采用神经网络和人工智能的故障分析系统

Y. Fukuyama, Y. Ueki
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引用次数: 15

摘要

作者提出了一种采用专家系统(ES)、神经网络(nn)和常规故障分析包(CFAP)的混合故障分析系统。该系统通过操作继电器、断路器(CBs)和故障电压/电流波形的信息来检测故障类型和近似故障点。用神经网络估计故障区域,用神经网络分析故障电压/电流波形。针对电力系统对可靠性要求较高的特点,采用基于CFAP的方法对神经网络波形识别结果进行验证。比较了四种不同类型的神经网络,选择了一种合适的神经网络进行波形识别。将神经网络、ES和CFAP结合使用,可以获得这些方法的便捷特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault analysis system using neural networks and artificial intelligence
The authors propose a hybrid fault analysis system using an expert system (ES), neural networks (NNs), and a conventional fault analysis package (CFAP). The system detects fault type and approximate fault points using information from operated relays, circuit breakers (CBs), and fault voltage/current waveforms. Faulted sections are estimated by ES and the fault voltage/current waveform is analyzed by NNs. Since power systems require high reliability, the system uses a verification procedure based on CFAP for the result of NN waveform recognition. Four different types of NNs are compared and an appropriate NN is selected for waveform recognition. With NNs, ES and CFAP used together, the system can obtain the convenient features of these methods.<>
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