Probabilistic Planning for AUV Data Harvesting from Smart Underwater Sensor Networks

Matthew Budd, G. Salavasidis, Izzat Karnarudzaman, C. Harris, A. Phillips, Paul Duckworth, N. Hawes, Bruno Lacerda
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引用次数: 1

Abstract

Harvesting valuable ocean data, ranging from climate and marine life analysis to industrial equipment monitoring, is an extremely challenging real-world problem. Sparse underwater sensor networks are a promising approach to scale to larger and deeper environments, but these have difficulty offloading their data without external assistance. Traditionally, offloading data has been achieved by costly, fixed communication infrastructure. In this paper, we propose a planning under uncertainty method that enables an autonomous underwater vehicle (AUV) to adaptively collect data from smart sensor networks in underwater environments. Our novel solution exploits the ability of sensor nodes to provide the AUV with time-of-flight acoustic localisation, and is able to prioritise nodes with the most valuable data. In both simulated experiments and a real-world field trial, we demonstrate that our method outperforms the type of hand-designed behaviours that has previously been used in the context of underwater data harvesting.
基于智能水下传感器网络的AUV数据采集的概率规划
从气候和海洋生物分析到工业设备监测,收集有价值的海洋数据是一个极具挑战性的现实问题。稀疏的水下传感器网络是一种很有前途的方法,可以扩展到更大、更深的环境,但在没有外部帮助的情况下,它们很难卸载数据。传统上,数据卸载是通过昂贵的固定通信基础设施实现的。本文提出了一种不确定规划方法,使自主水下航行器(AUV)能够在水下环境中自适应地从智能传感器网络中收集数据。我们的新解决方案利用传感器节点的能力,为AUV提供飞行时间声学定位,并能够优先考虑具有最有价值数据的节点。在模拟实验和现实世界的现场试验中,我们证明了我们的方法优于以前在水下数据采集环境中使用的手动设计的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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