Regular Papers

International Journal of Control, Automation, and Systems 2024; 22(9): 2934-2941

https://doi.org/10.1007/s12555-023-0695-x

© The International Journal of Control, Automation, and Systems

Evaluating MR-GPR and MR-NN: An Exploration of Data-driven Control Methods for Nonlinear Systems

Hyuntae Kim, Hamin Chang, and Hyungbo Shim*

Seoul National University

Abstract

This paper addresses the challenge of data-driven control of nonlinear systems, focusing on the limitations and capabilities of model reference Gaussian process regression (MR-GPR) and its evolved counterpart, model reference neural networks (MR-NN). MR-GPR, based on Gaussian processes renowned for their adaptability to diverse data structures, encounters scalability issues especially when handling large datasets. To address these limitations, this paper introduces MR-NN, an extension of MR-GPR, leveraging neural networks (NN) to manage large datasets and capture complex nonlinear dynamics effectively. We present a comprehensive evaluation of both methods through a classical control problem of the inverted pendulum, a system well-recognized for its nonlinear behavior. Numerical experiments are conducted to compare the methods in terms of control performance, computational efficiency, and reliability.

Keywords Data-driven control, Gaussian process, neural netowrk, nonlinear system, stability, system identification.

Article

Regular Papers

International Journal of Control, Automation, and Systems 2024; 22(9): 2934-2941

Published online September 1, 2024 https://doi.org/10.1007/s12555-023-0695-x

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

Evaluating MR-GPR and MR-NN: An Exploration of Data-driven Control Methods for Nonlinear Systems

Hyuntae Kim, Hamin Chang, and Hyungbo Shim*

Seoul National University

Abstract

This paper addresses the challenge of data-driven control of nonlinear systems, focusing on the limitations and capabilities of model reference Gaussian process regression (MR-GPR) and its evolved counterpart, model reference neural networks (MR-NN). MR-GPR, based on Gaussian processes renowned for their adaptability to diverse data structures, encounters scalability issues especially when handling large datasets. To address these limitations, this paper introduces MR-NN, an extension of MR-GPR, leveraging neural networks (NN) to manage large datasets and capture complex nonlinear dynamics effectively. We present a comprehensive evaluation of both methods through a classical control problem of the inverted pendulum, a system well-recognized for its nonlinear behavior. Numerical experiments are conducted to compare the methods in terms of control performance, computational efficiency, and reliability.

Keywords: Data-driven control, Gaussian process, neural netowrk, nonlinear system, stability, system identification.

IJCAS
September 2024

Vol. 22, No. 9, pp. 2673~2953

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