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Condition Diagnosis of Bearing System Using Multiple Classifiers of ANNs and Adaptive Probabilities in Genetic Algorithms

机译:基于人工神经网络多个分类器和遗传算法自适应概率的轴承系统状态诊断。

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Condition diagnosis in bearing systems needs an effective and precise method to avoid unacceptable consequences from total system failure. Artificial Neural Networks (ANNs) are one of the most popular methods for classification in condition diagnosis of bearing systems. Regarding to ANNs performance, ANNs parameters have important role especially connectivity weights. In several running of learning processes with the same structure of ANNs, we can obtain different accuracy significantly since initial weights are selected randomly. Therefore, finding the best weights in learning process is an important task for obtaining good performance of ANNs. Previous researchers have proposed some methods to get the best weights such as simple average and majority voting. However, these methods have some limitations in providing the best weights especially in condition diagnosis of bearing systems. In this paper, we propose a hybrid technique of multiple classifier-ANNs (mANNs) and adaptive probabilities in genetic algorithms (APGAs) to obtain the best weights of ANNs in order to increase the classification performance of ANNs in condition diagnosis of bearing systems. The mANNs are used to provide several best initial weights which are optimized by APGAs. The set optimized weights from APGAs, afterward, are used as the best weights for condition diagnosis. Our experiment shows mANNs-APGAs give better results than of the simple average and majority voting in condition diagnosis of bearing systems. This experiment also shows the distinction of maximum and minimum accuracy in mANNs-APGAs is lower than the two existing methods.
机译:轴承系统的状态诊断需要一种有效而精确的方法,以避免整个系统故障所带来的不可接受的后果。人工神经网络(ANN)是轴承系统状态诊断中最受欢迎的分类方法之一。关于人工神经网络的性能,人工神经网络参数具有重要作用,尤其是连接权重。在具有相同结构的人工神经网络的多次学习过程中,由于初始权重是随机选择的,因此我们可以获得明显不同的准确性。因此,在学习过程中找到最佳权重是获得良好ANN性能的重要任务。先前的研究人员提出了一些获得最佳权重的方法,例如简单的平均数和多数投票。但是,这些方法在提供最佳权重方面存在一些局限性,尤其是在轴承系统的状态诊断中。本文提出了一种基于遗传算法(APGAs)的多分类器-人工神经网络(mANN)和自适应概率的混合技术,以获得最佳的人工神经网络权重,以提高神经网络在轴承系统状态诊断中的分类性能。 mANN用于提供几种最佳初始权重,这些初始权重由APGA优化。然后,根据APGA确定的最佳权重被用作状态诊断的最佳权重。我们的实验表明,在轴承系统状态诊断中,mANNs-APGAs的效果要优于简单平均和多数表决。该实验还表明,mANNs-APGA中最大和最小精度的区别低于两种现有方法。

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