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Using Dueling Double Q-learning for Voltage Regulation in PV-Rich Distribution Networks

机译:使用Dueling Double Q-Learning用于富含PV的分布网络中的电压调节

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The widespread adoption of photovoltaic (PV) systems results in reverse power flows that are already causing overvoltage problems in many distribution networks. To mitigate these voltage problems, distribution companies are using different voltage regulation approaches that exploit the flexibility of existing devices, such as on-load tap changers (OLTC) at primary substations, and the PV inverters themselves. However, the real-time process that determines the most adequate settings becomes more complex with the increasing number of devices that need to be controlled. This work presents a voltage regulation approach that uses the Machine Learning technique called Double Dueling Q-learning (DDQN) as an extremely fast alternative to coordinate the OLTC-fitted transformer at primary substations and the power factor of PV inverters. The proposed voltage regulation approach is assessed using a real Brazilian MV/LV feeder with 108 residential customers and 15 industrial/commercial customers, in which 60% of the residential customers have a PV system. Results validate the ability of using the DDQN control for voltage regulation in real time applications.
机译:光伏(PV)系统的广泛采用导致在许多分销网络中导致过压问题的反向功率流。为了缓解这些电压问题,配送公司正在使用不同的电压调节方法,该方法利用现有设备的灵活性,例如在初级变电站上的负载分接开关(OLTC)以及PV逆变器本身。但是,利用需要控制的设备数量越来越多,确定最适当的设置的实时过程变得更加复杂。这项工作提出了一种电压调节方法,它使用称为双重决斗Q-Learning(DDQN)的机器学习技术作为一个极快的替代方案,以便在初级变电站和PV逆变器的功率因数协调OLTC拟合变压器。使用具有108名住宅客户和15名工业/商业客户的真正的巴西MV / LV进纸器评估所提出的电压调节方法,其中60%的住宅客户拥有光伏系统。结果验证了使用DDQN控制在实时应用中的电压调节的能力。

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