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Fault detection and diagnosis of power systems using artificial neural networks

机译:使用人工神经网络的电力系统故障检测与诊断

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Real time fault detection and diagnosis (FDD) is an important area of research interest in knowledge based expert systems. Neurocomputing is one of fastest growing areas of research in the fields of artificial intelligence and pattern recognition. The authors explore the suitability of pattern classification approach of neural networks for fault detection and diagnosis. The suitability of using neural networks as pattern classifiers for power system fault diagnosis is described in detail. A neural network design and simulation environment for real-time FDD is presented. An analysis of the learning, recall and generalization characteristic of the neural network diagnostic system is presented and discussed in detail.
机译:实时故障检测和诊断(FDD)是基于知识专家系统的重要研究兴趣领域。神经关键征是人工智能和模式识别领域的最快发展领域的最快研究领域之一。作者探讨了神经网络对故障检测和诊断的模式分类方法的适用性。详细描述了使用神经网络作为电力系统故障诊断的图案分类器的适用性。提出了一种用于实时FDD的神经网络设计和仿真环境。详细介绍了神经网络诊断系统的学习,召回和泛化特征的分析。

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