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Safety-Aware Cascade Controller Tuning Using Constrained Bayesian Optimization

Authors :
König, Christopher
Khosravi, Mohammad
Maier, Markus
Smith, Roy S.
Rupenyan, Alisa
Lygeros, John
Publication Year :
2020

Abstract

This paper presents an automated, model-free, data-driven method for the safe tuning of PID cascade controller gains based on Bayesian optimization. The optimization objective is composed of data-driven performance metrics and modeled using Gaussian processes. We further introduce a data-driven constraint that captures the stability requirements from system data. Numerical evaluation shows that the proposed approach outperforms relay feedback autotuning and quickly converges to the global optimum, thanks to a tailored stopping criterion. We demonstrate the performance of the method in simulations and experiments. For experimental implementation, in addition to the introduced safety constraint, we integrate a method for automatic detection of the critical gains and extend the optimization objective with a penalty depending on the proximity of the current candidate points to the critical gains. The resulting automated tuning method optimizes system performance while ensuring stability and standardization<br />Comment: 9 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2010.15211
Document Type :
Working Paper