PRPD谱特征在EPDM电缆绝缘老化状态识别中的应用

Enxin Xiang, Ke Wang, Weidong Cao, D. Nie, Limeng Xing, Dada Wang, Jisheng Huang
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引用次数: 0

摘要

为了识别EPDM电缆绝缘的老化状态,制备了不同老化状态下的EPDM样品,并搭建了局部放电测试平台。通过实验获得了EPDM样品在不同老化状态下的PRPD光谱,并从部分放电光谱中提取了19个特征参数。本文采用主成分分析法对19个特征参数进行降维,将降维后得到的10个特征参数和未降维的19个特征参数分别作为神经网络的输入。结果表明:对于标准BP算法、附加动量算法和变学习率算法,非降维网络的训练次数和收敛时间明显大于降维网络,而对于共轭梯度算法和L-M优化算法,非降维网络的收敛时间明显大于降维网络。L-M优化算法后,降维网络的训练次数和收敛时间没有明显改善,但收敛精度有了很大提高;对于相同算法,降维处理对特征数据的识别效果更好;对于相同的特征数据,L-M优化算法识别准确率最高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of PRPD Spectrum Characteristic in the Recognition of the Aging State of EPDM Cable Insulation
In order to identify the aging state of EPDM cable insulation, EPDM samples in different aging states were prepared, and a partial discharge test platform was built. The PRPD spectrum of EPDM samples in different aging states were obtained through experiments, and 19 characteristic parameters were extracted from the partial discharge spectra. In this paper, 19 characteristic parameters were reduced by using principal component analysis method, 10 feature parameters obtained after dimension reduction and 19 feature parameters without dimension reduction are used as inputs of the neural network respectively. The results show that for standard BP algorithm, additional momentum algorithm and variable learning rate algorithm, the training times and convergence time of the non-dimension reduction network are obviously more than that of the dimension reduction network, while for conjugate gradient algorithm and L-M optimization algorithm, the convergence time of the non-dimension reduction network is obviously more than that of the dimension reduction network. L-M optimization algorithm, dimension reduction network training times and convergence time are not significantly improved, but the convergence accuracy has been greatly improved; for the same algorithm, dimension reduction processing of feature data recognition effect is better; for the same feature data, L-M optimization algorithm recognition accuracy is the highest.
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