Dimensionless Policies based on the Buckingham $\pi$ Theorem: Is This a Good Way to Generalize Numerical Results?
Alexandre Girard

TL;DR
This paper investigates using the Buckingham π theorem to create dimensionless control policies that can be transferred across similar physical systems, enhancing generalization and transfer learning in control tasks.
Contribution
It demonstrates that dimensionless policies reduce parameters and enable exact transfer between dimensionally similar systems, with theoretical and numerical validation.
Findings
Dimensionless policies involve fewer parameters.
Control policies can be transferred via scaling in similar systems.
Early results show promise for transfer learning in control algorithms.
Abstract
The answer to the question posed in the title is yes if the context (the list of variables defining the motion control problem) is dimensionally similar. This article explores the use of the Buckingham theorem as a tool to encode the control policies of physical systems into a more generic form of knowledge that can be reused in various situations. This approach can be interpreted as enforcing invariance to the scaling of the fundamental units in an algorithm learning a control policy. First, we show, by restating the solution to a motion control problem using dimensionless variables, that (1) the policy mapping involves a reduced number of parameters and (2) control policies generated numerically for a specific system can be transferred exactly to a subset of dimensionally similar systems by scaling the input and output variables appropriately. Those two generic theoretical…
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Taxonomy
TopicsComplex Systems and Decision Making · Reinforcement Learning in Robotics · Simulation Techniques and Applications
