作者
Rongye Shi, Peter Steenkiste, Manuela M Veloso
发表日期
2019/1
期刊
Applied Sciences
卷号
9
期号
19
页码范围
4037
出版商
Multidisciplinary Digital Publishing Institute
简介
Featured Application
SC-M* generalizes the M* algorithm to address real-world multi-agent path planning problems in the soft-collision context, which considers the allocation of common resources requested by agents. Application examples include but are not limited to city-scale passenger routing in mass transit systems, network traffic engineering and planning for large-scale autonomous vehicles.
Abstract
Multi-agent path planning (MAPP) is increasingly being used to address resource allocation problems in highly dynamic, distributed environments that involve autonomous agents. Example domains include surveillance automation, traffic control and others. Most MAPP approaches assume hard collisions, e.g., agents cannot share resources, or co-exist at the same node or edge. This assumption unnecessarily restricts the solution space and does not apply to many real-world scenarios. To mitigate this limitation, this paper introduces a more general class of MAPP problems—MAPP in a soft-collision context. In soft-collision MAPP problems, agents can share resources or co-exist in the same location at the expense of reducing the quality of the solution. Hard constraints can still be modeled by imposing a very high cost for sharing. This paper motivates and defines the soft-collision MAPP problem, and generalizes the widely-used M* MAPP algorithm to support the concept of soft-collisions. Soft-collision M* (SC-M*) extends M* by changing the definition of a collision, so paths with collisions that have a quality penalty below a given threshold are acceptable. For each candidate path, SC-M* keeps …
引用总数
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