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Intelligent scheduling with tabu search: An application to jobs with linear delay penalties and sequence-dependent setup costs and times
Authors:Manuel Laguna  J. Wesley Barnes  Fred Glover
Affiliation:(1) Graduate School of Business and Administration, University of Colorado, Campus Box 419, 80309-0419 Boulder, CO;(2) Graduate Program in Operations Research and Industrial Engineering, Department of Mechanical Engineering, ETC 5.128D, The University of Texas at Austin, 78712 Austin, Texas;(3) Graduate School of Business and Administration, University of Colorado, Campus Box 419, 80309-0419 Boulder, CO
Abstract:In this article we study thetabu search (TS) method in an application for solving an important class of scheduling problems. Tabu search is characterized by integrating artificial intelligence and optimization principles, with particular emphasis on exploiting flexible memory structures, to yield a highly effective solution procedure. We first discuss the problem of minimizing the sum of the setup costs and linear delay penalties when N jobs, arriving at time zero, are to be scheduled for sequential processing on a continuously available machine. A prototype TS method is developed for this problem using the common approach of exchanging the position of two jobs to transform one schedule into another. A more powerful method is then developed that employs insert moves in combination with swap moves to search the solution space. This method and the best parameters found for it during the preliminary experimentation with the prototype procedure are used to obtain solutions to a more complex problem that considers setup times in addition to setup costs. In this case, our procedure succeeded in finding optimal solutions to all problems for which these solutions are known and a better solution to a larger problem for which optimizing procedures exceeded a specified time limit (branch and bound) or reached a memory overflow (branch and bound/dynamic programming) before normal termination. These experiments confirm not only the effectiveness but also the robustness of the TS method, in terms of the solution quality obtained with a common set of parameter choices for two related but different problems.
Keywords:Production scheduling  tabu search  combinatorial optimization
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