随机森林缺失数据预测的电力变压器绝缘系统健康指数

Geby Chintia, R. A. Prasojo, Suwarno
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引用次数: 0

摘要

健康指数法是目前评估电力变压器整体状况最常用的方法之一。数据不可用仍然是健康指数评估中的一个问题。本文讨论了用剔除参数、平均值、假设良好、单反和随机森林预测五种缺失数据替代方法对变压器健康状况的预测。基于2FAL、IFT和Water Content 3个缺失参数,模拟了7个场景。使用使用完整参数计算的运行状况指数来评估准确性。分析中使用了504台150kv电力变压器。结果表明,随机森林方法的准确率最高,平均值为92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Transformer Insulation System Health Index with Missing Data Prediction using Random Forest
Health Index approach is currently one of the most common ways to assess the overall condition of power transformers. Data unavailability is still a problem in Health Index assessment. This paper discusses the prediction of transformer health conditions using five missing data replacement methods, which are removed parameter, average value, assume good, SLR, and Random Forest prediction. Seven scenarios based were simulated based on three missing parameters, namely 2FAL, IFT and Water Content. The accuracy is evaluated using the Health Index calculated with complete parameter. As much as 504 units of 150 kV power transformers were used in the analysis. The results show that Random Forest method produced the highest accuracy rate among the other methods with average value of 92%.
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