A cost effective artificial intelligence based transformer insulation health index

Alhaytham Alqudsi, Ayman Elhag
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引用次数: 7

Abstract

Reliable power systems are characterized by their ability to provide the consumer load with minimal service interruption. Such systems comprise of healthy operational transformers that are continuously being monitored for their functionality and operational conditions. Transformer Asset Management (TAM) defines the monitoring activities and responsive actions taken to protect the reliability of power systems against the transformers failure. Failure of transformers primarily occurs due to the aging of the oil-paper insulation system. One of the recently used transformer assessment techniques in the TAM industry is the Health Index (HI). The HI value mainly indicates the condition of the transformer in question based on the insulation strength. A set of insulation condition tests/parameters for transformer oil samples is used to compute the HI value. The combined cost for conducting such tests would be expensive for a vast number of transformer oil samples. The objective of the presented work is to reduce the HI cost by reducing the number of required condition tests. Such an objective is achieved with the use of artificial neural networks (ANN) for HI prediction, and feature-based exhaustive technique for eliminating the least significant tests.
基于人工智能的变压器绝缘健康指数
可靠的电力系统的特点是能够以最小的服务中断为用户提供负载。这种系统由健康运行的变压器组成,可以持续监测其功能和运行条件。变压器资产管理(TAM)定义了监测活动和响应行动,以保护电力系统的可靠性,防止变压器故障。变压器的故障主要是由于油纸绝缘系统的老化引起的。最近在TAM行业中使用的变压器评估技术之一是健康指数(HI)。HI值主要根据绝缘强度反映变压器的状况。采用一组变压器油样品的绝缘状态试验/参数来计算HI值。对于大量的变压器油样本来说,进行这种测试的综合成本将是昂贵的。本文的目标是通过减少所需条件测试的次数来降低HI成本。这样的目标是通过使用人工神经网络(ANN)进行HI预测,以及基于特征的穷举技术来消除最不重要的测试来实现的。
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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