Physics-informed reinforcement learning via probabilistic co-adjustment functions
Nat Wannawas, A. Aldo Faisal

TL;DR
This paper introduces co-kriging and ridge regression adjustments to enhance reinforcement learning by efficiently combining simulation models with real-world data, improving adaptation and uncertainty quantification in complex systems.
Contribution
It proposes novel co-kriging and ridge regression adjustment methods that integrate simple simulation models with real data for more efficient and accurate reinforcement learning.
Findings
More accurate uncertainty quantification than traditional methods
Effective adaptation of simple models to individual system instances
Successful control of a biomechanical human arm with minimal data
Abstract
Reinforcement learning of real-world tasks is very data inefficient, and extensive simulation-based modelling has become the dominant approach for training systems. However, in human-robot interaction and many other real-world settings, there is no appropriate one-model-for-all due to differences in individual instances of the system (e.g. different people) or necessary oversimplifications in the simulation models. This requires two approaches: 1. either learning the individual system's dynamics approximately from data which requires data-intensive training or 2. using a complete digital twin of the instances, which may not be realisable in many cases. We introduce two approaches: co-kriging adjustments (CKA) and ridge regression adjustment (RRA) as novel ways to combine the advantages of both approaches. Our adjustment methods are based on an auto-regressive AR1 co-kriging model that…
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Taxonomy
TopicsSports Performance and Training · Muscle activation and electromyography studies · Mental Health Research Topics
