Illias Hazlee Azil, Zhao Liang Wee
Department of Electrical Engineering, Faculty of Engineering, University of Malaya, Kuala Lumpur, Malaysia.
PLoS One. 2018 Jan 25;13(1):e0191366. doi: 10.1371/journal.pone.0191366. eCollection 2018.
Early detection of power transformer fault is important because it can reduce the maintenance cost of the transformer and it can ensure continuous electricity supply in power systems. Dissolved Gas Analysis (DGA) technique is commonly used to identify oil-filled power transformer fault type but utilisation of artificial intelligence method with optimisation methods has shown convincing results. In this work, a hybrid support vector machine (SVM) with modified evolutionary particle swarm optimisation (EPSO) algorithm was proposed to determine the transformer fault type. The superiority of the modified PSO technique with SVM was evaluated by comparing the results with the actual fault diagnosis, unoptimised SVM and previous reported works. Data reduction was also applied using stepwise regression prior to the training process of SVM to reduce the training time. It was found that the proposed hybrid SVM-Modified EPSO (MEPSO)-Time Varying Acceleration Coefficient (TVAC) technique results in the highest correct identification percentage of faults in a power transformer compared to other PSO algorithms. Thus, the proposed technique can be one of the potential solutions to identify the transformer fault type based on DGA data on site.
电力变压器故障的早期检测非常重要,因为它可以降低变压器的维护成本,并确保电力系统的持续供电。溶解气体分析(DGA)技术通常用于识别油浸式电力变压器的故障类型,但将人工智能方法与优化方法结合使用已显示出令人信服的结果。在这项工作中,提出了一种结合改进的进化粒子群优化(EPSO)算法的混合支持向量机(SVM)来确定变压器故障类型。通过将结果与实际故障诊断、未优化的SVM以及先前报道的工作进行比较,评估了改进的PSO技术与SVM相结合的优势。在支持向量机训练过程之前,还使用逐步回归进行数据约简,以减少训练时间。结果发现,与其他PSO算法相比,所提出的混合SVM-改进的EPSO(MEPSO)-时变加速系数(TVAC)技术在电力变压器故障识别中的正确识别率最高。因此,所提出的技术可以成为基于现场DGA数据识别变压器故障类型的潜在解决方案之一。