基于人工神经网络的电力系统变压器故障预测框架

K. Venugopal, P. Madhusudan, A. Amrutha
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引用次数: 9

摘要

人工神经网络是原始的学习系统,主要用于分类和模式识别。印度的配电网络提供公用事业和消费者之间的最后一英里连接;因此,这些系统的可靠性对持续供电至关重要。在印度,配电网络通常是老旧的,定期升级这些网络在经济上是不可行的。及时维护配电元件,特别是变压器,不足以保证绝对的可靠性。故障还会在检修和更换时造成暂时的供电中断。避免这种情况的最佳解决方案包括启发式地预测故障的时间概率。本文讨论了用人工神经网络对变压器故障进行预测的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural network based fault prediction framework for transformers in power systems
Artificial neural networks are primitive learning systems that may primarily be used for classification and pattern recognition. Power distribution networks in India provide last mile connectivity between the utility and the consumers; and thereby reliability of these systems is of utmost importance for continuous power supply. In India, power distribution networks are typically old and periodic upgradation of these is economically not viable. Timely maintenance of the distribution components, specifically transformers is insufficient for absolute reliability. Also, faults cause temporary interruption in power supply during the time of repair and replacement. The best solution to avoid this involves predicting the temporal probability of faults, heuristically. This paper discusses the prediction of faults on transformers using artificial neural networks.
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