Data-Driven and Adaptive Statistical Residual Evaluation for Fault Detection with an Automotive Application
2014 (English)In: Mechanical systems and signal processing, ISSN 0888-3270, E-ISSN 1096-1216, Vol. 45, no 1, 170-192 p.Article in journal (Refereed) Published
An important step in model-based fault detection is residual evaluation, where residuals are evaluated with the aim to detect changes in their behavior caused by faults. To handle residuals subject to time-varying uncertainties and disturbances, which indeed are present in practice, a novel statistical residual evaluation approach is presented. The main contribution is to base the residual evaluation on an explicit comparison of the probability distribution of the residual, estimated online using current data, with a no-fault residual distribution. The no-fault distribution is based on a set of a-priori known no-fault residual distributions, and is continuously adapted to the current situation. As a second contribution, a method is proposed for estimating the required set of no-fault residual distributions off-line from no-fault training data.The proposed residual evaluation approach is evaluated with measurement data on a residual for diagnosis of the gas-flow system of a Scania truck diesel engine. Results show that small faults can be reliable detected with the proposed approach in cases where regular methods fail.
Place, publisher, year, edition, pages
Elsevier, 2014. Vol. 45, no 1, 170-192 p.
Engineering and Technology
IdentifiersURN: urn:nbn:se:liu:diva-77190DOI: 10.1016/j.ymssp.2013.11.002ISI: 000331351700012OAI: oai:DiVA.org:liu-77190DiVA: diva2:525422