Automatic Tuning and Selection of Whole-Body Controllers

2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2022)

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摘要
Designing controllers for complex robots such as humanoids is not an easy task. Often, researchers hand-tune controllers, but this is a time-consuming approach that yields a single controller which cannot generalize well to varied tasks. This work presents a method which uses the NSGA-II multi-objective optimization algorithm with various training trajectories to output a diverse Pareto set of well-functioning controller weights and gains. The best of these are shown to also work well on the real Talos robot. The learned Pareto front is then used in a Bayesian optimization (BO) algorithm both as a search space and as a source of prior information in the initial mean estimate. This combined learning approach, leveraging the two optimization methods together, finds a suitable parameter set for a new trajectory within 20 trials and outperforms both BO in the continuous parameter search space and random search along the precomputed Pareto front. The few trials required for this formulation of BO suggest that it could feasibly be applied on the physical robot using a Pareto front generated in simulation.
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关键词
automatic tuning,Bayesian optimization,combined learning approach,complex robots,continuous parameter search space,controller weights,diverse Pareto set,hand-tune controllers,humanoids,initial mean estimate,NSGA-II multiobjective optimization algorithm,physical robot,precomputed Pareto front,random search,single controller,Talos robot,time-consuming approach,training trajectories,whole-body controllers
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