挑战性环境下人类监督多机器人团队警报生成的仿真框架

Sarah Al-Hussaini, J. Gregory, N. Dhanaraj, Satyandra K. Gupta
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引用次数: 2

摘要

在具有失败、不确定性、复杂依赖关系和间歇性信息流的多智能体任务中,人类监督者的角色是有压力和挑战性的。基于未来任务预测的警报可以帮助主管快速响应任务更新,并制定更有效的策略。蒙特卡罗前向模拟可用于估计未来的任务状态,建立可能任务结果的概率分布并生成警报。然而,为了得到合理的估计,我们需要大量的模拟,代表一个长时间的多机器人任务。所有这些都需要在几秒钟内完成,因此传统的基于物理的机器人模拟是不可行的。我们借鉴离散事件仿真范式的思想,提出了自适应时间步长、机器人分组和智能时间间隔选择等新颖的仿真技术。我们的技术在估计概率方面达到了足够的精度水平,从而产生更高质量的警报,同时降低了离散模拟的整体保真度,以实现更快的计算。我们还利用我们的方法对概率估计中的误差水平提供了理论见解,这可以指导在不同应用场景中选择适当的保真度水平,同时保持精度要求。最后,我们为几个代表性任务场景演示了足够精确的实时警报生成,其中使用我们的自适应技术计算时间为秒级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simulation-Based Framework for Generating Alerts for Human-Supervised Multi-Robot Teams in Challenging Environments
In a multi-agent mission with failures, uncertainty, complex dependencies, and intermittent information flow, the role of human supervisors is stressful and challenging. Alerts based on future mission predictions can be useful to assist the supervisors in responding to mission updates quickly, and devise more effective strategies. Monte-Carlo forward simulations can be used to estimate future mission states and build probability distributions of possible mission outcomes and generate alerts. However, in order to get reasonable estimates, we need a large number of simulations, representing a long-duration multi robot mission. All this needs to be performed within seconds, and therefore traditional physics based robotic simulations are infeasible. We adapt ideas from discrete event simulation paradigm, and present our novel simulation techniques like adaptive time step size, robot grouping, and intelligent time interval selection. Our technique achieves a sufficient level of accuracy in estimating probabilities, thereby generating higher quality alerts, while lowering overall fidelity of the discrete simulations for faster computation. We also provide theoretical insights on error levels in probability estimation using our method, which can guide in choosing appropriate levels of fidelity while maintaining accuracy requirements in different application scenarios. Lastly, we demonstrate sufficiently accurate real-time alert generation for a few representative mission scenarios, where the computational time is in the order of seconds using our adaptive techniques.
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