltage regulators, and smart inverters installed at distributed generators as the action variables of the agents. A delicately designed reward function guides these agents to interact with the distribution system, in the direction of reinforcing voltage regulation and power loss reduction simultaneously. The forward-backward sweep method for radial three-phase distribution systems provides accurate power flow results within a few iterations to the DRL environment. The proposed method realizes the dual goals for VVO. We test this algorithm on the unbalanced IEEE 13-bus and 123-bus systems. Numerical simulations validate the excellent performance of this method in voltage regulation and power loss reduction.
机译:本文在不平衡分配系统中开发了一种无剂深加固学习(DRL)的无模型Vol-VAR优化(VVO)算法。此方法是新颖的,因为我们将分发网络中的VVO问题投入到智能的深Q网络(DQN)框架中,这避免在面对系统中的时变运行条件时直接解决特定的优化模型。我们考虑可切换电容器,电压调节器和安装在分布式发电机的智能逆变器的状态/比例作为代理的动作变量。精致设计的奖励功能指导这些代理与分配系统相互作用,在加强电压调节和功率损耗同时减少方向上。用于径向三相分配系统的前后扫描方法提供准确的电力流量导致DRL环境的几个迭代。该方法实现了VVO的双重目标。我们在不平衡IEEE 13-Bus和123总线系统上测试该算法。数值模拟验证了该方法在电压调节和功率损耗降低方面的优异性能。

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