Title :
Magnetic Material Group Furnace Problem Modeling and the Specialization of the Genetic Algorithm
Author :
Yefeng Liu ; Quan-ke Pan ; Tianyou Chai
Author_Institution :
State Key Lab. of Synthetical Autom. for Process Ind., Northeastern Univ., Shenyang, China
Abstract :
Grade, due date, priority, and demand are attributes of magnetic material products. Planners are required to seek the optimal combination of production work orders to minimize cost and improve efficiency based on these attributes. The magnetic material group furnace optimization problem is a generalization of the 1-D bin-packing problem wherein bins of varying sizes are used. Bin sizes are determined by the grade and demand of the grouped work orders. A mathematical model is established to solve the magnetic material group furnace optimization problem by using a specialized genetic algorithm (SGA). In SGA, an initial population generation method is designed by following the sort criteria of the earliest completion date. The furnace charging weight is set according to several rules derived from work order attributes. An elite strategy and an improved greedy three-crossover operator are introduced to enhance convergence speed and precision. In addition, a reverse operator is applied to exploit the proposed algorithm. Simulation results based on practical production data show that the established model is suitable and that the presented algorithm is effective.
Keywords :
bin packing; furnaces; genetic algorithms; 1D bin packing problem; SGA; furnace charging weight; magnetic material group furnace optimization problem; magnetic material group furnace problem modeling; magnetic material products; mathematical model; planners; population generation method; production data; reverse operator; specialization; specialized genetic algorithm; Biological cells; Furnaces; Genetic algorithms; Magnetic materials; Mathematical model; Optimization; Production; Bin-packing problem; magnetic materials; production management; rules; specialized genetic algorithm (SGA);
Journal_Title :
Engineering Management, IEEE Transactions on
DOI :
10.1109/TEM.2014.2370392