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Deep Neural Network Driven Electric Spring for Voltage Regulation

机译:深度神经网络驱动电动弹簧,用于电压调节

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In this paper, a Deep Neural Network (DNN) is proposed to perform robust voltage regulation using Electric Spring (ES). This work focuses on both the design and implementational details of a Neural Network that has been used to drive ES under severe loading conditions of the power distribution system. ES has been previously used to perform voltage regulation; however, the robustness added due to the well-trained DNN is the essence of this work. The data set for training DNN parameters have been obtained using offline dry runs of a typical distribution network. Later, the trained model is operated under unseen test cases. It has been shown that DNN based ES outperforms the previous implementations of ES due to a smaller number of sensors and fewer dependencies on-grid variables.
机译:在本文中,提出了一种深度神经网络(DNN)来使用电动弹簧进行鲁棒电压调节。这项工作侧重于神经网络的设计和实施细节,这些细节已经在配电系统的严重负载条件下驾驶ES。 ES先前用于执行电压调节;然而,由于训练有素的DNN而增加的稳健性是这项工作的本质。使用典型的分发网络的离线干运行获得了用于训练DNN参数的数据集。后来,经过培训的模型在看不见的测试用例下运营。已经表明,由于较少数量的传感器和较少的网格变量较少的依赖性,DNN基于的es优于先前的ES实现。

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