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Fault diagnosis for rotary machinery with selective ensemble neural networks

机译:选择性集成神经网络的旋转机械故障诊断

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The diagnosis of rotary machinery systems is gaining interest both in academic and industry fields, which assures machinery operational safety and reliability in terms of typical rotary machinery components such as bearings and gears. With a view to gain better generalization ability of fault diagnosis along with multiple monitored variables with corresponding fault patterns, a novel fault diagnosis method (particle swarm optimization based selective ensemble learning, PSOSEN) that utilizes ensemble learning with differentiated probabilistic neural networks (PNNs) is proposed, where nonlinear decreasing inertia weight based adaptive particle swarm optimization (APSO) is employed to effectively reinforce the learning process by selecting superior individuals for integration instead of all. First, statistical features in the time domain and frequency domain are extracted and integrated from vibration signals, and feature selection based on bagging feature representation is applied to generate desirable PNNs. Second, APSO is used to improve the performance by balancing diversity and accuracy, aiming to eliminate similar individuals via weight assignation and retain the classifiers with better performance in the initial iteration. The globe-best vectors are then, by means of linear transformation, mapped into a matching matrix in which row vectors indicate the corresponding weights of the selected classifiers. Singular value decomposition (SVD) is employed on the established matrix, where an optimal weight vector is thus obtained according to the orthogonal matrices parameters. The fault diagnosis result is finally achieved by ensemble computing of PNNs based on the calculated weight coefficients. Comparative experiments are included in this paper to demonstrate the effectiveness in fault diagnosis of rotary machinery including varying working conditions and different severe degrees.
机译:旋转机械系统的诊断在学术和工业领域都引起了人们的兴趣,这确保了典型旋转机械部件(例如轴承和齿轮)的机械操作安全性和可靠性。为了获得更好的故障诊断泛化能力以及带有相应故障模式的多个监视变量,一种新颖的故障诊断方法(基于粒子群优化的选择性集成学习,PSOSEN)将集成学习与差分概率神经网络(PNN)结合使用。提出了一种基于非线性递减惯性权重的自适应粒子群优化(APSO)方法,通过选择优秀个体而不是全部个体进行整合来有效地增强学习过程。首先,从振动信号中提取并整合时域和频域中的统计特征,然后基于装袋特征表示的特征选择应用于生成所需的PNN。其次,APSO用于通过平衡多样性和准确性来提高性能,旨在通过权重分配消除相似的个体,并在初始迭代中保留具有更好性能的分类器。然后,通过线性变换将全球最佳矢量映射到匹配矩阵,其中行矢量指示所选分类器的相应权重。在已建立的矩阵上采用奇异值分解(SVD),从而根据正交矩阵参数获得最佳权向量。通过基于计算出的权重系数对PNN进行整体计算,最终获得故障诊断结果。本文包括比较实验,以证明旋转机械故障诊断的有效性,包括变化的工作条件和不同的严重程度。

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