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Smart fault classification in HVDC system based on optimal probabilistic neural networks

机译:基于最优概率神经网络的高压直流输电系统智能故障分类

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摘要

Optimal probabilistic neural network-based method has been porposed in this paper to identify different types of fault in high voltage direct current (HVDC) system. Probabilistic neural network is a type of artificial neural networks capable of approximating the optimal classifier. The particle swarm optimization is porposed to achive an optimal value of smoothing factor for PNN which is an important parameter. The main purpose of this paper is fast and accurate fault classification, for this purpose simple HVDC system has been evaluated under various fault type condition to examine the efficacy of the proposed method. The performance of the proposed method is investigated using MATLAB/Simulink environment.
机译:本文提出了基于最优概率神经网络的方法来识别高压直流(HVDC)系统中的不同类型的故障。概率神经网络是一种能够逼近最佳分类器的人工神经网络。提出了粒子群优化算法,以实现作为重要参数的PNN平滑因子的最佳值。本文的主要目的是快速准确地进行故障分类,为此目的,在各种故障类型条件下对简单的高压直流输电系统进行了评估,以检验该方法的有效性。使用MATLAB / Simulink环境研究了该方法的性能。

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