2021 Annual Meeting
(429c) Condition-Based Sensor Health Monitoring Using Slow Feature Analysis
In this work, a condition-based maintenance (CbM) framework for real-time sensor health monitoring is proposed and implemented in a biomanufacturing process. In this CbM framework, a Slow Feature Analysis (SFA)-based approach is proposed to diagnose sensor health, detect sensor failures, i.e. slow and fast drifts, dropout, oscillation, and fluctuations. By using SFA, input signals can be decomposed into slowly and fast-varying features [4]. Different types of failures can be detected and prognosticated by monitoring different features according to the faultsâ slowness in nature. The propose approach fully automates the selection of featureâs slowness for different faults and calculate a comprehensive health metric for each sensor, hence provide intelligent and flexible maintenance guides to operations in real time and greatly improve the operation efficiency and reduce OPEX. The proposed CbM strategy is deployed as part of the corporate sensor-health management system, and its efficacy is verified in a cell culture process.
References:
[1] Prajapati, A., Bechtel, J., and Ganesan, S. (2012). Condition based maintenance: a survey. Journal of Quality in Maintenance Engineering, 18(4), 384-400.
[2] Yam, R., Tse, P., Li, L., and Tu, P. (2001). Intelligent predictive decision support system for condition-based maintenance. The International Journal of Advanced Manufacturing Technology, 17(5), 383-391.
[3] Tulsyan, A., Garvin, C. and Undey, C. (2020) Condition-based sensor-health monitoring and maintenance in biomanufacturing. IFAC World Congress.
[4] Wiskott, L. and Sejnowski, T.J. (2002). Slow feature analysis: Unsupervised learning of invariances. Neural computation, 14(4), 715-770.