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Self-commissioning training algorithms for neural networks with applications to electric machine fault diagnostics

机译:神经网络的自调试训练算法及其在电机故障诊断中的应用

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摘要

The main limitations of neural network (NN) methods for fault diagnostics applications are training data and data memory requirements, and computational complexity. Generally, a NN is trained offline with all the data obtained prior to commissioning, which is not possible in a practical situation. In this paper, three novel and self-commissioning training algorithms are proposed for online training of a feedforward NN to effectively address the aforesaid shortcomings. Experimental results are provided for an induction machine stator winding turn-fault detection scheme, to illustrate the feasibility of the proposed online training algorithms for implementation in a commercial product.
机译:神经网络(NN)方法在故障诊断应用中的主要局限性在于训练数据和数据存储需求以及计算复杂性。通常,NN是使用调试前获得的所有数据进行脱机训练的,这在实际情况下是不可能的。本文针对前馈神经网络的在线训练,提出了三种新颖的自调试训练算法,以有效解决上述不足。提供了感应电机定子绕组故障检测方案的实验结果,以说明所提出的在线训练算法在商业产品中实施的可行性。

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