Unbalance Localization of a Multi-Disc Rotor by Hybridizing Wavelet Transformation and Neural Network

M. Safari, A. Eydi
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Abstract

Rotating machinery is widely working within the industry, and fault diagnosis and prognosis of them may be a vital issue that can save money continually. Unbalance is a crucial fault in rotary systems, and it is focused by many researchers to develop methods to detect that for correcting before global failure happening within the machine. Hence, the establishment of a procedure that will estimate the unbalance location and its specifics are going to be valued and practical for correcting operations. The recent study exemplifies a model that can detect the unbalance parameters, for example, the location of unbalance mass and value of that based on the hybridizing Wavelet Transformation and artificial neural network (ANN) model. The inputs of the model are wavelet coefficients derived from the bearing acceleration signal. It includes two hidden layers constructed by six neurons within each layer. The parameters estimation accuracy was attained 95%, 97%, and 96% for the disc number, the eccentric radius, and unbalance mass values, correspondingly.
基于杂交小波变换和神经网络的多盘转子不平衡定位
旋转机械在工业中应用广泛,对其进行故障诊断和预测可能是一个至关重要的问题,可以持续节省资金。不平衡是旋转系统的一个重要故障,如何在整机发生故障前进行检测和纠正是许多研究人员关注的焦点。因此,建立一个程序,以估计不平衡的位置及其具体情况,将是有价值的和实用的纠正操作。本文提出了一种基于杂交小波变换和人工神经网络(ANN)模型的检测不平衡质量位置和不平衡质量值等不平衡参数的模型。该模型的输入是由轴承加速度信号导出的小波系数。它包括两个隐藏层,每层由六个神经元组成。圆盘数、偏心半径和不平衡质量值的参数估计精度分别达到95%、97%和96%。
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