基于近端支持向量机的电力变压器故障识别

H. Malik, S. Mishra
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引用次数: 4

摘要

早期故障诊断是电力变压器状态监测的重要内容。早期故障由常规模型和基于人工智能(AI)的模型监测。本文将近端支持向量机(PSVM)应用于油浸式电力变压器故障的早期类型识别。将其性能与传统的IEC/IEEE和AI方法(即ANN和SVM)进行了比较。将人工神经网络和支持向量机的故障分类方法并置,使得该方法的分类速度更快。利用Multi-PSVM对油浸式电力变压器早期故障进行同时识别,在以往尚未实现。对印度北部电网工作变压器的实验数据进行了所需的测试分析,以证明在负载和运行条件扰动的大变化下评估的早期故障的鲁棒性。
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Fault identification of power transformers using Proximal Support Vector Machine (PSVM)
The diagnosis of incipient fault is very important for power transformer condition monitoring. The incipient faults are monitored by conventional and artificial intelligence (AI) based models. In this paper, the Proximal Support Vector Machine (PSVM) has been utilized to identify the incipient type of faults in an oil-immersed power transformer. Its performance is compared with traditional IEC/IEEE and AI methods (i.e. ANN and SVM). The juxtaposition of fault classification of ANN and SVM method notify that proposed approach is much swiftly. Simultaneous identification of oil immersed power transformer incipient faults has never been identified formerly by using Multi-PSVM. The desired test analysis of experimental data from working transformers in the Northern Power Grid of India has been executed to present the robustness of evaluated incipient faults for large variation in loading and operational conditions perturbations.
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