论文标题

带有偶然限制的马尔可夫决策过程的风险意识无人机UAV-ugv聚会

Risk-aware UAV-UGV Rendezvous with Chance-Constrained Markov Decision Process

论文作者

Shi, Guangyao, Karapetyan, Nare, Asghar, Ahmad Bilal, Reddinger, Jean-Paul, Dotterweich, James, Humann, James, Tokekar, Pratap

论文摘要

我们研究了合作空中车辆路线问题的偶然限制变体,其中无人机(UAV)电池容量有限,无人接地车辆(UGV)也可以充当移动充电站,需要共同完成一组监视一组点等任务。由于无人机的电池能力有限,有时两辆车必须偏离他们的任务,以集合并充电无人机\@。与以确定性案例为重点的先前工作不同,我们解决了无人机\@的随机消耗的挑战。我们有兴趣找到决定何时何地会合的最佳政策,以使无人机的预期旅行时间最小化,并且耗尽收费的可能性小于用户定义的公差。我们将此问题提出来,作为限制了马尔可夫决策过程(CCMDP)。据作者的最佳知识,这是第一个基于CMDP的公式,用于在功耗不确定性下的UAV-UGV路由问题。我们采用基于线性编程(LP)的方法来最佳解决问题。我们在情报监视和侦察(ISR)任务的背景下展示了我们制定的有效性。

We study a chance-constrained variant of the cooperative aerial-ground vehicle routing problem, in which an Unmanned Aerial Vehicle (UAV) with limited battery capacity and an Unmanned Ground Vehicle (UGV) that can also act as a mobile recharging station need to jointly accomplish a mission such as monitoring a set of points. Due to the limited battery capacity of the UAV, two vehicles sometimes have to deviate from their task to rendezvous and recharge the UAV\@. Unlike prior work that has focused on the deterministic case, we address the challenge of stochastic energy consumption of the UAV\@. We are interested in finding the optimal policy that decides when and where to rendezvous such that the expected travel time of the UAV is minimized and the probability of running out of charge is less than a user-defined tolerance. We formulate this problem as a Chance Constrained Markov Decision Process (CCMDP). To the best knowledge of the authors, this is the first CMDP-based formulation for the UAV-UGV routing problems under power consumption uncertainty. We adopt a Linear Programming (LP) based approach to solve the problem optimally. We demonstrate the effectiveness of our formulation in the context of an Intelligence Surveillance and Reconnaissance (ISR) mission.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源