Robot plans execution for information gathering tasks with resources constraints

Minlue Wang, R. Dearden, Nick Hawes
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引用次数: 2

Abstract

Partially observable Markov decision processes (POMDPs) have been widely used to model real world problems because of their abilities to capture uncertainty in states, actions and observations. In robotics, there are also constraints imposed on the problems, such as time constraints or resources constraints for executing actions. In this work, we seek to address the problems of planning in the presence of both uncertainty and constraints. Constrained POMDPs extend the general POMDPs by explicitly representing constraints in the goal conditions. The method we take in this paper is to use a translation-based approach to generate an MDP policy off-line, and apply value of information calculation on-line to stochastically select the observation action by taking into account of information they gain and their resource usage. This on-line selection scheme was evaluated in a number of scenarios and simulations, and the preliminary results show that our approach can achieve better performance compared to deterministic schemes.
机器人对资源受限的信息收集任务进行计划执行
部分可观察马尔可夫决策过程(pomdp)由于能够捕捉状态、行为和观察中的不确定性而被广泛用于模拟现实世界的问题。在机器人技术中,也有强加于问题上的约束,例如执行动作的时间约束或资源约束。在这项工作中,我们试图解决存在不确定性和约束的规划问题。约束pomdp通过显式表示目标条件中的约束来扩展一般pomdp。本文采用的方法是在离线状态下使用基于翻译的方法生成MDP策略,在线状态下利用信息计算值,根据所获得的信息和资源使用情况,随机选择观察行为。该在线选择方案在多个场景和模拟中进行了评估,初步结果表明,与确定性方案相比,我们的方法可以获得更好的性能。
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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