English

Improving CMA-ES Convergence Speed, Efficiency, and Reliability in Noisy Robot Optimization Problems

Neural and Evolutionary Computing 2026-01-15 v1

Abstract

Experimental robot optimization often requires evaluating each candidate policy for seconds to minutes. The chosen evaluation time influences optimization because of a speed-accuracy tradeoff: shorter evaluations enable faster iteration, but are also more subject to noise. Here, we introduce a supplement to the CMA-ES optimization algorithm, named Adaptive Sampling CMA-ES (AS-CMA), which assigns sampling time to candidates based on predicted sorting difficulty, aiming to achieve consistent precision. We compared AS-CMA to CMA-ES and Bayesian optimization using a range of static sampling times in four simulated cost landscapes. AS-CMA converged on 98% of all runs without adjustment to its tunable parameter, and converged 24-65% faster and with 29-76% lower total cost than each landscape's best CMA-ES static sampling time. As compared to Bayesian optimization, AS-CMA converged more efficiently and reliably in complex landscapes, while in simpler landscapes, AS-CMA was less efficient but equally reliable. We deployed AS-CMA in an exoskeleton optimization experiment and found the optimizer's behavior was consistent with expectations. These results indicate that AS-CMA can improve optimization efficiency in the presence of noise while minimally affecting optimization setup complexity and tuning requirements.

Keywords

Cite

@article{arxiv.2601.09594,
  title  = {Improving CMA-ES Convergence Speed, Efficiency, and Reliability in Noisy Robot Optimization Problems},
  author = {Russell M. Martin and Steven H. Collins},
  journal= {arXiv preprint arXiv:2601.09594},
  year   = {2026}
}

Comments

This is the authors' final accepted manuscript (post-peer-review, pre-publication). It has been accepted for publication in Evolutionary Computation on 12 Jan 2026. For associated code, see https://github.com/RussellMMartin/AS-CMA-ES

R2 v1 2026-07-01T09:04:30.959Z