6533b82dfe1ef96bd1291c69

RESEARCH PRODUCT

Stabilized branch-and-price algorithms for vector packing problems

Timo GschwindKatrin HeßlerStefan Irnich

subject

021103 operations researchInformation Systems and ManagementGeneral Computer ScienceComputer scienceBranch and price0211 other engineering and technologiesProcess (computing)02 engineering and technologyManagement Science and Operations ResearchResolution (logic)Industrial and Manufacturing EngineeringKnapsack problemModeling and SimulationBounded functionShortest path problem0202 electrical engineering electronic engineering information engineeringBenchmark (computing)020201 artificial intelligence & image processingAlgorithm

description

Abstract This paper considers packing and cutting problems in which a packing/cutting pattern is constrained independently in two or more dimensions. Examples are restrictions with respect to weight, length, and value. We present branch-and-price algorithms to solve these vector packing problems (VPPs) exactly. The underlying column-generation procedure uses an extended master program that is stabilized by (deep) dual-optimal inequalities. While some inequalities are added to the master program right from the beginning (static version), other violated dual-optimal inequalities are added dynamically. The column-generation subproblem is a multidimensional knapsack problem, either binary, bounded, or unbounded depending on the specific master problem formulation. Its fast resolution is decisive for the overall performance of the branch-and-price algorithm. In order to provide a generic but still efficient solution approach for the subproblem, we formulate it as a shortest path problem with resource constraints (SPPRC), yielding the following advantages: (i) Violated dual-optimal inequalities can be identified as a by-product of the SPPRC labeling approach and thus be added dynamically; (ii) branching decisions can be implemented into the subproblem without deteriorating its resolution process; and (iii) larger instances of higher-dimensional VPPs can be tackled with branch-and-price for the first time. Extensive computational results show that our branch-and-price algorithms are capable of solving VPP benchmark instances effectively.

https://doi.org/10.1016/j.ejor.2018.04.047