An Approach to Model-based Fault Detection in Industrial Measurement Systems with Application to Engine

Plamen Angelov, Veniero Giglio, Carlos Guardiola, Edwin Lughofer, Jose Manuel Lujan

Research output: Contribution to journalArticlepeer-review

Abstract

An approach to fault detection (FD) in industrial measurement systems is proposed in this paper which includes an identification strategy for early detection of appearance of a fault. This approach is model-based, i.e. nominal models are used which represent the fault-free state of the on-line measured process. This approach is also suitable for off-line FD. The framework that combines FD with isolation and correction (FDIC) is outlined in this paper. The proposed approach is characterised by automatic threshold determination, ability to analyse local properties of the models, and aggregation of different fault detection statements. The nominal models are built using data-driven and hybrid approaches, combining first principle models with on-line data-driven techniques. At the same time the models are transparent and interpretable. This novel approach is then verified on a number of real and simulated data sets of car engine test benches (both gasoline – Alfa Romeo JTS, and diesel – Caterpillar). It is demonstrated that the approach can work effectively in real industrial measurement systems with data of large dimensions in both on-line and off-line modes.
Original languageEnglish
Article number020
Pages (from-to)1809-1818
Number of pages10
JournalMeasurement Science and Technology
Volume17
Publication statusPublished - Jul 2006

Fields of science

  • 101 Mathematics

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