4.4 Article

Bin packing with lexicographic objectives for loading weight- and volume-constrained trucks in a direct-shipping system

Journal

OR SPECTRUM
Volume 44, Issue 2, Pages 375-417

Publisher

SPRINGER
DOI: 10.1007/s00291-021-00628-x

Keywords

Bin packing; Lexicographic objective; Heuristics; Column generation; Dual-optimal inequalities

Funding

  1. Field of Excellence COLIBRI at the University of Graz

Ask authors/readers for more resources

This study tackles a packing problem in the food and beverage industry direct-shipping system, focusing on optimizing truck utilization while considering different product categories and constraints. The authors propose a heuristic and an exact solution approach, demonstrating the applicability through computational results on real-world and difficult instances.
We consider a packing problem that arises in a direct-shipping system in the food and beverage industry: Trucks are the containers, and products to be distributed are the items. The packing is constrained by two independent quantities, weight (e.g., measured in kg) and volume (number of pallets). Additionally, the products are grouped into the three categories: standard, cooled, and frozen (the latter two require refrigerated trucks). Products of different categories can be transported in one truck using separated zones, but the cost of a truck depends on the transported product categories. Moreover, splitting orders of a product should be avoided so that (un-)loading is simplified. As a result, we seek for a feasible packing optimizing the following objective functions in a strictly lexicographic sense: minimize the (1) total number of trucks; (2) number of refrigerated trucks; (3) number of refrigerated trucks which contain frozen products; (4) number of refrigerated trucks which also transport standard products; (5) and minimize splitting. This is a real-world application of a bin-packing problem with cardinality constraints a.k.a. the two-dimensional vector packing problem with additional constraints. We provide a heuristic and an exact solution approach. The heuristic meta-scheme considers the multi-compartment and item fragmentation features of the problem and applies various problem-specific heuristics. The exact solution algorithm covering all five stages is based on branch-and-price using stabilization techniques exploiting dual-optimal inequalities. Computational results on real-world and difficult self-generated instances prove the applicability of our approach.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.4
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available