Article ID Journal Published Year Pages File Type
478343 European Journal of Operational Research 2012 13 Pages PDF
Abstract

The multiple container loading cost minimization problem (MCLCMP) is a practical and useful problem in the transportation industry, where products of various dimensions are to be loaded into containers of various sizes so as to minimize the total shipping cost. The MCLCMP can be naturally formulated as a set cover problem and solved using column generation techniques, which is a popular method for handling huge numbers of variables. However, the direct application of column generation is not effective because feasible solutions to the pricing subproblem is required, which for the MCLCMP is NP-hard. We show that efficiency can be greatly improved by generating prototypes that approximate feasible solutions to the pricing problem rather than actual columns. For many hard combinatorial problems, the subproblem in column generation based algorithms is NP-hard; if suitable prototypes can be quickly generated that approximate feasible solutions, then our strategy can also be applied to speed up these algorithms.

► Devise a set cover formulation to model the multiple container loading problem. ► Combine the column generation technique with heuristics. ► Use prototypes to approximate feasible packings inside a container. ► Realize selected prototypes into actual packing plan when needed. ► Converge faster and produce superior solutions.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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