cs.AI updates on arXiv.org 09月29日
多目标搜索在机器人规划中的应用与优化
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本文提出了一种适用于多目标搜索(MOS)的通用问题公式,通过隐藏(搜索)目标的聚合函数优化解决方案目标。该方法支持标准MOS算法的应用,并在多个机器人规划问题中展示了其优越性。

arXiv:2509.22085v1 Announce Type: new Abstract: Multi-objective search (MOS) has become essential in robotics, as real-world robotic systems need to simultaneously balance multiple, often conflicting objectives. Recent works explore complex interactions between objectives, leading to problem formulations that do not allow the usage of out-of-the-box state-of-the-art MOS algorithms. In this paper, we suggest a generalized problem formulation that optimizes solution objectives via aggregation functions of hidden (search) objectives. We show that our formulation supports the application of standard MOS algorithms, necessitating only to properly extend several core operations to reflect the specific aggregation functions employed. We demonstrate our approach in several diverse robotics planning problems, spanning motion-planning for navigation, manipulation and planning fr medical systems under obstacle uncertainty as well as inspection planning, and route planning with different road types. We solve the problems using state-of-the-art MOS algorithms after properly extending their core operations, and provide empirical evidence that they outperform by orders of magnitude the vanilla versions of the algorithms applied to the same problems but without objective aggregation.

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多目标搜索 机器人规划 优化算法
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