基于数字数据的新型神经网络绕线转子感应发电机短路故障分类

Laurent Capocchi, Samuel Toma, G. Capolino, F. Fnaiech, A. Yazidi
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引用次数: 19

摘要

本文研究了一种新的数字输入模式转换和融合方法,用于训练和测试用于绕组转子三相感应电机绕组短路分类的前馈神经网络。使用的输入/输出数据已被二进制编码,以减少计算复杂性。为了消除输入信号的周期性所造成的冗余,提出了一种新的融合二进制位的方法,即同秩集的相加和均值。然而,这种方法在丰富度和统计分布方面对被处理数据的统计特性有很大的影响。所提出的神经网络已经接受了来自电流传感器的实验信号的训练和测试,这些传感器安装在带有原动机和5.5kW绕线转子三相感应发电机的装置周围。实验结果表明,该方法在训练和测试两种模式下均具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wound-rotor induction generator short-circuit fault classification using a new neural network based on digital data
This paper deals with a new transformation and fusion of digital input patterns used to train and test feed-forward neural network for a wound rotor three-phase induction machine winding short-circuits classification. Used input/output data have been binary coded in order to reduce the computation complexity. A new procedure, namely addition and mean of the set of same rank, has been handled to fuse binary bits to eliminate the redundancy due to the periodic character of input signals. However, this approach has a great impact on the statistical properties on the processed data in terms of richness and of statistical distribution. The proposed neural network has been trained and tested with experimental signals coming from current sensors implemented around a set-up with a prime mover and a 5.5kW wound rotor three-phase induction generator. The experimental results highlight the superiority of using this new procedure in both training and testing modes.
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