超声波和人工智能在绝缘材料诊断领域的应用

T. Ferreira, A. D. Germano, E. G. Costa
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引用次数: 3

摘要

本文研究了基于超声噪声和人工神经网络的电气绝缘诊断系统的可行性。这种系统在实验室条件下被证明是有效的,它从电气设备中发生的电晕放电发出的超声波噪声中提取光谱信息,并将其与先前定义的污染程度相关联。为了实现这种分类,使用了人工神经网络。结果表明该方法在该领域的可行性,但也表明其可靠性与可用数据库的大小和多样性成正比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ultra-sound and artificial intelligence applied to the diagnostic of insulations in the field
This work studies the feasibility of implementing a system for diagnosis in the field of electrical insulation based on ultrasonic noise and artificial neural networks. Such system, proved functional under laboratory conditions, extracts spectral information from the ultrasonic noise emitted by the corona discharges that occur in electric equipment and correlates it with degrees of pollution previously defined. To achieve this classification, artificial neural networks are employed. The results show the viability of the method in the field, but they also show that its reliability is proportional to the size and diversity of the available database.
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