Spatiotemporal scenario data-driven decision for the path planning of multiple UASs

Chenyuan He, Yan Wan, Junfei Xie
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引用次数: 5

Abstract

Modern systems operate in spaiotemporally evolving environments, and similar spatiotemporal scenarios are likely to be tied with similar decision solutions. This paper develops a spatiotemporal scenario data-driven decision solution for the path planning of multiple unmanned aircraft systems (UASs) in wind fields. The solution utilities offline operations, online operations and sptaiotemporal scenario data queries to provide an efficient path planning decision for multiple UASs. The solution features the use of similarity between spatiotemporal scenarios to retrieve offline decisions as the initial solution for online fine tuning, which significantly shortens the online decision time. A fast query algorithm that exploits the correlation of spatiotemporal scenarios is utilized in the decision framework to quickly retrieve the best offline decisions. The solution is demonstrated using simulation studies, and can be utilized in other decision applications where spaiotemporal environments play a crucial role in the decision process and the allowed decision time window is short.
多无人机路径规划的时空场景数据驱动决策
现代系统在时空演化的环境中运行,类似的时空情景可能与类似的决策解决方案联系在一起。针对多无人机系统在风场环境下的路径规划问题,提出了一种时空场景数据驱动的决策方案。该解决方案利用离线操作、在线操作和时空场景数据查询,为多个UASs提供有效的路径规划决策。该解决方案的特点是利用时空场景之间的相似性来检索离线决策作为在线微调的初始解决方案,这大大缩短了在线决策时间。在决策框架中采用了一种利用时空情景相关性的快速查询算法,快速检索出最佳的离线决策。该解决方案通过仿真研究进行了验证,并可用于其他决策应用,其中时空环境在决策过程中起着至关重要的作用,并且允许的决策时间窗口很短。
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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