Litcius/Paper detail

Supervised learning through physical changes in a mechanical system

Menachem Stern, Chukwunonso Arinze, Leron Perez, Stephanie E. Palmer, Arvind Murugan

2020Proceedings of the National Academy of Sciences66 citationsDOIOpen Access PDF

Abstract

Mechanical metamaterials are usually designed to show desired responses to prescribed forces. In some applications, the desired force-response relationship is hard to specify exactly, but examples of forces and desired responses are easily available. Here, we propose a framework for supervised learning in thin, creased sheets that learn the desired force-response behavior by physically experiencing training examples and then, crucially, respond correctly (generalize) to previously unseen test forces. During training, we fold the sheet using training forces, prompting local crease stiffnesses to change in proportion to their experienced strain. We find that this learning process reshapes nonlinearities inherent in folding a sheet so as to show the correct response for previously unseen test forces. We show the relationship between training error, test error, and sheet size (model complexity) in learning sheets and compare them to counterparts in machine-learning algorithms. Our framework shows how the rugged energy landscape of disordered mechanical materials can be sculpted to show desired force-response behaviors by a local physical learning process.

Topics & Concepts

PsychologyComputer scienceRobot Manipulation and LearningRobotic Mechanisms and DynamicsDynamics and Control of Mechanical Systems