多旅行推销员及其相关问题:基于最大熵原理的方法

Mayank Baranwal, Brian Roehl, S. Salapaka
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引用次数: 11

摘要

本文提出了一种新的求解多旅行推销员问题(mTSP)及其变体的启发式方法。在这种方法中,TSP及其变体被视为受约束的资源分配问题,其中一组有序的资源与城市相关联,分配通过迭代算法完成,最终每个城市都与资源相关联。该方法允许在资源上添加约束,这些约束转化为目标,如最小行程长度(或mTSP中的多个行程长度)和定义TSP问题变体的其他约束。关联资源分配问题的算法基于最大熵原理和确定性退火算法。除了mTSP,本文还演示了这种方法用于解决足够接近的旅行推销员问题(CETSP),由于一对城市之间存在连续的可能边缘,因此该问题在计算上具有挑战性。本文给出的例子说明了这种新框架在TSP及其许多变体中使用的有效性。仿真结果表明,所提出的MEP算法的求解结果明显优于最常用的模拟退火算法,且运行时间仅略有增加。
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Multiple traveling salesmen and related problems: A maximum-entropy principle based approach
This paper presents a new heuristic approach for multiple traveling salesmen problem (mTSP) and other variants of the TSP. In this approach, the TSP and its variants are seen as constrained resource allocation problems, where an ordered set of resources is associated to the cities, and the allocation is done through an iterative algorithm in such a way that eventually each city gets associated with a resource. The approach allows adding constraints on resources which translate to objectives such as minimum tour length (or multiple tour lengths as in mTSP) and other constraints that define the variants on the TSP problem. The algorithm for the associated resource allocation problem is based on maximum entropy principle (MEP) and the deterministic annealing algorithm. Besides mTSP, this article demonstrates this approach for close enough traveling salesman problem (CETSP), which is known to be computationally challenging since there is a continuum of possible edges between a pair of cities. The examples presented in this paper illustrate the effectiveness of this new framework for use in TSP and many variants thereof. Simulations demonstrate that the proposed MEP algorithm achieves significantly better solutions than the ones provided by the most commonly used simulated annealing algorithm with only marginal increase in run-time.
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