A gain perturbation method to improve the generalization performance for the recurrent neural network misfire detector

Pu Sun, K. Marko
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引用次数: 1

Abstract

A common constraint on the application of neural networks to diagnostics and control of mass manufactured systems is that training sets can only be obtained from limited number of system exemplars. As a consequence the variations of dynamic response in the systems pose a problem in obtaining excellent performance for the trained neural networks. In this paper we describe a gain perturbation method (GPM) to improve the generalization performance in neural network diagnostic monitors trained on a data set obtained from one individual vehicle and rested on data from the another vehicle. The results show significant improvement in the generalization performance for neural networks trained with GPM over the ones trained without GPM.
一种提高递归神经网络失火检测器泛化性能的增益摄动方法
将神经网络应用于大规模制造系统的诊断和控制的一个常见限制是,训练集只能从有限数量的系统样本中获得。因此,系统动态响应的变化给训练后的神经网络获得良好的性能带来了困难。在本文中,我们描述了一种增益摄动方法(GPM)来提高神经网络诊断监视器的泛化性能,该神经网络诊断监视器是在一辆车的数据集上训练的,并依赖于另一辆车的数据集。结果表明,与不使用GPM训练的神经网络相比,使用GPM训练的神经网络的泛化性能有显著提高。
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