Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations

Human divers face immense challenges in the undersea domain due to constraints on life support, sensory input, and mobility. Due to these challenges, even simple tasks are difficult, and navigation between points of interest is key among them. However, humans have progressively utilized creativity,...

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Main Author: O'Neill, Brendan
Other Authors: Leonard, John
Format: Thesis
Published: Massachusetts Institute of Technology 2023
Online Access:https://hdl.handle.net/1721.1/152813
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author O'Neill, Brendan
author2 Leonard, John
author_facet Leonard, John
O'Neill, Brendan
author_sort O'Neill, Brendan
collection MIT
description Human divers face immense challenges in the undersea domain due to constraints on life support, sensory input, and mobility. Due to these challenges, even simple tasks are difficult, and navigation between points of interest is key among them. However, humans have progressively utilized creativity, innovation, and research to explore the Earth’s oceans at greater depths and with increased spatial and temporal detail. Autonomous underwater vehicles often lack the tools, dexterity, or flexibility to manage specific tasks or unforeseen circumstances. However, advances in inertial navigation, computation, and acoustic communication enable autonomous underwater vehicles to perform tasks outside human capability. Acoustic modem technology allows for flexible and reliable communication over an acoustic link. We propose algorithms for cooperative navigation between a diver and an autonomous underwater vehicle as a pathway toward complex undersea human-robot teams. This thesis identifies the communication, software, and algorithmic tools to enable loosely-coupled cooperative navigation between an autonomous underwater vehicle and a diver without a surface presence. Divers present new challenges for cooperative navigation based on their unique motion profile and variable pace from diver to diver. By leveraging the vehicle’s sensor suite, acoustic modem technology, and nonlinear least-squares state estimation, we enable enhanced diver localization and navigation without a surface presence. Adaptation to environmental impacts is explored through measured ocean currents as well as updates to the diver’s motion model based on state estimation analysis. These adaptations produce more efficient diver transits with fewer heading changes. In addition, maneuvering strategies for autonomous underwater vehicles are explored to assess their impact on diver localization accuracy. Experimental validation is shown through surface platforms as proxies for the autonomous underwater vehicle and diver, demonstrating the localization accuracy within a few meters for experiments under various operating conditions. These contributions provide a foundation for undersea human-robot teams to engage in complex tasks with greater efficiency through their combined strengths.
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spelling mit-1721.1/1528132023-11-03T03:46:09Z Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations O'Neill, Brendan Leonard, John Massachusetts Institute of Technology. Department of Mechanical Engineering Joint Program in Oceanography/Applied Ocean Science and Engineering Human divers face immense challenges in the undersea domain due to constraints on life support, sensory input, and mobility. Due to these challenges, even simple tasks are difficult, and navigation between points of interest is key among them. However, humans have progressively utilized creativity, innovation, and research to explore the Earth’s oceans at greater depths and with increased spatial and temporal detail. Autonomous underwater vehicles often lack the tools, dexterity, or flexibility to manage specific tasks or unforeseen circumstances. However, advances in inertial navigation, computation, and acoustic communication enable autonomous underwater vehicles to perform tasks outside human capability. Acoustic modem technology allows for flexible and reliable communication over an acoustic link. We propose algorithms for cooperative navigation between a diver and an autonomous underwater vehicle as a pathway toward complex undersea human-robot teams. This thesis identifies the communication, software, and algorithmic tools to enable loosely-coupled cooperative navigation between an autonomous underwater vehicle and a diver without a surface presence. Divers present new challenges for cooperative navigation based on their unique motion profile and variable pace from diver to diver. By leveraging the vehicle’s sensor suite, acoustic modem technology, and nonlinear least-squares state estimation, we enable enhanced diver localization and navigation without a surface presence. Adaptation to environmental impacts is explored through measured ocean currents as well as updates to the diver’s motion model based on state estimation analysis. These adaptations produce more efficient diver transits with fewer heading changes. In addition, maneuvering strategies for autonomous underwater vehicles are explored to assess their impact on diver localization accuracy. Experimental validation is shown through surface platforms as proxies for the autonomous underwater vehicle and diver, demonstrating the localization accuracy within a few meters for experiments under various operating conditions. These contributions provide a foundation for undersea human-robot teams to engage in complex tasks with greater efficiency through their combined strengths. Ph.D. 2023-11-02T20:18:26Z 2023-11-02T20:18:26Z 2023-09 2023-09-28T15:51:23.037Z Thesis https://hdl.handle.net/1721.1/152813 In Copyright - Educational Use Permitted Copyright retained by author(s) https://rightsstatements.org/page/InC-EDU/1.0/ application/pdf Massachusetts Institute of Technology
spellingShingle O'Neill, Brendan
Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations
title Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations
title_full Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations
title_fullStr Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations
title_full_unstemmed Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations
title_short Adaptive AUV-assisted Diver Navigation for Loosely-Coupled Teaming in Undersea Operations
title_sort adaptive auv assisted diver navigation for loosely coupled teaming in undersea operations
url https://hdl.handle.net/1721.1/152813
work_keys_str_mv AT oneillbrendan adaptiveauvassisteddivernavigationforlooselycoupledteaminginunderseaoperations