English

Data-efficient Auto-tuning with Bayesian Optimization: An Industrial Control Study

Systems and Control 2019-01-24 v2 Machine Learning Robotics

Abstract

Bayesian optimization is proposed for automatic learning of optimal controller parameters from experimental data. A probabilistic description (a Gaussian process) is used to model the unknown function from controller parameters to a user-defined cost. The probabilistic model is updated with data, which is obtained by testing a set of parameters on the physical system and evaluating the cost. In order to learn fast, the Bayesian optimization algorithm selects the next parameters to evaluate in a systematic way, for example, by maximizing information gain about the optimum. The algorithm thus iteratively finds the globally optimal parameters with only few experiments. Taking throttle valve control as a representative industrial control example, the proposed auto-tuning method is shown to outperform manual calibration: it consistently achieves better performance with a low number of experiments. The proposed auto-tuning framework is flexible and can handle different control structures and objectives.

Keywords

Cite

@article{arxiv.1812.06325,
  title  = {Data-efficient Auto-tuning with Bayesian Optimization: An Industrial Control Study},
  author = {Matthias Neumann-Brosig and Alonso Marco and Dieter Schwarzmann and Sebastian Trimpe},
  journal= {arXiv preprint arXiv:1812.06325},
  year   = {2019}
}

Comments

11 pages, 7 figures and 4 tables. To appear in IEEE Transactions on Control Systems Technology