达到多代理集体建设的新高度

Martin Rameš, Pavel Surynek
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引用次数: 0

摘要

我们基于可逆坡道的理念,提出了一种新的多机器人集体施工方法。在建筑面积相同的情况下,我们的 ReRamp 算法利用可逆侧斜坡生成斜坡块结构的施工计划,比以前使用最先进的规划算法生成的计划更高、更大。我们在一组基准实例上将 ReRamp 算法与最先进的同类算法进行了比较,结果表明 ReRamp 算法的计算速度更胜一筹。我们还在实验中证实,ReRamp 算法能够生成单层房屋的规划,这是通往真实世界多智能体建筑应用道路上的一个重要里程碑。
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Reaching New Heights in Multi-Agent Collective Construction
We propose a new approach for multi-agent collective construction, based on the idea of reversible ramps. Our ReRamp algorithm utilizes reversible side-ramps to generate construction plans for ramped block structures higher and larger than was previously possible using state-of-the-art planning algorithms, given the same building area. We compare the ReRamp algorithm to similar state-of-the-art algorithms on a set of benchmark instances, where we demonstrate its superior computational speed. We also establish in our experiments that the ReRamp algorithm is capable of generating plans for a single-story house, an important milestone on the road to real-world multi-agent construction applications.
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