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Intelligent engineering asset management system for power transformer maintenance decision supports under various operating conditions

机译:用于各种运行条件下电力变压器维护决策支持的智能工程资产管理系统

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摘要

Large sized transformers are an important part of global power systems and industrial infrastructures. An unexpected failure of a power transformer can cause severe production damage and significant loss throughput the power grid. In order to prevent power facilities from malfunctions and breakdowns, the development of real-time monitoring and fault prediction tools are of great interests to both researches and practitioners. This research develops an intelligent engineering asset management system for power transformer maintenance. The system performs real-time monitoring of key parameters and uses data mining and fault prediction models to detect transformers' potential failure under various operating conditions. Principal component analysis (PCA) and a back-propagation artificial neural network (BP-ANN) are the algorithms adopted for the prediction model. Historical industrial power transformer data from Taiwan and Australia are used to train and test the failure prediction models and to verify the proposed general methodology as comparative case studies. The PCA algorithm reduces the number of the primary dissolved gasses as the key factor values for BP-ANN prediction modeling inputs. The system yields effective predictions when verified using various operating condition data from Australia and Taiwan power companies. The accuracy rates are much higher when compared to the fault prediction results without using PCA The intelligent system combining PCA and BP-ANN algorithms, developed in this research, can be adopted by asset managers in different regions to develop suitable maintenance and repair strategies for transformer failure preventions.
机译:大型变压器是全球电力系统和工业基础设施的重要组成部分。电力变压器的意外故障会导致严重的生产损失并严重损害电网的吞吐量。为了防止电力设施发生故障和故障,实时监视和故障预测工具的开发对于研究人员和从业人员都非常感兴趣。本研究开发了一种用于电力变压器维护的智能工程资产管理系统。该系统对关键参数进行实时监控,并使用数据挖掘和故障预测模型来检测各种运行条件下变压器的潜在故障。主成分分析(PCA)和反向传播人工神经网络(BP-ANN)是用于预测模型的算法。来自台湾和澳大利亚的历史工业电力变压器数据用于训练和测试故障预测模型,并验证作为比较案例研究提出的通用方法。 PCA算法减少了主要溶解气体的数量,将其作为BP-ANN预测建模输入的关键因素值。当使用来自澳大利亚和台湾电力公司的各种运行状况数据进行验证时,该系统会产生有效的预测。与不使用PCA的故障预测结果相比,准确率要高得多。本研究开发的结合PCA和BP-ANN算法的智能系统可以被不同地区的资产管理者采用,以开发合适的变压器维护和维修策略。故障预防。

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