Development and Realization of Changepoint Analysis for the Detection of Emerging Faults on Industrial Systems

An online two-dimensional changepoint detection algorithm for sensor-based fault detection is proposed. The methodology consists of a differential detector, which looks for characteristics across datasets at a particular instant, and a standard detector, which when combined can identify anomalies and meaningful changepoints while maintaining low rates of false-alarm generation. A key aspect of changepoint detection methodologies is the setting of relevant thresholds, which are typically based on empirical trial and error. Here, a statistical methodology is adopted, which provides the engineer with a tradeoff between correct detection and false-alarm rates, thereby informing decision making at the design stage. The efficacy of the techniques is demonstrated through application to two industry case studies of fault detection on industrial gas turbines, and are shown to readily provide an early warning indicator of impending failures.

[1]  Behnaam Aazhang,et al.  Online Bayesian change point detection algorithms for segmentation of epileptic activity , 2013, 2013 Asilomar Conference on Signals, Systems and Computers.

[2]  Madan G. Singh,et al.  Fault detection & reliability : knowledge based & other approaches : proceedings of the Second European Workshop on Fault Diagnostics, Reliability and Related Knowledge Based Approaches, UMIST, Manchester, April 6-8, 1987 , 1987 .

[3]  Jinglei Lv,et al.  Exploring functional brain dynamics via a Bayesian connectivity change point model , 2014, 2014 IEEE 11th International Symposium on Biomedical Imaging (ISBI).

[4]  Bhaskar D. Rao,et al.  Sparse Signal Recovery With Temporally Correlated Source Vectors Using Sparse Bayesian Learning , 2011, IEEE Journal of Selected Topics in Signal Processing.

[5]  David L. Buckeridge,et al.  Application of change point analysis to daily influenza-like illness emergency department visits , 2012, J. Am. Medical Informatics Assoc..

[6]  Vernon J. Lawhern,et al.  Detecting alpha spindle events in EEG time series using adaptive autoregressive models , 2013, BMC Neuroscience.

[7]  David Thomas,et al.  The Art in Computer Programming , 2001 .

[8]  Mauro Hugo Mathias,et al.  Rotor failure detection of induction motors by wavelet transform and Fourier transform in non-stationary condition , 2015 .

[9]  J. Andrew Bagnell,et al.  Anytime online novelty and change detection for mobile robots , 2011, J. Field Robotics.

[10]  Mohammad Ahsanullah,et al.  An Introduction to Order Statistics , 2013 .

[11]  David A. Clifton,et al.  A review of novelty detection , 2014, Signal Process..

[12]  Sachin C. Patwardhan,et al.  A unified framework for fault detection and isolation of sensor and actuator biases in linear time invariant systems using marginalized likelihood ratio test with uniform priors , 2013 .

[13]  Eric Rogers,et al.  Failure identification for linear repetitive processes , 2015, Multidimens. Syst. Signal Process..

[14]  M. Basseville,et al.  Sequential Analysis: Hypothesis Testing and Changepoint Detection , 2014 .

[15]  Wei Ning,et al.  An Information-Based Approach to the Change-Point Problem of the Noncentral Skew t Distribution with Applications to Stock Market Data , 2014 .

[16]  J. J. Shen,et al.  Change-point model on nonhomogeneous Poisson processes with application in copy number profiling by next-generation DNA sequencing , 2012, 1206.6627.

[17]  B. Welford Note on a Method for Calculating Corrected Sums of Squares and Products , 1962 .

[18]  Jian Li,et al.  Directional change‐point detection for process control with multivariate categorical data , 2013 .