A Novel Method for Early Gear Pitting Fault Diagnosis Using Stacked SAE and GBRBM

Research on data-driven fault diagnosis methods has received much attention in recent years. The deep belief network (DBN) is a commonly used deep learning method for fault diagnosis. In the past, when people used DBN to diagnose gear pitting faults, it was found that the diagnosis result was not good with continuous time domain vibration signals as direct inputs into DBN. Therefore, most researchers extracted features from time domain vibration signals as inputs into DBN. However, it is desirable to use raw vibration signals as direct inputs to achieve good fault diagnosis results. Therefore, this paper proposes a novel method by stacking spare autoencoder (SAE) and Gauss-Binary restricted Boltzmann machine (GBRBM) for early gear pitting faults diagnosis with raw vibration signals as direct inputs. The SAE layer is used to compress the raw vibration data and the GBRBM layer is used to effectively process continuous time domain vibration signals. Vibration signals of seven early gear pitting faults collected from a gear test rig are used to validate the proposed method. The validation results show that the proposed method maintains a good diagnosis performance under different working conditions and gives higher diagnosis accuracy compared to other traditional methods.

[1]  Haidong Shao,et al.  Rolling bearing fault diagnosis using an optimization deep belief network , 2015 .

[2]  Jie Liu,et al.  Fusion of Low-level Features with Stacked Autoencoder for Condition based Monitoring of Machines , 2018, 2018 IEEE International Conference on Prognostics and Health Management (ICPHM).

[3]  Jiawei Xiang,et al.  A data indicator-based deep belief networks to detect multiple faults in axial piston pumps , 2018, Mechanical Systems and Signal Processing.

[4]  Haidong Shao,et al.  A feature fusion deep belief network method for intelligent fault diagnosis of rotating machinery , 2018, J. Intell. Fuzzy Syst..

[5]  Zhiqiang Geng,et al.  A new deep belief network based on RBM with glial chains , 2018, Inf. Sci..

[6]  Murat Kulahci,et al.  Real-time fault detection and diagnosis using sparse principal component analysis , 2017, Journal of Process Control.

[7]  Fuad E. Alsaadi,et al.  Open-circuit fault diagnosis of power rectifier using sparse autoencoder based deep neural network , 2018, Neurocomputing.

[8]  Sajjad Amini,et al.  Sparse Autoencoders Using Non-smooth Regularization , 2018, 2018 26th European Signal Processing Conference (EUSIPCO).

[9]  Andrew D. Ball,et al.  An approach to fault diagnosis of reciprocating compressor valves using Teager-Kaiser energy operator and deep belief networks , 2014, Expert Syst. Appl..

[10]  Moncef Gabbouj,et al.  Real-Time Motor Fault Detection by 1-D Convolutional Neural Networks , 2016, IEEE Transactions on Industrial Electronics.

[11]  Zhiqiang Chen,et al.  Deep neural networks-based rolling bearing fault diagnosis , 2017, Microelectron. Reliab..

[12]  Tapani Raiko,et al.  Gaussian-Bernoulli restricted Boltzmann machines and automatic feature extraction for noise robust missing data mask estimation , 2013, 2013 IEEE International Conference on Acoustics, Speech and Signal Processing.

[13]  Jing Li,et al.  An enhancement denoising autoencoder for rolling bearing fault diagnosis , 2018, Measurement.

[14]  R. B. Pachori,et al.  Tunable-Q Wavelet Transform Based Multiscale Entropy Measure for Automated Classification of Epileptic EEG Signals , 2017 .

[15]  Haidong Shao,et al.  Rolling bearing fault diagnosis using adaptive deep belief network with dual-tree complex wavelet packet. , 2017, ISA transactions.

[16]  Byoungdoo Lee,et al.  Fault Detection and Diagnosis with Modelica Language using Deep Belief Network , 2015 .

[17]  Ran Zhang,et al.  Fault Diagnosis from Raw Sensor Data Using Deep Neural Networks Considering Temporal Coherence , 2017, Sensors.

[18]  Asoke K. Nandi,et al.  Effects of deep neural network parameters on classification of bearing faults , 2016, IECON 2016 - 42nd Annual Conference of the IEEE Industrial Electronics Society.

[19]  Haidong Shao,et al.  Rolling bearing fault feature learning using improved convolutional deep belief network with compressed sensing , 2018 .

[20]  Yee Whye Teh,et al.  A Fast Learning Algorithm for Deep Belief Nets , 2006, Neural Computation.

