An Intelligent Fault Diagnosis Method for Bearings with Variable Rotating Speed Based on Pythagorean Spatial Pyramid Pooling CNN

Deep learning methods have been introduced for fault diagnosis of rotating machinery. Most methods have good performance when processing bearing data at a certain rotating speed. However, most rotating machinery in industrial practice has variable working speed. When processing the bearing data with variable rotating speed, the existing methods have low accuracies, or need complex parameter adjustments. To solve this problem, a fault diagnosis method based on continuous wavelet transform scalogram (CWTS) and Pythagorean spatial pyramid pooling convolutional neural network (PSPP-CNN) is proposed in this paper. In this method, continuous wavelet transform is used to decompose vibration signals into CWTSs with different scale ranges according to the rotating speed. By adding a PSPP layer, CNN can process CWTSs in different sizes. Then the fault diagnosis of variable rotating speed bearing can be carried out by a single CNN model without complex parameter adjustment. Compared with a spatial pyramid pooling (SPP) layer that has been used in CNN, a PSPP layer locates as front layer of CNN. Thus, the features obtained by PSPP layer can be delivered to convolutional layers for further feature extraction. According to experiment results, this method has higher diagnosis accuracy for variable rotating speed bearing than other methods. In addition, the PSPP-CNN model trained by data at some rotating speeds can be used to diagnose bearing fault at full working speed.

[1]  Yongbo Li,et al.  A new rolling bearing fault diagnosis method based on multiscale permutation entropy and improved support vector machine based binary tree , 2016 .

[2]  Ronald M. Summers,et al.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning , 2016, IEEE Transactions on Medical Imaging.

[3]  Peng Wang,et al.  Temporal Pyramid Pooling-Based Convolutional Neural Network for Action Recognition , 2015, IEEE Transactions on Circuits and Systems for Video Technology.

[4]  Robert X. Gao,et al.  Base Wavelet Selection for Bearing Vibration Signal Analysis , 2009, Int. J. Wavelets Multiresolution Inf. Process..

[5]  Min Xia,et al.  Fault Diagnosis for Rotating Machinery Using Multiple Sensors and Convolutional Neural Networks , 2018, IEEE/ASME Transactions on Mechatronics.

[6]  Wei Gao,et al.  A Novel Fault Diagnosis Method for Rotating Machinery Based on a Convolutional Neural Network , 2018, Sensors.

[7]  Mahito Fujii,et al.  [Paper] Semantic Concept Detection based on Spatial Pyramid Matching and Semi-supervised Learning , 2013 .

[8]  Mahito Fujii,et al.  Semantic Concept Detection based on Spatial Pyramid Matching and Semi-supervised Learning , 2013 .

[9]  Andrea Vedaldi,et al.  MatConvNet: Convolutional Neural Networks for MATLAB , 2014, ACM Multimedia.

[10]  Huicheng Zheng,et al.  Vehicle logo recognition based on a weighted spatial pyramid framework , 2014, 17th International IEEE Conference on Intelligent Transportation Systems (ITSC).

[11]  Liu Wei,et al.  Continuous wavelet grey moment approach for vibration analysis of rotating machinery , 2006 .

[12]  Kaiming He,et al.  Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks , 2015, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[13]  Brigitte Chebel-Morello,et al.  Application of empirical mode decomposition and artificial neural network for automatic bearing fault diagnosis based on vibration signals , 2015 .

[14]  Aykut Erdem,et al.  Visual Attention-Driven Spatial Pooling for Image Memorability , 2013, 2013 IEEE Conference on Computer Vision and Pattern Recognition Workshops.

[15]  Bin Zhang,et al.  A Probabilistic Fault Detection Approach: Application to Bearing Fault Detection , 2011, IEEE Transactions on Industrial Electronics.

[16]  Fanrang Kong,et al.  Fault diagnosis of rotating machinery based on the statistical parameters of wavelet packet paving and a generic support vector regressive classifier , 2013 .

