Design of automatic identification algorithm for double-feature fault signal waveform of power equipment

Huidong Tang, Duo Li, Wendong Lei, Jinpeng Meng
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Abstract

The conventional automatic identification algorithm of double-feature fault signal waveform of power equipment mainly uses ART (Adaptive Resonnance Theory) network for classification and discrimination, which is easily influenced by the identification mapping relationship, resulting in low correct identification rate of fault signal waveform. Therefore, it is necessary to design a brand-new automatic identification algorithm of double-feature fault signal waveform of power equipment. That is to say, the waveform characteristics of dual-feature fault signal of power equipment are extracted, and the optimization algorithm for automatic identification of dual-feature fault signal waveform of power equipment is generated, so that the automatic identification of fault signal waveform is realized. The experimental results show that the designed double-feature fault signal waveform automatic identification algorithm for power equipment has a high correct fault identification rate, which proves that the designed double-feature fault signal waveform automatic identification algorithm for power equipment has good identification effect, reliability and certain application value, and has made certain contributions to improving the operation safety of power equipment.
电力设备双特征故障信号波形的自动识别算法设计
传统的电力设备双特征故障信号波形自动识别算法主要采用自适应谐振理论(ART)网络进行分类和判别,容易受到识别映射关系的影响,导致故障信号波形的正确识别率较低。因此,有必要设计一种全新的电力设备双特征故障信号波形自动识别算法。即提取电力设备双特征故障信号波形特征,生成电力设备双特征故障信号波形自动识别优化算法,实现故障信号波形的自动识别。实验结果表明,所设计的电力设备双特征故障信号波形自动识别算法具有较高的故障识别正确率,证明所设计的电力设备双特征故障信号波形自动识别算法具有良好的识别效果、可靠性和一定的应用价值,为提高电力设备的运行安全性做出了一定的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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