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Fault Diagnosis and Identification of Power Capacitor Based on Edge Cloud Computing and Deep Learning

机译:基于边缘云计算和深度学习的电力电容故障诊断与识别

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Nowadays, power electronic technology is widely affecting people’s daily work and life. However, there are still many problems in the current power supply research. When the fault information of power transformer is not complete or there is some ambiguity or even the information is lost, it will largely lead to the conclusion and correct conclusion of fault diagnosis. In this case, the fuzzy theory is applied to the fault diagnosis of shunt capacitor, and the fuzzy fault diagnosis system of shunt capacitor is studied. At the same time, a map-based fault diagnosis system is proposed. In this paper, the cloud computing technology is introduced into the deep learning and compared with SVM and DBN algorithm. The research results of this paper show that the accuracy of fuzzy diagnosis results is 94%, 84%, 90%, 80%, 83%, and 70%, respectively, which shows that the model diagnosis reliability is relatively high. Among the three algorithms, MR-DBN overall detection rate is higher and the time-consuming is lower than the other two methods. The diagnostic accuracy and misjudgment rate of DBN are as follows: 96.33% and 3.90%. The diagnosis accuracy and misjudgment rate of SVM are as follows: 96.40% and 3.83%. The diagnostic accuracy and misjudgment rate of MR-DBN are, respectively, 99.52% and 0.57%. Compared with the other two methods, MR-DBN has the highest diagnostic accuracy and the lowest error rate, which to a large extent indicates that MR-DBN algorithm has higher diagnostic accuracy and has greater advantages and reliability in power supply diagnosis and identification. It not only improves the accuracy of power capacitor fault diagnosis and identification but also provides a new method for the application of power capacitor fault research and development.
机译:如今,电力电子技术广泛影响人们的日常工作和生活。然而,目前电源研究中仍存在许多问题。当电力变压器的故障信息不完整或有一些模糊性甚至信息丢失时,它将在很大程度上导致结论和正确的故障诊断结论。在这种情况下,模糊理论应用于分流电容器的故障诊断,研究了分流电容器的模糊故障诊断系统。同时,提出了一种基于地图的故障诊断系统。在本文中,将云计算技术引入深度学习并与SVM和DBN算法进行比较。本文的研究结果表明,模糊诊断结果的准确性分别为94%,84%,90%,80%,83%和70%,表明模型诊断可靠性相对较高。在三种算法中,MR-DBN总体检测率较高,耗时低于其他两种方法。 DBN的诊断准确性和误诊率如下:96.33%和3.90%。 SVM的诊断准确性和误诊率如下:96.40%和3.83%。 MR-DBN的诊断准确性和误诊率分别为99.52%和0.57%。与其他两种方法相比,MR-DBN具有最高的诊断精度和最低误差率,在很大程度上表明MR-DBN算法具有更高的诊断精度,并且在电源诊断和识别方面具有更大的优缺度和可靠性。它不仅可以提高电源电容故障诊断和识别的准确性,而且还提供了一种应用电力电容器故障研究和开发的新方法。

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