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PATH PLANNING ALGORITHMS FOR THE ADAPTIVE SENSOR FLEET

机译:自适应传感器机群的路径规划算法

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The Adaptive Sensor Fleet (ASF) is a general purpose fleet management and planning system being developed by NASA in coordination with NOAA. The current mission of ASF is to provide the capability for autonomous cooperative survey and sampling of dynamic oceanographic phenomena such as current systems and algae blooms. Each ASF vessel is a software model that represents a real world platform that carries a variety of sensors. The OASIS platform will provide the first physical vessel, outfitted with the systems and payloads necessary to execute the oceanographic observations described in this paper. The ASF architecture is being designed for extensibility to accommodate heterogenous fleet elements, and is not limited to using the OASIS platform to acquire data. This paper describes the path planning algorithms developed for the acquisition phase of a typical ASF task. Given a polygonal target region to be surveyed, the region is subdivided according to the number of vessels in the fleet. The subdivision algorithm seeks a solution in which all subregions have equal area and minimum mean radius. Once the subregions are defined, a dynamic programming method is used to find a minimum-time path for each vessel from its initial position to its assigned region. This path plan includes the effects of water currents as well as avoidance of known obstacles. A fleet-level planning algorithm then shuffles the individual vessel assignments to find the overall solution which puts all vessels in their assigned regions in the minimum time. This "shuffle" algorithm may be described as a process of elimination on the sorted list of permutations of a cost matrix. All these path planning algorithms are facilitated by discretizing the region of interest onto a hexagonal tiling.
机译:自适应传感器舰队(ASF)是由NASA与NOAA合作开发的通用舰队管理和计划系统。 ASF的当前任务是为自动合作调查和采样动态海洋现象(例如当前系统和藻华)提供能力。每艘ASF船只都是一个软件模型,代表一个载有各种传感器的真实世界平台。 OASIS平台将提供第一艘配备了执行本文所述海洋学观测所必需的系统和有效载荷的物理船。 ASF体系结构的设计旨在实现可扩展性,以适应异构舰队元素,并且不限于使用OASIS平台来获取数据。本文介绍了为典型ASF任务的获取阶段开发的路径规划算法。给定要测量的多边形目标区域,则根据船队中船只的数量对该区域进行细分。细分算法寻求一种解决方案,其中所有子区域都具有相等的面积和最小的平均半径。一旦定义了子区域,就可以使用动态编程方法为每个船只从其初始位置到其指定区域的最短时间路径。该路线图包括水流的影响以及避免已知障碍物。然后,舰队级别的规划算法将各个船只的分配改组,以找到整体解决方案,该解决方案可将所有船只在最短的时间内放置在其指定区域。该“混洗”算法可以被描述为对成本矩阵的排列的排序列表进行消除的过程。所有这些路径规划算法都通过将感兴趣区域离散到六边形拼贴上来实现。

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