Power System Control and Protection Models Based on Artificial Intelligence – A Tensorflow Approach

A. Bernadic
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Abstract

Abstract Artificial intelligence (AI) and Deep learning (DL) methods in power systems are being tested and prepared for practical use in many applications. In this work an artificial neural network models for fault identification and classification and switching logic control in middle voltage (MV) power electricity network is presented. Models are implemented in Google’s Python based tool Tensorflow with belonging program libraries. For fault detection and classification example a few thousand simulations are conducted in order to obtain enough fault current and voltage samples for high accuracy artificial neural network (ANN) with backpropagation model. Achieved accuracy and speed of presented deep learning model, open a possibility for application in digital relay protection devices. Second example is implementation of switching control rules in HV/MV substations. Presented models are patterns for power system controlling centres as part of broader controlling and protection logic.
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基于人工智能的电力系统控制与保护模型-一种张量流方法
电力系统中的人工智能(AI)和深度学习(DL)方法正在进行测试和准备,以便在许多应用中实际使用。本文提出了一种用于中压电网故障识别分类和开关逻辑控制的人工神经网络模型。模型是在谷歌基于Python的工具Tensorflow中实现的,并带有所属的程序库。为了获得足够的故障电流和电压样本,对具有反向传播模型的高精度人工神经网络(ANN)进行了数千次仿真。实现了深度学习模型的准确性和速度,为数字继电保护器件的应用开辟了可能性。第二个例子是高压/中压变电站开关控制规则的实施。所提出的模型是电力系统控制中心的模式,作为更广泛的控制和保护逻辑的一部分。
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