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Sampling-Based Control Synthesis for Multi-robot Systems under Global Temporal Specifications

机译:全球时间规范下多机器人系统基于采样的控制综合

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This paper proposes a sampling-based algorithm for multi-robot control synthesis under global Linear Temporal Logic (LTL) formulas. Robot mobility is captured by transition systems whose states represent regions in the environment that satisfy atomic propositions. Existing planning approaches under global temporal goals rely on graph search techniques applied to a synchronous product automaton constructed among the robots. As the number of robots increases, the state-space of the product automaton grows exponentially and, as a result, graph search techniques become intractable. In this paper, we propose a new sampling-based algorithm that builds incrementally a directed tree that approximates the state-space and transitions of the synchronous product automaton. By approximating the product automaton by a tree rather than representing it explicitly, we require much fewer resources to store it and motion plans can be found by tracing the sequence of parent nodes from the leaves back to the root without the need for sophisticated graph search techniques. This significantly increases scalability of our algorithm compared to existing model-checking methods. We also show that our algorithm is probabilistically complete and asymptotically optimal and present numerical experiments that show that it can be used to model-check product automata with billions of states, which was not possible using an off-the-shelf model checker.
机译:本文提出了一种基于采样的算法,用于在全局线性时序逻辑(LTL)公式下实现多机器人控制综合。过渡系统捕获机器人的移动性,过渡系统的状态表示环境中满足原子命题的区域。在全局时间目标下的现有计划方法依赖于图搜索技术,该图搜索技术应用于在机器人之间构造的同步产品自动机。随着机器人数量的增加,产品自动机的状态空间呈指数增长,结果,图形搜索技术变得难以处理。在本文中,我们提出了一种新的基于采样的算法,该算法以增量方式构建有向树,该树近似于同步产品自动机的状态空间和转换。通过用树来近似乘积自动机而不是用它来明确表示,我们需要更少的资源来存储它,并且可以通过跟踪从叶到根的父节点序列来找到运动计划,而无需复杂的图搜索技术。与现有的模型检查方法相比,这大大提高了我们算法的可扩展性。我们还表明,我们的算法在概率上是完全的,并且是渐近最优的,并提供了数值实验,表明该算法可用于对数十亿个状态的产品自动机进行模型检查,而使用现成的模型检查器则无法实现。

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