路网约束路径优化问题的多线程算法

WISE Pub Date : 2022-08-03 DOI:10.48550/arXiv.2208.02296
Kousik Kumar Dutta, Ankita Dewan, Venkata M. V. Gunturi
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引用次数: 0

摘要

-约束路径优化(CPO)问题采用以下输入:(a)用有向图表示的道路网络,其中每条边与“成本”和“分数”值相关联;(b)源-目的对;(c)预算值,表示解决方案的最大允许成本。给定输入,目标是确定从源到目的地的路径,使“得分”最大化,同时将路径的总“成本”限制在给定的预算值之内。CPO问题在城市导航中有一定的应用。然而,CPO问题在计算上具有挑战性,因为它可以简化为圆弧定向问题的实例,这是已知的np困难。目前用于该问题的最先进的算法本质上是串行的,不能充分利用日益可用的多核系统来解决CPO查询(即,实现良好的负载平衡)。我们提出的并行算法(其智能任务分配方案)实现了卓越的解决方案质量和非常低的执行时间(通过良好的负载平衡)。此外,我们的方法还能够随着内核数量的增加而呈现出几乎线性的加速。
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A Multi-Threading Algorithm for Constrained Path Optimization Problem on Road Networks
—The constrained path optimization (CPO) problem takes the following input: (a) a road network represented as a directed graph, where each edge is associated with a “cost” and a “score” value; (b) a source-destination pair and; (c) a budget value, which denotes the maximum permissible cost of the solution. Given the input, the goal is to determine a path from source to destination, which maximizes the “score” while constraining the total “cost” of the path to be within the given budget value. CPO problem has applications in urban navigation. However, the CPO problem is computationally challenging as it can be reduced to an instance of the arc orienteering problem, which is known to be NP-hard. The current state-of-the-art algorithms for this problem are essentially serial in nature and cannot take full advantage (i.e., achieve good load balance) of the increasingly available multi-core systems to solve a CPO query. Our proposed parallel algorithm (with its intelligent task-assignment scheme) achieves both superior solution quality and very low execution times (via good load balancing). Moreover, our approach is also able to demonstrate an almost linear speed-up with an increase in the number of cores.
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