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Artificial Generation of Partial Discharge Sources Through an Algorithm Based on Deep Convolutional Generative Adversarial Networks

机译:基于深度卷积生成对抗性网络的算法通过算法的人工生成

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摘要

The measurement of partial discharges (PD) in electrical equipment or machines subjected to high voltage can be considered as one of the most important indicators when assessing the state of an insulation system. One of the main challenges in monitoring these degradation phenomena is to adequately measure a statistically significant number of signals from each of the sources acting on the asset under test. However, in industrial environments the presence of large amplitude noise sources or the simultaneous presence of multiple PD sources may limit the acquisition of the signals and therefore the final diagnosis of the equipment status may not be the most accurate. Although different procedures and separation and identification techniques have been implemented with very good results, not having a significant number of PD pulses associated with each source can limit the effectiveness of these procedures. Based on the above, this research proposes a new algorithm of artificial generation of PD based on a Deep Convolutional Generative Adversarial Networks (DCGAN) architecture which allows artificially generating different sources of PD from a small group of real PD, in order to complement those sources that during the measurement were poorly represented in terms of signals. According to the results obtained in different experiments, the temporal and spectral behavior of artificially generated PD sources proved to be similar to that of real experimentally obtained sources.
机译:在经过高电压经受高压的电气设备或机器中的部分放电(PD)的测量可以被认为是评估绝缘系统状态时最重要的指标之一。监测这些退化现象的主要挑战之一是充分测量来自在测试的资产上的每个来源的统计上大量的信号。然而,在工业环境中,存在大的幅度噪声源或多个PD源的同时存在可能限制信号的获取,因此设备状态的最终诊断可能不是最准确的。尽管已经用非常好的结果实现了不同的程序和分离和识别技术,但没有与每个源相关联的大量PD脉冲可以限制这些程序的有效性。基于以上,本研究提出了一种基于深度卷积生成的对抗网络(DCGAN)架构的PD人工生成算法,其允许从一小组真实PD中人工产生不同的PD来源,以便补充这些源在测量期间,在信号方面差不多表示。根据在不同实验中获得的结果,所产生的人工产生的PD源的时间和光谱行为类似于真实实验所得源的源。

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