Fault compensation by online updating of genetic algorithm-selected neural network model for model predictive control

This paper presents a methodology that combines a dual-net model and the model predictive control (MPC) to compensate degraded system performance caused by slow-paced faults/anomalies. The dual-net model is comprised of an offline and an online artificial neural networks (ANNs) along with a switch t...

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Published inSN applied sciences Vol. 1; no. 11; p. 1488
Main Authors Hong, Seong Hyeon, Cornelius, Jackson, Wang, Yi, Pant, Kapil
Format Journal Article
LanguageEnglish
Published Cham Springer International Publishing 01.11.2019
Springer Nature B.V
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ISSN2523-3963
2523-3971
2523-3971
DOI10.1007/s42452-019-1526-9

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Summary:This paper presents a methodology that combines a dual-net model and the model predictive control (MPC) to compensate degraded system performance caused by slow-paced faults/anomalies. The dual-net model is comprised of an offline and an online artificial neural networks (ANNs) along with a switch that selects one of them for MPC. Through selective online updating of weight parameters, the online ANN is able to accurately capture the fault-induced variations in system dynamics, and can be used for MPC reconfiguration and fault compensation. Specifically, the system dynamics is identified by training a multilayer perceptron (MLP). To improve the model accuracy, a meta-optimization approach based on the genetic algorithm is applied to optimize the MLP hyperparameters and the training algorithm. A dual-thread decision maker is proposed to manage the robust model updating scheme and the dual-net model switch. A case study of numerical simulation using an unmanned quadrotor is undertaken to verify the feasibility of the proposed method to mitigate performance degradation. Salient performance in the response prediction and control, subject to gradually growing anomaly is successfully demonstrated. Quantitatively, the proposed updating model outperforms the offline ANN model and yields 2× and 4× lower errors, respectively, for prediction and control of the system response.
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ISSN:2523-3963
2523-3971
2523-3971
DOI:10.1007/s42452-019-1526-9