Predicting the Remaining Lifetime of Distribution Transformers using Machine Learning

Ntiminity Abontakoyah Enoch, Puguo Gbene George, J. Aning
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引用次数: 1

Abstract

Distribution Transformer is a crucial element in deciding the power flow in large power systems. Their better performance implies high power system efficiency and enhanced power transfer capability. However, various Distribution Transformer failures in the recent past lead to power supply disturbance and have acquired much attention from the electrical intellectuals. It is of considerable significance to accurately get the running state of distribution transformers and timely detect the existence of potential transformer faults. This project work presents a predictive model to predict the potential of a distribution transformer failing before its expected years in service. Using Random Forest machine learning techniques, we examine transformer data from August 2010 to June 2019. Our experimental results reveal that a total of 90 distribution transformers were damaged within nine years. Thus, average the company losses ten (10) transformer in a year, which amount to the US $92300-95770 per year. Also, most of the places that recorded rate of distribution transformer damage were a location that had mini and major factories around. Thus, the Sunyani Municipality recorded the highest transformer damage (12), representing 13%, followed by Mim (10). Again, lighting strike was the significant causes of transformer damage. Thus twenty-one (21) out of the ninety (90) damage transformers was caused by a lightning strike. The results further show that 33.33% of the damage transformers were with 24.75-36.75% of their life expectancy. As low as 3.33% of the damage transformers have been in service for 73% of the life expectancy. From the study results, it can be concluded that a high percentage (68.9%) of the damage transformers in the Bono, Bono East and Ahafo regions of Ghana have been in service less the half of its expected years of service. Rate-of-faulty-occurrence, Type-of-faults-sustained and Tap-changer-type are the most significant factors that determine the number of years left for a distribution transformer to fail. We observed that the make of a transformer was of less importance in predicting the years left for a transformer to fail. Finally, the RMSE of 0.001639 and MAPE error of 0.001321 achieved by the proposed model shows that the proposed model fits very well to the dataset.
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用机器学习预测配电变压器的剩余寿命
在大型电力系统中,配电变压器是决定潮流的关键部件。它们的优良性能意味着更高的电力系统效率和更强的电力传输能力。然而,近年来发生的多起配电变压器故障导致的供电干扰已引起电气知识分子的广泛关注。准确掌握配电变压器的运行状态,及时发现变压器潜在故障的存在,具有十分重要的意义。本项目提出了一个预测模型,用于预测配电变压器在预期使用年限前发生故障的可能性。使用随机森林机器学习技术,我们检查了2010年8月至2019年6月的变压器数据。我们的实验结果表明,在9年内共有90台配电变压器损坏。因此,公司平均每年损失十(10)台变压器,每年损失金额为92300-95770美元。此外,记录到配电变压器损坏率的大部分地区都是有小型和大型工厂的地区。因此,Sunyani市记录了最高的变压器损坏(12),占13%,其次是Mim(10)。再次,雷击是变压器损坏的重要原因。因此,九十(90)损坏变压器中有二十一(21)是由雷击引起的。结果进一步表明,33.33%的损坏变压器的预期寿命为24.75 ~ 36.75%。低至3.33%的损坏变压器已经使用了73%的预期寿命。从研究结果中可以得出结论,在加纳的Bono、Bono East和Ahafo地区,损坏变压器的高百分比(68.9%)的使用时间不到预期服务年限的一半。故障发生率、故障持续类型和分接开关类型是决定配电变压器故障剩余年限的最重要因素。我们观察到,在预测变压器故障的剩余年限时,变压器的制造并不那么重要。最后,该模型的RMSE为0.001639,MAPE误差为0.001321,表明该模型与数据集拟合良好。
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