TY - JOUR T1 - Tackling Industrial-Scale Supply Chain Problems by Mixed-Integer Programming AU - Gamrath , Gerald AU - Gleixner , Ambros AU - Koch , Thorsten AU - Miltenberger , Matthias AU - Kniasew , Dimitri AU - Schlögel , Dominik AU - Martin , Alexander AU - Weninger , Dieter JO - Journal of Computational Mathematics VL - 6 SP - 866 EP - 888 PY - 2019 DA - 2019/11 SN - 37 DO - http://doi.org/10.4208/jcm.1905-m2019-0055 UR - https://global-sci.org/intro/article_detail/jcm/13380.html KW - Supply chain management, Supply network optimization, Mixed-integer linear programming, Primal heuristics, Numerical stability, Large-scale optimization. AB -

The modeling flexibility and the optimality guarantees provided by mixed-integer programming greatly aid the design of robust and future-proof decision support systems. The complexity of industrial-scale supply chain optimization, however, often poses limits to the application of general mixed-integer programming solvers. In this paper we describe algorithmic innovations that help to ensure that MIP solver performance matches the complexity of the large supply chain problems and tight time limits encountered in practice. Our computational evaluation is based on a diverse set, modeling real-world scenarios supplied by our industry partner SAP.