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首页> 外文期刊>European Journal of Operational Research >A memetic algorithm for the Orienteering Problem with Mandatory Visits and Exclusionary Constraints
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A memetic algorithm for the Orienteering Problem with Mandatory Visits and Exclusionary Constraints

机译:强制访问和排除约束的定向问题的迭代算法

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摘要

The Orienteering Problem with Mandatory Visits and Exclusionary Constraints (OPMVEC) is to visit a set of mandatory nodes (locations) and some optional nodes, while respecting the compatibility constraint between nodes and the maximum total time budget constraint. It is a variation of the classic orienteering problem that originates from a number of real-life applications. We present a highly effective memetic algorithm (MA) for OPMVEC combining: (i) a dedicated tabu search procedure that considers both feasible and infeasible solutions by constraint relaxation, (ii) a backbone-based crossover, and (iii) a randomized mutation procedure to prevent from premature convergence. Experiments on six classes of 340 benchmark instances from the literature demonstrate highly competitive performance of MA - it reports improved results for 104 instances compared with the existing heuristic approach, while finding matching best-known results for the remaining cases. Additionally, MA can be used to produce a starting point for an exact solver (e.g., CPLEX), leading to an increased number of problem instances that are solved to optimality. We further investigate the contribution of the key algorithmic elements to the success of the proposed approach. (C) 2018 Elsevier B.V. All rights reserved.
机译:强制访问和排除约束(OPMVEC)的定向问题是访问一组强制节点(位置)和某些可选节点,同时尊重节点之间的兼容性约束和最大总时间预算约束。它是经典定向问题的变体,来自许多现实生活应用。我们为OPMVEC提供了一种高效的膜算法(MA),组合:(i)通过约束弛豫,(ii)基于骨干的交叉,(iii)一种随机突变程序来考虑可行性和不可行的解决方案的专用禁忌搜索程序。(iii)随机突变过程防止过早收敛。关于六类340个来自文献的基准实例的实验表明了MA的高竞争性能 - 它报告了104个实例的提高结果与现有的启发式方法相比,同时找到剩余病例的最着名的结果。另外,MA可用于产生精确求解器(例如,CPLEX)的起点,从而导致对最优性解决的问题实例增加。我们进一步调查关键算法元素对所提出的方法的成功的贡献。 (c)2018年elestvier b.v.保留所有权利。

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