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Performance-Driven Safe Bayesian Optimization for Intelligent Tuning of High-Order Cascade Systems | IEEE Journals & Magazine | IEEE Xplore

Performance-Driven Safe Bayesian Optimization for Intelligent Tuning of High-Order Cascade Systems


Impact Statement:Parameter adaptation of a controller affects the stability and transient performance of the closed-loop control system. However, for high-order complex cascade control sy...Show More

Abstract:

Automatic parameter tuning of high-order cascade controllers suffers from sampling inefficiency and strong couplings. This work presents a performance-driven, systematic,...Show More
Impact Statement:
Parameter adaptation of a controller affects the stability and transient performance of the closed-loop control system. However, for high-order complex cascade control systems (such as multirotor aerial vehicles, industrial processes, multijoint mechanical arms, etc.), their parameter tuning processes are challenging due to sampling inefficiency, strong couplings, and complex performance criteria. We propose a performance-driven intelligent tuner using constrained Bayesian optimization to deal with the problem of parameter tuning of the high-order cascade system. Furthermore, automatic tuning is improved in threeaspects, including security, sampling efficiency, and comprehensiveness. The security of Bayesian exploration is ensured by imposing composite hard parametric and soft performancemetric constraints. A hierarchical solving framework for constrained Bayesian optimization is proposed to enhance sampling exploitation and security by alternatively training the subsystems? parameters...

Abstract:

Automatic parameter tuning of high-order cascade controllers suffers from sampling inefficiency and strong couplings. This work presents a performance-driven, systematic, and safe intelligent parameter-tuning framework for high-order cascade systems. To achieve data-efficient and noise-robust hyperparameter calibration, an intelligent tuning framework based on Bayesian optimization is proposed to calibrate the control parameters from the buffer of performance-metric measurements. Furthermore, we improve the Bayesian-optimization-based framework in three aspects, involving effectiveness, security, and sampling efficiency. First, a comprehensive control performance assessment combining the error-integral and statistical performance criteria is designed to evaluate the cost of a sampling point in terms of final precision, response rapidity, and vibration. Meanwhile, the security of sampling exploration is heightened by imposing composite hard parametric and soft performance-metric (maximu...
Published in: IEEE Transactions on Artificial Intelligence ( Volume: 5, Issue: 2, February 2024)
Page(s): 801 - 813
Date of Publication: 14 April 2023
Electronic ISSN: 2691-4581

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I. Introduction

Designing a controller with a better performance relies on the selection of tuning parameters of the controller that may strongly impact the closed-loop stability (precision, robustness, etc.) and transient performance (maximum control input, overshoot, rapidity, etc.). In practice, these parameters are usually selected via trial-and-error experiments or heuristic-based strategies that rely on expensive closed-loop simulations or experiments, which can become prohibitive when system uncertainties have an effect on control performance [1]. Autotuner, as an intelligent system, seeks the optimum parameters of the controller by applying a data-driven performance optimization method [2], [3]. Automatic tuning (or autotuning) relieves the pain of manual tuning and has been successfully applied in numerous practical fields, such as industrial process control [2], [4], flight vehicles [5], and weak grids [6].

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