A Unified Fault Diagnosis Approach Utilizing Filtering and Adaptive Approximation for Process and Sensor Faults in a Class of Continuous-Time Nonlinear Systems
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS
Abstract
This paper develops an integrated filtering and
adaptive approximation-based approach for fault diagnosis of
process and sensor faults in a class of continuous-time nonlinear
systems with modeling uncertainties and measurement noise. The
proposed approach integrates learning with filtering techniques
to derive tight detection thresholds, which is accomplished in two
ways: 1) by learning the modeling uncertainty through adaptive
approximation methods and 2) by using filtering for dampening
measurement noise. Upon the detection of a fault, two estimation
models, one for process and the other for sensor faults, are
initiated in order to identify the type of fault. Each estimation
model utilizes learning to estimate the potential fault that has
occurred, and adaptive isolation thresholds for each estimation
model are designed. The fault type is deduced based on an
exclusion-based logic, and fault detectability and identification
conditions are rigorously derived, characterizing quantitatively
the class of faults that can be detected and identified by
the proposed scheme. Finally, simulation results are used to
demonstrate the effectiveness of the proposed approach.