Health Index prediction using Artificial Neural Network (ANN) on Historical Data of Power Transformer

Gemelfour Ardiatus Sudrajad, S. Suwarno, R. A. Prasojo
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引用次数: 1

Abstract

Power transformer is an important equipment in the electric power system. The power transformer has the main task of changing the voltage, transmitting electricity, and distributing electricity. Disruption or failure of the transformer can result in asset fires and power outages. Transformer power failure can result in social and economic losses. The right maintenance strategy can reduce the risk of transformer failure and optimize operational costs and maintenance costs. The Health Index is used to provide an overall assessment of the condition of the power transformer, assess the reliability of the power transformer, and the strategy for maintaining the power transformer. In addition to durability, the health index of the transformer can be assessed from the life expectancy of the transformer. Health Index values can be obtained from expert judgment, calculations, and prediction methods using Artificial Intelligence. This paper discusses the implementation of Artificial Neural Network (ANN) as one of the Artificial Intelligence (AI) algorithms to predict the condition of the transformer health index. The result is compared to the calculated HI, then validated by 79 transformers that have been comprehensively assessed by the expert.
基于历史数据的电力变压器健康指数人工神经网络预测
电力变压器是电力系统中的重要设备。电力变压器的主要任务是改变电压、输送电力和分配电力。变压器的中断或故障可能导致资产火灾和停电。变压器停电会造成社会和经济损失。正确的维护策略可以降低变压器故障的风险,优化运行成本和维护成本。运行状况指数用于提供对电力变压器状况的总体评估、评估电力变压器的可靠性以及维护电力变压器的策略。除了耐久性外,变压器的健康指标还可以从变压器的预期寿命来评估。健康指数值可以通过使用人工智能的专家判断、计算和预测方法获得。本文讨论了将人工神经网络(ANN)作为人工智能(AI)算法之一,实现对变压器健康指标状况的预测。将计算结果与HI进行了比较,并由专家对79台变压器进行了综合评估,对结果进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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