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Approximate Solutions to the Three-Machine Scheduling Problem

Author

Listed:
  • Richard J. Giglio

    (Stanford University, California)

  • Harvey M. Wagner

    (Stanford University, California)

Abstract

This paper summarizes experimental results from applying several computational methods for solving the classic three-machine scheduling model. The basic mathematical problem is to select an optimal permutation of n items, where the objective function employed is the total amount of processing time elapsing for the completion of all n items on three machines. The methods tested are integer linear programming, ordinary linear programming with answers rounded to integers, a heuristic algorithm, and random sampling. Throughout the experimentation n = 6. A dual integer programming code is tested on six trial problems. Consideration is given to studying the phenomenon of input-form sensitivity. The results are not encouraging and confirm previous experimental evidence as to the strong effect of varying the input form. However, the addition of a powerful bound on the objective function has a significant beneficial effect on the convergence of the dual algorithm. A sampling study of the statistical characteristics of this model is made with 100 sets of data randomly generated. Frequency distributions of minimum and mean total processing time are tabulated and analyzed. On this same set of problems, a linear programming approach is examined for effectiveness in producing nearly optimal schedules. Such an approach tends to give answers that are better than would be obtained by a single permutation drawn at random, but the LP rounded solutions average about an 11 per cent increase over the optimal processing time. A heuristic algorithm based on Johnson's method is tested on 20 of the 100 cases and gives excellent results. Finally attention is turned to the method of randomly sampling the permutations, possibly applying a simple heuristic gradient method to improve each sampled schedule. A feature of this method is that elementary probability theory can be applied to yield corresponding statements about the accuracy guaranteed by the approach.

Suggested Citation

  • Richard J. Giglio & Harvey M. Wagner, 1964. "Approximate Solutions to the Three-Machine Scheduling Problem," Operations Research, INFORMS, vol. 12(2), pages 305-324, April.
  • Handle: RePEc:inm:oropre:v:12:y:1964:i:2:p:305-324
    DOI: 10.1287/opre.12.2.305
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