A gray-box neural network-based model identification and fault estimation scheme for nonlinear dynamic systems


Autoria(s): Cen, Zhaohui; Wei, Jiaolong; Jiang, Rui
Data(s)

23/07/2013

Resumo

A novel gray-box neural network model (GBNNM), including multi-layer perception (MLP) neural network (NN) and integrators, is proposed for a model identification and fault estimation (MIFE) scheme. With the GBNNM, both the nonlinearity and dynamics of a class of nonlinear dynamic systems can be approximated. Unlike previous NN-based model identification methods, the GBNNM directly inherits system dynamics and separately models system nonlinearities. This model corresponds well with the object system and is easy to build. The GBNNM is embedded online as a normal model reference to obtain the quantitative residual between the object system output and the GBNNM output. This residual can accurately indicate the fault offset value, so it is suitable for differing fault severities. To further estimate the fault parameters (FPs), an improved extended state observer (ESO) using the same NNs (IESONN) from the GBNNM is proposed to avoid requiring the knowledge of ESO nonlinearity. Then, the proposed MIFE scheme is applied for reaction wheels (RW) in a satellite attitude control system (SACS). The scheme using the GBNNM is compared with other NNs in the same fault scenario, and several partial loss of effect (LOE) faults with different severities are considered to validate the effectiveness of the FP estimation and its superiority.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/74808/

Publicador

World Scientific Publishing

Relação

http://eprints.qut.edu.au/74808/1/IJNS201306145.pdf

DOI:10.1142/S0129065713500251

Cen, Zhaohui, Wei, Jiaolong, & Jiang, Rui (2013) A gray-box neural network-based model identification and fault estimation scheme for nonlinear dynamic systems. International Journal of Neural Systems, 23(6), pp. 1350025-1.

Direitos

Copyright 2013 World Scientific Publishing

Fonte

School of Civil Engineering & Built Environment; Science & Engineering Faculty; Smart Transport Research Centre

Palavras-Chave #090000 ENGINEERING #090100 AEROSPACE ENGINEERING #090600 ELECTRICAL AND ELECTRONIC ENGINEERING #Model identification and fault estimation #nonlinear dynamic systems #gray-box neural-network model #extended state observer #reaction wheel
Tipo

Journal Article