Abstract
AbstractIn recent years, the European Steel Industry, in particular flat steel production, is facing an increasingly competitive market situation. The product price is determined by competition, and the only way to increase profit is to reduce production and commercial costs. One method to increase production yield is to create proper scheduling for the components on the available machines, so that an order is timely completed, optimizing resource exploitation and minimizing delays. The optimization of production using efficient scheduling strategies has received ever increasing attention over time and is one of the most investigated optimization problems. The paper presents three approaches for improving flexibility of production scheduling in flat steel facilities. Each method has different scopes and modelling aspects: an auction-based multi-agent system is used to deal with production uncertainties, a multi-objective mixed-integer linear programming-based approach is applied for global optimal scheduling of resources under steady conditions, and a continuous flow model approach provides long-term production scheduling. Simulation results show the goodness of each method and their suitability to different production conditions, by highlighting their advantages and limitations.
Publisher
Springer International Publishing
Reference26 articles.
1. Branca, T.A., Fornai, B., Colla, V., Murri, M.M., Streppa, E., Schröder, A.J.: The challenge of digitalization in the steel sector. Metals 10(2), 1–23 (2020)
2. Chaari, T., Chaabane, S., Aissani, N., Trentesaux, D.: Scheduling under uncertainty: survey and research directions. In: 2014 International Conference on Advanced Logistics and Transport (ICALT), pp. 229–234. IEEE (2014).
3. Cowling, P.I., Ouelhadj, D., Petrovic, S.: Dynamic scheduling of steel casting and milling using multi-agents. Prod. Plan. Control 15(2), 178–188 (2004)
4. Garey, M.R., Johnson, D.S.: Computers and Intractability: A Guide to the Theory of NP-Completeness, 1st edn. W. H. Freeman and Co., New York (1979)
5. Guo, Q., Tang, L.: Modelling and discrete differential evolution algorithm for order rescheduling problem in steel industry. Comput. Ind. Eng. 130, 586–596 (2019)
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