Ant Colony Optimisation for Backward Production Scheduling

  • Santos L
  • Vieira G
  • Leite H
  • et al.
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Abstract

The main objective of a production scheduling system is to assign tasks (orders or jobs) to resources and sequence them as efficiently and economically (optimised) as possible. Achieving this goal is a difficult task in complex environment where capacity is usually limited. In these scenarios, finding an optimal solution—if possible—demands a large amount of computer time. For this reason, in many cases, a good solution that is quickly found is preferred. In such situations, the use of metaheuristics is an appropriate strategy. In these last two decades, some out-of-the-shelf systems have been developed using such techniques. This paper presents and analyses the development of a shop-floor scheduling system that uses ant colony optimisation (ACO) in a backward scheduling problem in a manufacturing scenario with single-stage processing, parallel resources, and flexible routings. This scenario was found in a large food industry where the corresponding author worked as consultant for more than a year. This work demonstrates the applicability of this artificial intelligence technique. In fact, ACO proved to be as efficient as branch-and-bound, however, executing much faster.

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APA

Santos, L. P. dos, Vieira, G. E., Leite, H. V. dos R., & Arns Steiner, M. T. (2012). Ant Colony Optimisation for Backward Production Scheduling. Advances in Artificial Intelligence, 2012, 1–12. https://doi.org/10.1155/2012/312132

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