Title :
Causality Assignment and Model Approximation for Hybrid Bond Graph: Fault Diagnosis Perspectives
Author :
Low, Chang Boon ; Wang, Danwei ; Arogeti, Shai ; Zhang, Jing Bing
Author_Institution :
DSO Nat. Labs. (Kent Ridge), Singapore, Singapore
fDate :
7/1/2010 12:00:00 AM
Abstract :
Bond graph (BG) is an effective tool for modeling complex systems and it has been proven useful for fault detection and isolation (FDI) for continuous systems. BG provides the causal relations between system´s variables which allow FDI algorithms to be developed systematically from the graph. In the same spirit, Hybrid bond graph (HBG) is a BG-based modeling approach which provides an avenue to model complex hybrid systems. However, due to mode-varying causality properties of HBG, HBG has not been efficiently-exploited for fault diagnosis. In this work, a comprehensive study on the HBG from FDI viewpoints is presented. Some properties pertaining to the HBG are gained in the study. Based on these findings, a causality assignment procedure and a model approximation technique are developed to achieve a HBG with a desirable causality assignment that leads a unified description of system´s behavior. These results lay a foundation for quantitative FDI design for complex hybrid systems.
Keywords :
approximation theory; bond graphs; causality; continuous systems; fault diagnosis; large-scale systems; modelling; bond graph; causality assignment; complex continuous system; fault detection; fault diagnosis; fault isolation; hybrid system; mode-varying causality; model approximation; Causality assignment; fault diagnosis perspective; hybrid bond graph (HBG); hybrid systems;
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2009.2026731