On the use of simulation in robotics: Opportunities, challenges, and suggestions for moving forward

Author:

Choi HeeSun,Crump CindyORCID,Duriez ChristianORCID,Elmquist AsherORCID,Hager Gregory,Han David,Hearl FrankORCID,Hodgins Jessica,Jain Abhinandan,Leve Frederick,Li ChenORCID,Meier Franziska,Negrut DanORCID,Righetti LudovicORCID,Rodriguez AlbertoORCID,Tan Jie,Trinkle JeffORCID

Abstract

The last five years marked a surge in interest for and use of smart robots, which operate in dynamic and unstructured environments and might interact with humans. We posit that well-validated computer simulation can provide a virtual proving ground that in many cases is instrumental in understanding safely, faster, at lower costs, and more thoroughly how the robots of the future should be designed and controlled for safe operation and improved performance. Against this backdrop, we discuss how simulation can help in robotics, barriers that currently prevent its broad adoption, and potential steps that can eliminate some of these barriers. The points and recommendations made concern the following simulation-in-robotics aspects: simulation of the dynamics of the robot; simulation of the virtual world; simulation of the sensing of this virtual world; simulation of the interaction between the human and the robot; and, in less depth, simulation of the communication between robots. This Perspectives contribution summarizes the points of view that coalesced during a 2018 National Science Foundation/Department of Defense/National Institute for Standards and Technology workshop dedicated to the topic at hand. The meeting brought together participants from a range of organizations, disciplines, and application fields, with expertise at the intersection of robotics, machine learning, and physics-based simulation.

Funder

National Science Foundation

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

Reference56 articles.

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