[17]  Phil Blunsom,et al.  A Convolutional Neural Network for Modelling Sentences , 2014, ACL.

[18]  Mario Fritz,et al.  Learnable Pooling Regions for Image Classification , 2013, ICLR.

[19]  Robert Babuska,et al.  Railway Track Circuit Fault Diagnosis Using Recurrent Neural Networks , 2017, IEEE Transactions on Neural Networks and Learning Systems.

[20]  Yanyang Zi,et al.  Enhancement of signal denoising and multiple fault signatures detecting in rotating machinery using dual-tree complex wavelet transform , 2010 .

[21]  Bin Zhang,et al.  Fault progression modeling: An application to bearing diagnosis and prognosis , 2010, Proceedings of the 2010 American Control Conference.

[22]  Gang Wang,et al.  Multi-Task CNN Model for Attribute Prediction , 2015, IEEE Transactions on Multimedia.

[23]  Shanjun Mao,et al.  A deep learning framework for hyperspectral image classification using spatial pyramid pooling , 2016 .

[24]  Chunhong Pan,et al.  Ordinal pyramid pooling for rotation invariant object recognition , 2015, 2015 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).

[25]  Alicia Fornés,et al.  Handwritten Word Image Categorization with Convolutional Neural Networks and Spatial Pyramid Pooling , 2016, S+SSPR.

[26]  Xuefeng Chen,et al.  Dislocated Time Series Convolutional Neural Architecture: An Intelligent Fault Diagnosis Approach for Electric Machine , 2017, IEEE Transactions on Industrial Informatics.

[27]  Binqiang Chen,et al.  An Intelligent Gear Fault Diagnosis Methodology Using a Complex Wavelet Enhanced Convolutional Neural Network , 2017, Materials.

[28]  Fei-Fei Li,et al.  Object-Centric Spatial Pooling for Image Classification , 2012, ECCV.

[29]  Yu Wang,et al.  An intelligent fault diagnosis system for process plant using a functional HAZOP and DBN integrated methodology , 2015, Eng. Appl. Artif. Intell..

[30]  Guiming Mei,et al.  A Fault Diagnosis Method for Rolling Bearings Based on Feature Fusion of Multifractal Detrended Fluctuation Analysis and Alpha Stable Distribution , 2016 .

[31]  Jian Sun,et al.  Spatial Pyramid Pooling in Deep Convolutional Networks for Visual Recognition , 2014, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[32]  Wei Zhang,et al.  A New Deep Learning Model for Fault Diagnosis with Good Anti-Noise and Domain Adaptation Ability on Raw Vibration Signals , 2017, Sensors.

[33]  Bin Zhang,et al.  Rolling element bearing feature extraction and anomaly detection based on vibration monitoring , 2008, 2008 16th Mediterranean Conference on Control and Automation.

[34]  Zhang Yub Bearing Fault Diagnosis Based on Optimal Morlet Wavelet , 2009 .

[35]  Guangquan Zhao,et al.  Bearing Health Condition Prediction Using Deep Belief Network , 2017 .

[36]  Konstantinos Kamnitsas,et al.  Efficient multi‐scale 3D CNN with fully connected CRF for accurate brain lesion segmentation , 2016, Medical Image Anal..

[37]  Jian Ma,et al.  Rolling bearing fault diagnosis under variable conditions using LMD-SVD and extreme learning machine , 2015 .

[38]  Qiao Hu,et al.  Fault diagnosis of rotating machinery based on improved wavelet package transform and SVMs ensemble , 2007 .

[39]  Xiaojun Li,et al.  Hierarchical spatial pyramid max pooling based on SIFT features and sparse coding for image classification , 2013, IET Comput. Vis..

[40]  Qiang Zhou,et al.  Spatial Pyramid Pooling in Structured Sparse Representation for Flame Detection , 2016, ICIMCS.