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Fault Detection and Classification of an Electrohydrostatic Actuator Using a Neural Network Trained by the Smooth Variable Structure Filter

Abstract

A multilayered neural network is a multi-input, multioutput (MIMO) nonlinear system in which training can be regarded as a nonlinear parameter estimation problem by estimating the network weights. In this paper, the relatively new smooth variable structure filter (SVSF) is used for the training of a nonlinear multilayered feed forward network. The SVSF is a recursive sliding mode parameter and state estimator that has a predictor-corrector form. Using a switching gain, a corrective term is calculated to force the network weights to converge to within a neighbourhood of the optimal weight values. SVSF-based trained neural networks are used to classify faults on the input and output data of an electrohydrostatic actuator (EHA). Two faults are induced in the system: friction and leakage. Furthermore, a comparative study between the popular back propagation method, the extended Kalman filter (EKF), and the SVSF is presented.

Authors

Ahmed RM; Gadsden SA; Elsayed M; Habibi SR

Publication Date

June 9, 2011

Name of conference

23rd Canadian Congress of Applied Mechanics (CANCAM)

Conference place

Vancouver, British Columbia

Conference start date

June 5, 2011

Conference end date

June 9, 2011

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