powered by:
MagicWare, s.r.o.

Diagnosis of continuous dynamic systems: integrating consistency-based diagnosis with machine-learning techniques

Authors:Pulido Belarmino, Universidad de Valladolid, Spain
Rodriguez Diez Juan J., Universidad de Burgos, Spain
Alonso González Carlos, Universidad de Valladolid, Spain
Prieto Izquierdo Oscar J., Universidad de Valladolid, Spain
Gelso Esteban R., UNCPBA, Argentina
Topic:6.4 Safeprocess
Session:Fusion of Analytical and Soft Computing Methods in Fault Diagnosis
Keywords: Fault Diagnosis, Model-based Diagnosis, Machine Learning

Abstract

This paper describes an integrated approach to diagnosis of complex dynamic systems, combining model based diagnosis with machine learning techniques, proposing a simple framework to make them cooperate, hence improving the diagnosis capabilities of each individual method.First step in the diagnosis process resorts to consistency-based diagnosis, via possible conflicts,which allows fault detection and localization without prior knowledge of the device fault modes. In the second step, a classification system, obtained via machine learning techniques, is used topropose a ranked sequence of fault modes, coherent with the previous localization step. This cycle iterates in time, generating more focused and precise diagnosis as new data are available.A laboratory plant has been built to test this proposal. Simulation results are shown for a totalnumber of 14 different faults.