长时间AUV任务的应急计划

C. Harris, R. Dearden
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引用次数: 7

摘要

近年来,自主水下航行器的应用越来越广泛。由于部署车辆的成本和损失或损坏的风险通常很高,AUV任务通常由简单的预先设定的行为组成。为了最大限度地降低车辆及其科学货物的风险,这些行为不可避免地过于保守,保留了相当大比例的电池,以防使用率高于预期。因此,在一般情况下,车辆没有充分发挥其潜力。由于水下航行器所处的环境是动态的,其对飞行器的影响往往是不确定的,因此很难提前准确预测一个任务或单个任务的资源成本。通过建模这种不确定性并允许飞行器观察任务的进展和周围环境,任务计划可以在操作期间自主地改进。例如,如果观察到资源使用量(如电池电量)低于预期,车辆可以安排额外的数据收集任务。相反,如果资源使用高于预期,则飞行器可以从任务计划中删除较低优先级的任务,以便在不需要中止任务的情况下增加成功恢复的概率。在执行由许多任务组成的持续时间较长的任务时,这种规划变得越来越有益。本文讨论了一种新的自主规划算法的发展,该算法对AUV域的不确定性进行建模,并试图在不影响车辆安全的情况下最大限度地收集科学数据。它包括技术概述,最近的成果和潜在应用背景下的研究讨论,重点是远程和低成本车辆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contingency planning for long-duration AUV missions
In recent years, the use of autonomous underwater vehicles has become increasingly popular for a wide variety of applications. As the cost of deploying a vehicle and the risk of loss or damage are often high, AUV missions typically consist of simple pre-scripted behaviours. Designed to minimise risk to the vehicle and its scientific cargo, these behaviours are inevitably overly-conservative, reserving a significant proportion of battery as a contingency should usage be higher than expected. Consequently, in the average case, the vehicle is not used to its full potential. As environments in which AUVs operate are dynamic and their effect on the vehicle is often uncertain, it is difficult to accurately predict the resource cost of a mission or individual task in advance. By modelling this uncertainty and allowing the vehicle to observe both the progress of the mission and the surrounding environment, the mission plan may be autonomously refined during operation. For example, in the event that resource usage, such as battery power, is observed to be lower than expected, the vehicle can schedule additional data collection tasks. Conversely, if the resource usage is higher than expected, the vehicle can remove lower priority tasks from the mission plan in order to increase the probability of successful recovery without the need to abort the mission. Such planning becomes increasingly beneficial when performing longer duration missions comprised of many tasks. This paper discusses the development of a new autonomous planning algorithm which models the uncertainty in the AUV domain and attempts to maximise the collection of scientific data without compromising the safety of the vehicle. It includes a technical overview, recent results and a discussion of the research in the context of potential applications, focusing on long-range and low-cost vehicles.
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