Sampling on-demand with fleets of underwater gliders

G. Ferri, M. Cococcioni, A. Alvarez
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引用次数: 7

Abstract

This paper presents an optimal sampling approach to plan the optimum paths for a glider fleet. Optimal sampling has recently received considerable attention in the research community and consists in planning the paths to minimize some sampling metrics related to the phenomenon under study. Different criteria (e.g. A, G, or E optimality) used in the geosciences to obtain an optimum design lead to different sampling strategies. In particular, the A criterion produces paths for the gliders that minimize the overall level of uncertainty over the area of interest. However, there are commonly operative situations in which the marine scientists may prefer not to minimize the overall uncertainty of a certain area, but instead they may be interested in achieving an acceptable uncertainty sufficient for the scientific or operational needs of the mission. We propose and discuss here an approach named sampling on-demand that explicitly addresses this need. In our approach the user provides an objective map, setting both the amount and the geographic distribution of the uncertainty to be achieved after assimilating the information gathered by the fleet. A new optimality criterion, Aη, is introduced. The resulting optimization problem is solved by an algorithm based on Simulated Annealing producing optimum paths for the vehicles. The algorithm takes into account the constraints imposed by the glider navigation features, the desired geometric features of the paths and the problems of reachability caused by ocean currents. Ocean currents and temperature data resulted from an ocean mathematical model are used to validate the method in different scenarios in a area covering the Western Mediterranean Sea.
用水下滑翔机按需取样
本文提出了滑翔机机群最优路径规划的最优抽样方法。最优抽样最近在研究界受到了相当大的关注,它包括规划路径以最小化与所研究现象相关的一些抽样指标。不同的标准(例如A、G或E最优性)在地球科学中用于获得最佳设计,导致不同的采样策略。特别地,A准则为使感兴趣区域的总体不确定性最小化的滑翔机产生路径。然而,在通常的操作情况下,海洋科学家可能不愿意尽量减少某一区域的总体不确定性,相反,他们可能感兴趣的是达到足以满足任务的科学或业务需要的可接受的不确定性。我们在这里提出并讨论了一种名为按需抽样的方法,它明确地满足了这一需求。在我们的方法中,用户提供了一个客观的地图,在吸收舰队收集的信息后,设置不确定性的数量和地理分布。引入了一个新的最优性准则Aη。最后,采用模拟退火算法求解车辆的最优路径。该算法考虑了滑翔机导航特性的约束、路径的几何特征和洋流的可达性问题。利用海洋数学模型得出的洋流和温度数据,在西地中海地区的不同情景中验证了该方法。
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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