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An integer linear programming approach and a hybrid variable neighborhood search for the car sequencing problem

机译:整数线性规划方法和混合变量邻域搜索解决汽车排序问题

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摘要

In this paper we present two major approaches to solve the car sequencing problem, in which the goal is to find an optimal arrangement of commissioned vehicles along a production line with respect to constraints of the form "no more than 1, cars are allowed to require a component c in any subsequence of m(c) consecutive cars". The first method is an exact one based on integer linear programming (ILP). The second approach is hybrid: it uses ILP techniques within a general variable neighborhood search (VNS) framework for examining large neighborhoods. We tested the two methods on benchmark instances provided by CSPLIB and the automobile manufacturer RENAULT for the ROADEF Challenge 2005. These tests reveal that our approaches are competitive to previous reported algorithms. For the CSPLIB instances we were able to shorten the required computation time for reaching and proving optimality. Furthermore, we were able to obtain tight bounds on some of the ROADEF instances. For two of these instances the proposed ILP-method could provide new optimality proofs for already known solutions. For the VNS, the individual contributions of the used neighborhoods are also experimentally analyzed. Results highlight the significant impact of each structure. In particular the large ones examined using ILP techniques enhance the overall performance significantly, so that the hybrid approach clearly outperforms variants including only commonly defined neighborhoods. Crown Copyright (C) 2007 Published by Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了两种主要的方法来解决汽车排序问题,其中的目的是针对“不超过1个,允许汽车需要m(c)个连续汽车的任何子序列中的分量c”。第一种方法是基于整数线性规划(ILP)的精确方法。第二种方法是混合方法:它在通用变量邻域搜索(VNS)框架内使用ILP技术来检查大型邻域。我们在CSPLIB和汽车制造商RENAULT为ROADEF Challenge 2005提供的基准实例上测试了这两种方法。这些测试表明,我们的方法比以前报道的算法更具竞争力。对于CSPLIB实例,我们能够缩短达到和证明最优性所需的计算时间。此外,我们能够在某些ROADEF实例上获得严格的界限。对于这些情况中的两个,建议的ILP方法可以为已知的解决方案提供新的最优性证明。对于VNS,还通过实验分析了所使用社区的个人贡献。结果突出了每个结构的重大影响。特别是,使用ILP技术检查的大型模型显着提高了整体性能,因此,混合方法明显胜过仅包含共同定义的邻域的变体。 Crown版权所有(C)2007,Elsevier B.V.保留所有权利。

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