Designing a multi-objective nonlinear cross-docking location allocation model using genetic algorithm
Subject Areas : Mathematical Optimization
Ahmad Makui
1
(Assistant Professor, Dep. of Industrial Engineering, Iran University of Science and Technology, Tehran, Iran)
Laleh Haerian
2
(M.Sc., Dep. of Industrial Engineering, Iran University of Science and Technology, Tehran, Iran)
Mahyar Eftekhar
3
(M.Sc., Dep. of Production and Operations Management, Chalmers University of Technology, Sweden)
Keywords: Genetic Algorithm, Cross-docking, Cross dock, Transportation system, Supply chain design, Location Allocation, Multi-objective nonlinear model,
Abstract :
In this study, a cross-docking system is designed at strategic and tactical levels. For making the strategic decisions, a multi-objective nonlinear location allocation model for cross-docks is presented based on a distri-bution location allocation model by Andreas Klose and Andreas Drexl. The model is further developed to in-clude the whole supply chain members and the objective functions are weighted by implementing AHP. A ge-netic algorithm solution is designed for sample cross-dock location allocation problems. In the tactical stage, model was further simulated under two different distribution strategies to decide on the tactical parameters. As an example, the performance of the model is verified.