[21]  Jong-Myon Kim,et al.  Reliable Fault Diagnosis of Rotary Machine Bearings Using a Stacked Sparse Autoencoder-Based Deep Neural Network , 2018 .

[22]  Andreas Müller,et al.  Classification of Gait Phases Based on Bilateral EMG Data Using Support Vector Machines , 2018, 2018 7th IEEE International Conference on Biomedical Robotics and Biomechatronics (Biorob).

[23]  Mohammed Mahdi,et al.  Post-fault prediction of transient instabilities using stacked sparse autoencoder , 2018, Electric Power Systems Research.

[24]  Tao Zhang,et al.  A novel feature extraction method using deep neural network for rolling bearing fault diagnosis , 2015, The 27th Chinese Control and Decision Conference (2015 CCDC).

[25]  Na Zhao,et al.  A new fault diagnosis method based on deep belief network and support vector machine with Teager–Kaiser energy operator for bearings , 2017 .

[26]  Mohd Salman Leong,et al.  Differential evolution optimization for resilient stacked sparse autoencoder and its applications on bearing fault diagnosis , 2018, Measurement Science and Technology.

[27]  Tapani Raiko,et al.  Gaussian-Bernoulli deep Boltzmann machine , 2013, The 2013 International Joint Conference on Neural Networks (IJCNN).

[28]  Jun He,et al.  Unsupervised Fault Diagnosis of a Gear Transmission Chain Using a Deep Belief Network , 2017, Sensors.

[29]  Haidong Shao,et al.  Aircraft Fault Diagnosis Based on Deep Belief Network , 2017, 2017 International Conference on Sensing, Diagnostics, Prognostics, and Control (SDPC).

[30]  Xuejin Gao,et al.  Fault diagnosis of batch process based on denoising sparse auto encoder , 2018, 2018 33rd Youth Academic Annual Conference of Chinese Association of Automation (YAC).

[31]  ZhiQiang Chen,et al.  Gearbox Fault Identification and Classification with Convolutional Neural Networks , 2015 .

[32]  Xin Ye,et al.  A novel adaptive fault detection methodology for complex system using deep belief networks and multiple models: A case study on cryogenic propellant loading system , 2018, Neurocomputing.

[33]  Takehisa Yairi,et al.  A review on the application of deep learning in system health management , 2018, Mechanical Systems and Signal Processing.

[34]  Thierry Denoeux,et al.  EK-NNclus: A clustering procedure based on the evidential K-nearest neighbor rule , 2015, Knowl. Based Syst..

[35]  Jie Tao,et al.  Bearing Fault Diagnosis Based on Deep Belief Network and Multisensor Information Fusion , 2016 .

[36]  David He,et al.  Remaining Useful Life Prediction of Hybrid Ceramic Bearings Using an Integrated Deep Learning and Particle Filter Approach , 2017 .

[37]  Jun Wang,et al.  Fault Feature Extraction and Diagnosis of Gearbox Based on EEMD and Deep Briefs Network , 2017 .

[38]  Noureddine Zerhouni,et al.  Bearing Health Monitoring Based on Hilbert–Huang Transform, Support Vector Machine, and Regression , 2015, IEEE Transactions on Instrumentation and Measurement.

[39]  Enrico Zio,et al.  Artificial intelligence for fault diagnosis of rotating machinery: A review , 2018, Mechanical Systems and Signal Processing.

[40]  Haidong Shao,et al.  A novel deep autoencoder feature learning method for rotating machinery fault diagnosis , 2017 .

[41]  Haidong Shao,et al.  A novel method for intelligent fault diagnosis of rolling bearings using ensemble deep auto-encoders , 2018 .

[42]  Lukun Wang,et al.  Transformer fault diagnosis using continuous sparse autoencoder , 2016, SpringerPlus.

[43]  Abdelhamid Mellouk,et al.  Self-Diagnosis Technique for Virtual Private Networks Combining Bayesian Networks and Case-Based Reasoning , 2015, IEEE Transactions on Automation Science and Engineering.

[44]  Bo Zhu,et al.  A Novel Gaussian–Bernoulli Based Convolutional Deep Belief Networks for Image Feature Extraction , 2018, Neural Processing Letters.

[45]  Jun Gao,et al.  A cable fault recognition method based on a deep belief network , 2018, Comput. Electr. Eng..

[46]  Martin Valtierra-Rodriguez,et al.  The application of EMD-based methods for diagnosis of winding faults in a transformer using transient and steady state currents , 2018 .