Planning under uncertainty for safe robot exploration using Gaussian process prediction
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Published:2024-08-28
Issue:7
Volume:48
Page:
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ISSN:0929-5593
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Container-title:Autonomous Robots
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language:en
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Short-container-title:Auton Robot
Author:
Stephens AlexORCID, Budd MatthewORCID, Staniaszek MichalORCID, Casseau Benoit, Duckworth PaulORCID, Fallon Maurice, Hawes NickORCID, Lacerda BrunoORCID
Abstract
AbstractThe exploration of new environments is a crucial challenge for mobile robots. This task becomes even more complex with the added requirement of ensuring safety. Here, safety refers to the robot staying in regions where the values of certain environmental conditions (such as terrain steepness or radiation levels) are within a predefined threshold. We consider two types of safe exploration problems. First, the robot has a map of its workspace, but the values of the environmental features relevant to safety are unknown beforehand and must be explored. Second, both the map and the environmental features are unknown, and the robot must build a map whilst remaining safe. Our proposed framework uses a Gaussian process to predict the value of the environmental features in unvisited regions. We then build a Markov decision process that integrates the Gaussian process predictions with the transition probabilities of the environmental model. The Markov decision process is then incorporated into an exploration algorithm that decides which new region of the environment to explore based on information value, predicted safety, and distance from the current position of the robot. We empirically evaluate the effectiveness of our framework through simulations and its application on a physical robot in an underground environment.
Funder
Engineering and Physical Sciences Research Council Amazon Web Services UK Research and Innovation
Publisher
Springer Science and Business Media LLC
Reference52 articles.
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