首页> 外文会议>2017 International Conference on High Voltage Engineering and Power Systems >Application of wavelet cumulative energy and artificial neural network for classification of ferroresonance signal during symmetrical and unsymmetrical switching of three-phases distribution transformer
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Application of wavelet cumulative energy and artificial neural network for classification of ferroresonance signal during symmetrical and unsymmetrical switching of three-phases distribution transformer

机译:小波累积能量和人工神经网络在三相配电变压器对称和非对称切换铁磁谐振信号分类中的应用

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In the case of the presence of ferroresonance in distribution transformer due to a faulty switching operation, ferroresonance signals should be discriminated among its initiations due to opened single-phase, opened two-phases, and opened three-phases, so that ferroresonance mitigation can be conducted appropriately. However, the performance of mitigation system itself is highly determined by its accuracy in classification of such ferroresonance signals. This paper dealt with the application of wavelet cumulative energy as input of artificial neural network (ANN), that was feed-forward backpropagation network. Ferroresonance was initiated by varying grading capacitance of circuit breaker and switching operations. The fifth order of daubechies wavelet transform up to nine levels was applied to the secondary voltage of transformer. The detail signal at ninth level decomposition was then calculated its cumulative energy for the input of ANN. The ninth level detail signal and its cumulative energy showed that the ferroresonance signals were clearly distinguished between opened single-phase, opened two-phases, and opened three-phases. The ANN output also performed the satisfactory classification result.
机译:如果配电变压器由于开关操作错误而出现铁磁谐振,则应将铁磁谐振信号区分为是由于单相断开,两相断开和三相断开而引起的,以便可以减轻铁磁谐振。适当地进行。但是,缓解系统本身的性能在很大程度上取决于其对此类铁磁谐振信号进行分类的准确性。本文将小波累积能量作为人工神经网络(ANN)的输入,即前馈反向传播网络。通过改变断路器的分级电容和开关操作来启动铁磁谐振。将达9级的Daubechies小波变换的五阶应用于变压器的次级电压。然后,在第九级分解时的细节信号被计算出用于ANN输入的累积能量。第九级细节信号及其累积能量表明,铁磁谐振信号在打开的单相,打开的两相和打开的三相之间有明显的区别。 ANN输出也取得令人满意的分类结果。

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