Fundamental limits for sensor-based robot control
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Published:2023-08-24
Issue:12
Volume:42
Page:1051-1069
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ISSN:0278-3649
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Container-title:The International Journal of Robotics Research
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language:en
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Short-container-title:The International Journal of Robotics Research
Author:
Majumdar Anirudha1ORCID,
Mei Zhiting1ORCID,
Pacelli Vincent1
Affiliation:
1. Department of Mechanical and Aerospace Engineering, Princeton University, Princeton, NJ, USA
Abstract
Our goal is to develop theory and algorithms for establishing fundamental limits on performance imposed by a robot’s sensors for a given task. In order to achieve this, we define a quantity that captures the amount of task-relevant information provided by a sensor. Using a novel version of the generalized Fano's inequality from information theory, we demonstrate that this quantity provides an upper bound on the highest achievable expected reward for one-step decision-making tasks. We then extend this bound to multi-step problems via a dynamic programming approach. We present algorithms for numerically computing the resulting bounds, and demonstrate our approach on three examples: (i) the lava problem from the literature on partially observable Markov decision processes, (ii) an example with continuous state and observation spaces corresponding to a robot catching a freely-falling object, and (iii) obstacle avoidance using a depth sensor with non-Gaussian noise. We demonstrate the ability of our approach to establish strong limits on achievable performance for these problems by comparing our upper bounds with achievable lower bounds (computed by synthesizing or learning concrete control policies).
Funder
Office of Naval Research Global
National Science Foundation CAREER Award
Publisher
SAGE Publications
Subject
Applied Mathematics,Artificial Intelligence,Electrical and Electronic Engineering,Mechanical Engineering,Modeling and Simulation,Software