Article ID Journal Published Year Pages File Type
478389 European Journal of Operational Research 2012 10 Pages PDF
Abstract

This paper presents a hybrid of a general heuristic framework and a general purpose mixed-integer programming (MIP) solver. The framework is based on local search and an adaptive procedure which chooses between a set of large neighborhoods to be searched. A mixed integer programming solver and its built-in feasibility heuristics is used to search a neighborhood for improving solutions. The general reoptimization approach used for repairing solutions is specifically suited for combinatorial problems where it may be hard to otherwise design suitable repair neighborhoods. The hybrid heuristic framework is applied to the multi-item capacitated lot sizing problem with setup times, where experiments have been conducted on a series of instances from the literature and a newly generated extension of these. On average the presented heuristic outperforms the best heuristics from the literature, and the upper bounds found by the commercial MIP solver ILOG CPLEX using state-of-the-art MIP formulations. Furthermore, we improve the best known solutions on 60 out of 100 and improve the lower bound on all 100 instances from the literature.

► A hybrid algorithm is presented combining the best properties of ALNS local search and MIP solvers. ► The framework is well suited for problems where it is difficult to construct repair neighborhoods. ► The paper shows very promising results for the lot sizing problem with setup times.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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