Regular Papers

International Journal of Control, Automation and Systems 2013; 11(2): 377-388

Published online March 27, 2013

https://doi.org/10.1007/s12555-012-0022-4

© The International Journal of Control, Automation, and Systems

A Robust Fault Diagnosis and Accommodation Scheme for Robot Manipulators

Mien Van, Hee-Jun Kang*, Young-Soo Suh, and Kyoo-Sik Shin

University of Ulsan, Korea

Abstract

This paper investigates an algorithm for robust fault diagnosis (FD) in uncertain robotic systems by using a neural sliding mode (NSM) based observer strategy. A step by step design procedure will be discussed to determine the accuracy of fault estimation. First, an uncertainty observer is designed to estimate the uncertainties based on a first neural network (NN1). Then, based on the estimated uncertainties, a fault diagnosis scheme will be designed by using a NSM observer which consists of both a second neural network (NN2) and a second order sliding mode (SOSM), connected serially. This type of observer scheme can reduce the chattering of sliding mode (SM) and guarantee finite time convergence of the neural network (NN). The obtained fault estimations are used for fault isolation as well as fault accommodation to self-correct the failure systems. The computer simulation results for a PUMA560 robot are shown to verify the effectiveness of the proposed strategy.

Keywords Fault accommodation, fault detection, fault diagnosis, neural network, nonlinear model, sliding mode observer.

Article

Regular Papers

International Journal of Control, Automation and Systems 2013; 11(2): 377-388

Published online April 1, 2013 https://doi.org/10.1007/s12555-012-0022-4

Copyright © The International Journal of Control, Automation, and Systems.

A Robust Fault Diagnosis and Accommodation Scheme for Robot Manipulators

Mien Van, Hee-Jun Kang*, Young-Soo Suh, and Kyoo-Sik Shin

University of Ulsan, Korea

Abstract

This paper investigates an algorithm for robust fault diagnosis (FD) in uncertain robotic systems by using a neural sliding mode (NSM) based observer strategy. A step by step design procedure will be discussed to determine the accuracy of fault estimation. First, an uncertainty observer is designed to estimate the uncertainties based on a first neural network (NN1). Then, based on the estimated uncertainties, a fault diagnosis scheme will be designed by using a NSM observer which consists of both a second neural network (NN2) and a second order sliding mode (SOSM), connected serially. This type of observer scheme can reduce the chattering of sliding mode (SM) and guarantee finite time convergence of the neural network (NN). The obtained fault estimations are used for fault isolation as well as fault accommodation to self-correct the failure systems. The computer simulation results for a PUMA560 robot are shown to verify the effectiveness of the proposed strategy.

Keywords: Fault accommodation, fault detection, fault diagnosis, neural network, nonlinear model, sliding mode observer.

IJCAS
March 2025

Vol. 23, No. 3, pp. 683~972

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