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Robust Satisficing Decision Making for Unmanned Aerial Vehicle Complex Missions under Severe Uncertainty

机译:不确定性条件下无人飞行器复杂任务的鲁棒满意决策

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摘要

This paper presents a robust satisficing decision-making method for Unmanned Aerial Vehicles (UAVs) executing complex missions in an uncertain environment. Motivated by the info-gap decision theory, we formulate this problem as a novel robust satisficing optimization problem, of which the objective is to maximize the robustness while satisfying some desired mission requirements. Specifically, a new info-gap based Markov Decision Process (IMDP) is constructed to abstract the uncertain UAV system and specify the complex mission requirements with the Linear Temporal Logic (LTL). A robust satisficing policy is obtained to maximize the robustness to the uncertain IMDP while ensuring a desired probability of satisfying the LTL specifications. To this end, we propose a two-stage robust satisficing solution strategy which consists of the construction of a product IMDP and the generation of a robust satisficing policy. In the first stage, a product IMDP is constructed by combining the IMDP with an automaton representing the LTL specifications. In the second, an algorithm based on robust dynamic programming is proposed to generate a robust satisficing policy, while an associated robustness evaluation algorithm is presented to evaluate the robustness. Finally, through Monte Carlo simulation, the effectiveness of our algorithms is demonstrated on an UAV search mission under severe uncertainty so that the resulting policy can maximize the robustness while reaching the desired performance level. Furthermore, by comparing the proposed method with other robust decision-making methods, it can be concluded that our policy can tolerate higher uncertainty so that the desired performance level can be guaranteed, which indicates that the proposed method is much more effective in real applications.
机译:本文为不确定环境下执行复杂任务的无人机提供了一种鲁棒的令人满意的决策方法。受信息缺口决策理论的激励,我们将此问题公式化为一种新颖的鲁棒性满足优化问题,其目的是在满足某些所需任务要求的同时,最大化鲁棒性。具体而言,构建了一个基于信息缺口的新马尔可夫决策过程(IMDP),以抽象不确定的无人机系统并使用线性时态逻辑(LTL)指定复杂的任务要求。获得鲁棒的满足策略,以最大程度提高对不确定IMDP的鲁棒性,同时确保满足LTL规范的期望概率。为此,我们提出了一个两阶段的鲁棒性满足解决方案策略,其中包括产品IMDP的构建和鲁棒性满足策略的生成。在第一阶段,通过将IMDP与代表LTL规范的自动机相结合来构造产品IMDP。第二,提出了一种基于鲁棒动态规划的算法来生成鲁棒的满足策略,同时提出了一种相关的鲁棒性评估算法来对鲁棒性进行评估。最后,通过蒙特卡洛模拟,在严重不确定性下的无人飞行器搜索任务中证明了我们算法的有效性,从而使生成的策略可以在达到所需性能水平的同时最大化鲁棒性。此外,通过将提出的方法与其他鲁棒的决策方法进行比较,可以得出结论,我们的策略可以容忍较高的不确定性,从而可以保证所需的性能水平,这表明提出的方法在实际应用中更为有效。

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  • 年(卷),期 -1(11),11
  • 年度 -1
  • 页码 e0166448
  • 总页数 35
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