Audio-based fault diagnosis for belt conveyor rollers

Abstract In order to monitor the roller states online running on the belt conveyor, one class of fault diagnosis systems based on audio is studied in this paper. Firstly, the audio data is collected from the belt conveyor by sensors, which is analyzed using the stacked sparse encoders and convolutional neural network. Secondly, the fault features are extracted from the audio data by using spectral clustering algorithm. Finally, a real fault diagnosis system is applied on the belt conveyor working in the coal preparation plant. The running result shows that the fault diagnosis system works very well for rollers fault detection with the accuracy rate 96.7%.

[1]  Prem Kumar Kalra,et al.  Audio Signature-Based Condition Monitoring of Internal Combustion Engine Using FFT and Correlation Approach , 2011, IEEE Transactions on Instrumentation and Measurement.

[2]  Gabriel Rilling,et al.  On empirical mode decomposition and its algorithms , 2003 .

[3]  Haidong Shao,et al.  Electric Locomotive Bearing Fault Diagnosis Using a Novel Convolutional Deep Belief Network , 2018, IEEE Transactions on Industrial Electronics.

[4]  Peyman Adibi,et al.  Multitask fuzzy Bregman co-clustering approach for clustering data with multisource features , 2017, Neurocomputing.

[5]  Biao Wang,et al.  LiftingNet: A Novel Deep Learning Network With Layerwise Feature Learning From Noisy Mechanical Data for Fault Classification , 2018, IEEE Transactions on Industrial Electronics.

[6]  Simon J. Doran,et al.  Stacked Autoencoders for Unsupervised Feature Learning and Multiple Organ Detection in a Pilot Study Using 4D Patient Data , 2013, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[7]  Miguel Angel Ferrer-Ballester,et al.  Review of Automatic Fault Diagnosis Systems Using Audio and Vibration Signals , 2014, IEEE Transactions on Systems, Man, and Cybernetics: Systems.

[8]  Guodong Guo,et al.  Content-based audio classification and retrieval by support vector machines , 2003, IEEE Trans. Neural Networks.

[9]  Yongwha Chung,et al.  Fault Detection and Diagnosis of Railway Point Machines by Sound Analysis , 2016, Sensors.

[10]  Qinghua Zhang,et al.  Fault Diagnosis of a Rolling Bearing Using Wavelet Packet Denoising and Random Forests , 2017, IEEE Sensors Journal.

[11]  Jie Gao,et al.  Unsupervised Locality-Preserving Robust Latent Low-Rank Recovery-Based Subspace Clustering for Fault Diagnosis , 2018, IEEE Access.

[12]  Zhenyuan Wang,et al.  A combined ANN and expert system tool for transformer fault diagnosis , 2000, 2000 IEEE Power Engineering Society Winter Meeting. Conference Proceedings (Cat. No.00CH37077).

[13]  Shungen Xiao,et al.  Nonlinear dynamic response of reciprocating compressor system with rub-impact fault caused by subsidence , 2019, Journal of Vibration and Control.

[14]  Krishna R. Pattipati,et al.  A hidden Markov model-based algorithm for fault diagnosis with partial and imperfect tests , 2000, IEEE Trans. Syst. Man Cybern. Part C.

[15]  Muqin Tian,et al.  Optimization of RBFneural network used in state recognition of coal flotation , 2018, J. Intell. Fuzzy Syst..

[16]  Adrián Rodríguez Ramos,et al.  An approach for fault diagnosis using a novel hybrid fuzzy clustering algorithm , 2018, 2018 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE).

[17]  Giovanni Sansavini,et al.  Combined Fault Location and Classification for Power Transmission Lines Fault Diagnosis With Integrated Feature Extraction , 2018, IEEE Transactions on Industrial Electronics.

[18]  Adam Glowacz,et al.  Diagnosis of stator faults of the single-phase induction motor using acoustic signals , 2017 .

[19]  C. Igathinathane,et al.  Machine vision methods based particle size distribution of ball- and gyro-milled lignite and hard coal , 2016 .

[20]  Lawrence R. Rabiner,et al.  An algorithm for determining the endpoints of isolated utterances , 1975, Bell Syst. Tech. J..

[21]  B. K. Panigrahi,et al.  Intelligent Decision Support System for Detection and Root Cause Analysis of Faults in Coal Mills , 2017, IEEE Transactions on Fuzzy Systems.

[22]  Francisco Herrera,et al.  A survey on data preprocessing for data stream mining: Current status and future directions , 2017, Neurocomputing.

[23]  Liang Gao,et al.  A New Convolutional Neural Network-Based Data-Driven Fault Diagnosis Method , 2018, IEEE Transactions on Industrial Electronics.

[24]  Dong Yue,et al.  Interval Type-2 Fuzzy Local Enhancement Based Rough K-Means Clustering Considering Imbalanced Clusters , 2020, IEEE Transactions on Fuzzy Systems.

[25]  Fei Dong,et al.  Rolling Bearing Fault Diagnosis Using Modified LFDA and EMD With Sensitive Feature Selection , 2018, IEEE Access.

[26]  Diego Cabrera,et al.  Feature ranking for multi-fault diagnosis of rotating machinery by using random forest and KNN , 2018, J. Intell. Fuzzy Syst..

[27]  René Vinicio Sánchez,et al.  A Systematic Review of Fuzzy Formalisms for Bearing Fault Diagnosis , 2019, IEEE Transactions on Fuzzy Systems.

[28]  Dongsheng Wu,et al.  Fault Diagnosis Based on K-Means Clustering and PNN , 2010, 2010 Third International Conference on Intelligent Networks and Intelligent Systems.

[29]  Daqiang Zhang,et al.  A computational model for ratbot locomotion based on cyborg intelligence , 2015, Neurocomputing.