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Maximum-Reward Motion in a Stochastic Environment: The Nonequilibrium Statistical Mechanics Perspective

机译:随机环境中的最大奖励运动:非核状统计力学透视

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We consider the problem of computing the maximum-reward motion in a reward field in an online setting. We assume that the robot has a limited perception range, and it discovers the reward field on the fly. We analyze the performance of a simple, practical lattice-based algorithm with respect to the perception range. Our main result is that, with very little perception range, the robot can collect as much reward as if it could see the whole reward field, under certain assumptions. Along the way, we establish novel connections between this class of problems and certain fundamental problems of nonequilibrium statistical mechanics. We demonstrate our results in simulation examples.
机译:我们考虑在在线设置中计算奖励字段中的最大奖励运动的问题。我们假设机器人的感知范围有限,它会在飞行中发现奖励领域。我们分析了一种关于感知范围的简单实用的晶格算法的性能。我们的主要结果是,由于感知范围很少,机器人可以收集尽可能多的奖励,就像它可以看到整个奖励领域,在某些假设下。沿途,我们在这类问题与非核状统计力学的某些基本问题之间建立了新的联系。我们展示了我们的仿真例子结果。

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