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Fault detection and identification relying on set-membership identifiability
Authors:Carine Jauberthie  Nathalie Verdière  Louise Travé-Massuyès
Affiliation:1. CNRS, LAAS, 7 Avenue du Colonel Roche, F-31400 Toulouse, France;2. Université de Toulouse, UPS, LAAS, F-31400 Toulouse, France;3. Université du Havre, 25 rue Philippe Lebon, BP 540, 76058 Le Havre Cedex, France;4. Université de Toulouse, LAAS, F-31400 Toulouse, France;1. School of Electrical Engineering, Yanshan University, Qinhuangdao, 066004, China;2. Tandon School of Engineering, New York University, 11201 NY, USA;3. School of Electronic and Electric Engineering, Shanghai Jiaotong University, Shanghai 200240, China
Abstract:Identifiability is the property that a mathematical model must satisfy to guarantee an unambiguous mapping between its parameters and the output trajectories. It is of prime importance when parameters must be estimated from experimental data representing input–output behavior and clearly when parameter estimation is used for fault detection and identification. Definitions of identifiability and methods for checking this property for linear and nonlinear systems are now well established and, interestingly, some scarce works (Braems et al., 2001, Jauberthie et al., 2011) have provided identifiability definitions and numerical tests in a bounded-error context. This paper resumes and better formalizes the two complementary definitions of set-membership identifiability and μ-set-membership identifiability of Jauberthie et al. (2011) and presents a method applicable to nonlinear systems for checking them. This method is based on differential algebra and makes use of relations linking the observations, the inputs and the unknown parameters of the system. Using these results, a method for fault detection and identification is proposed. The relations mentioned above are used to estimate the uncertain parameters of the model. By building the parameter estimation scheme on the analysis of identifiability, the solution set is guaranteed to reduce to one connected set, avoiding this way the pessimism of classical set-membership estimation methods. Fault detection and identification are performed at once by checking the estimated values against the parameter nominal ranges. The method is illustrated with an example describing the capacity of a macrophage mannose receptor to endocytose a specific soluble macromolecule.
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