4.6 Article

Fault Detection for Nonlinear Process With Deterministic Disturbances: A Just-In-Time Learning Based Data Driven Method

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 47, Issue 11, Pages 3649-3657

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2016.2574754

Keywords

Data driven; deterministic disturbance; fault detection; nonlinear system; sewage treatment process (STP)

Funding

  1. Natural Science Foundation of China [61304002, 61304102, 61304003]
  2. Program for New Century Excellent Tallents in University [NECT-13-0696]
  3. Program for Liaoning Innovative Research Team in University [LT2013023]
  4. Program for Liaoning Excellent Talents in University [LR2013053]
  5. Education Department of Liaoning Province through the General Project Research [L2013424]

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Data-driven fault detection plays an important role in industrial systems due to its applicability in case of unknown physical models. In fault detection, disturbances must be taken into account as an inherent characteristic of processes. Nevertheless, fault detection for nonlinear processes with deterministic disturbances still receive little attention, especially in data-driven field. To solve this problem, a just-in-time learning-based data-driven (JITL-DD) fault detection method for nonlinear processes with deterministic disturbances is proposed in this paper. JITL-DD employs JITL scheme for process description with local model structures to cope with processes dynamics and nonlinearity. The proposed method provides a data-driven fault detection solution for nonlinear processes with deterministic disturbances, and owns inherent online adaptation and high accuracy of fault detection. Two nonlinear systems, i.e., a numerical example and a sewage treatment process benchmark, are employed to show the effectiveness of the proposed method.

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