Teach-and-repeat path following for an autonomous underwater vehicle
This paper presents a teach-and-repeat path-following method for an autonomous underwater vehicle (AUV) navigating long distances in environments where external navigation aides are denied. This method utilizes sonar images to construct a series of reference views along a path, stored as a topologic...
Main Authors: | , , |
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Format: | Article in Journal/Newspaper |
Language: | unknown |
Published: |
eScholarship, University of California
2018
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Subjects: | |
Online Access: | https://escholarship.org/uc/item/4s73v53p |
_version_ | 1821626331798962176 |
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author | King, P Vardy, A Forrest, AL |
author_facet | King, P Vardy, A Forrest, AL |
author_sort | King, P |
collection | University of California: eScholarship |
description | This paper presents a teach-and-repeat path-following method for an autonomous underwater vehicle (AUV) navigating long distances in environments where external navigation aides are denied. This method utilizes sonar images to construct a series of reference views along a path, stored as a topological map. The AUV can then renavigate along this path, either to return to the start location or to repeat the route. Utilizing unique assumptions about the sonar image-generation process, this system exhibits robust image-matching capabilities, providing observations to a discrete Bayesian filter that maintains an estimate of progress along the path. Image-matching also provides an estimate of offset from the path, allowing the AUV to correct its heading and effectively close the gap. Over a series of field trials, this system demonstrated online control of an AUV in the ocean environment of Holyrood Arm, Newfoundland and Labrador, Canada. The system was implemented on an International Submarine Engineering Ltd. Explorer AUV and performed multiple path completions over both a 1 and 5 km track. These trials illustrated an AUV operating in a fully autonomous mode, in which navigation was driven solely by sensor feedback and adaptive control. Path-following performance was as desired, with the AUV maintaining close offset to the path. |
format | Article in Journal/Newspaper |
genre | Newfoundland |
genre_facet | Newfoundland |
geographic | Canada Newfoundland |
geographic_facet | Canada Newfoundland |
id | ftcdlib:oai:escholarship.org/ark:/13030/qt4s73v53p |
institution | Open Polar |
language | unknown |
op_collection_id | ftcdlib |
op_coverage | 748 - 763 |
op_relation | qt4s73v53p https://escholarship.org/uc/item/4s73v53p |
op_rights | public |
op_source | Journal of Field Robotics, vol 35, iss 5 |
publishDate | 2018 |
publisher | eScholarship, University of California |
record_format | openpolar |
spelling | ftcdlib:oai:escholarship.org/ark:/13030/qt4s73v53p 2025-01-16T23:24:55+00:00 Teach-and-repeat path following for an autonomous underwater vehicle King, P Vardy, A Forrest, AL 748 - 763 2018-08-01 application/pdf https://escholarship.org/uc/item/4s73v53p unknown eScholarship, University of California qt4s73v53p https://escholarship.org/uc/item/4s73v53p public Journal of Field Robotics, vol 35, iss 5 extreme environments marine robotics planning underwater robotics Industrial Engineering & Automation Artificial Intelligence and Image Processing Electrical and Electronic Engineering Mechanical Engineering article 2018 ftcdlib 2021-04-16T07:10:28Z This paper presents a teach-and-repeat path-following method for an autonomous underwater vehicle (AUV) navigating long distances in environments where external navigation aides are denied. This method utilizes sonar images to construct a series of reference views along a path, stored as a topological map. The AUV can then renavigate along this path, either to return to the start location or to repeat the route. Utilizing unique assumptions about the sonar image-generation process, this system exhibits robust image-matching capabilities, providing observations to a discrete Bayesian filter that maintains an estimate of progress along the path. Image-matching also provides an estimate of offset from the path, allowing the AUV to correct its heading and effectively close the gap. Over a series of field trials, this system demonstrated online control of an AUV in the ocean environment of Holyrood Arm, Newfoundland and Labrador, Canada. The system was implemented on an International Submarine Engineering Ltd. Explorer AUV and performed multiple path completions over both a 1 and 5 km track. These trials illustrated an AUV operating in a fully autonomous mode, in which navigation was driven solely by sensor feedback and adaptive control. Path-following performance was as desired, with the AUV maintaining close offset to the path. Article in Journal/Newspaper Newfoundland University of California: eScholarship Canada Newfoundland |
spellingShingle | extreme environments marine robotics planning underwater robotics Industrial Engineering & Automation Artificial Intelligence and Image Processing Electrical and Electronic Engineering Mechanical Engineering King, P Vardy, A Forrest, AL Teach-and-repeat path following for an autonomous underwater vehicle |
title | Teach-and-repeat path following for an autonomous underwater vehicle |
title_full | Teach-and-repeat path following for an autonomous underwater vehicle |
title_fullStr | Teach-and-repeat path following for an autonomous underwater vehicle |
title_full_unstemmed | Teach-and-repeat path following for an autonomous underwater vehicle |
title_short | Teach-and-repeat path following for an autonomous underwater vehicle |
title_sort | teach-and-repeat path following for an autonomous underwater vehicle |
topic | extreme environments marine robotics planning underwater robotics Industrial Engineering & Automation Artificial Intelligence and Image Processing Electrical and Electronic Engineering Mechanical Engineering |
topic_facet | extreme environments marine robotics planning underwater robotics Industrial Engineering & Automation Artificial Intelligence and Image Processing Electrical and Electronic Engineering Mechanical Engineering |
url | https://escholarship.org/uc/item/4s73v53p |