...
首页> 外文期刊>Computers & operations research >Coupling Feasibility Pump and Large Neighborhood Search to solve the Steiner team orienteering problem
【24h】

Coupling Feasibility Pump and Large Neighborhood Search to solve the Steiner team orienteering problem

机译:耦合可行性泵和大街区搜索解决斯坦纳队定向问题

获取原文
获取原文并翻译 | 示例
           

摘要

The Steiner Team Orienteering Problem (STOP) is defined on a digraph in which arcs are associated with traverse times, and whose vertices are labeled as either mandatory or profitable, being the latter provided with rewards (profits). Given a homogeneous fleet of vehicles M, the goal is to find up tom = 1M1 disjoint routes (from an origin vertex to a destination one) that maximize the total sum of rewards collected while satisfying a given limit on the route?s duration. Naturally, all mandatory vertices must be visited. In this work, we show that solely finding a feasible solution for STOP is NP-hard and propose a Large Neighborhood Search (LNS) heuristic for the problem. The algorithm is provided with initial solutions obtained by means of the matheuristic framework known as Feasibility Pump (FP). In our implementation, FP uses as backbone a commodity-based formulation reinforced by three classes of valid inequalities. To our knowledge, two of them are also introduced in this work. The LNS heuristic itself combines classical local searches from the literature of routing problems with a long-term memory component based on Path Relinking. We use the primal bounds provided by a state-of-the-art cutting-plane algorithm from the literature to evaluate the quality of the solutions obtained by the heuristic. Computational experiments show the efficiency and effectiveness of the proposed heuristic in solving a benchmark of 387 instances. Overall, the heuristic solutions imply an average percentage gap of only 0.54% when compared to the bounds of the cutting-plane baseline. In particular, the heuristic reaches the best previously known bounds on 382 of the 387 instances. Additionally, in 21 of these cases, our heuristic is even able to improve over the best known bounds. ? 2020 Elsevier Ltd. All rights reserved.
机译:施泰队团队定向问题(停止)在数字上定义,其中弧与横向时间相关联,其顶点标记为强制性或有利可图,是具有奖励(利润)的后者。鉴于车辆的同质舰队M,目标是找到Tom = 1M1不相交的路由(从原点顶点到目的地一个),最大化收集的奖励总和,同时满足路由持续时间的给定限制。当然,必须访问所有强制性顶点。在这项工作中,我们表明,仅找到了停止的可行解决方案是NP-COLLE,并提出了一个大的邻居搜索(LNS)启发式问题。该算法提供了通过称为可行性泵(FP)的数学框架获得的初始解决方案。在我们的实施中,FP用作骨干的基于商品的配方,由三类有效不等式加强。为了我们的知识,其中两个也在这项工作中介绍。 LNS启发式本身与基于路径重新链接的长期存储器组件的路由问题的文献组合了经典本地搜索。我们使用由文献中最先进的纤维算法提供的原始界限来评估启发式所获得的解决方案的质量。计算实验表明了拟议启发式在解决387个实例的基准中的效率和有效性。总体而言,与平面基线的界限相比,启发式解决方案暗示平均百分比仅为0.54%。特别是,启发式达到387个实例的382上的最佳已知范围。此外,在其中21例中,我们的启发式甚至能够改善最知名的范围。还是2020 Elsevier Ltd.保留所有权利。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号