A decision-tree framework to select optimal box-sizes for product shipments
Karthik S. Gurumoorthy, Abhiraj Hinge

TL;DR
This paper introduces a decision-tree clustering framework to optimize box sizes for product shipments, reducing volume and air space wastage in e-commerce logistics.
Contribution
It presents a novel, efficient decision-tree based clustering method for selecting a limited set of box sizes tailored to product dimensions.
Findings
Achieved 4.4% reduction in shipment volume using existing boxes.
Reduced non-utilized air volume by 2.2%.
Further improvements of 10.3% volume reduction with additional box sizes.
Abstract
In package-handling facilities, boxes of varying sizes are used to ship products. Improperly sized boxes with box dimensions much larger than the product dimensions create wastage and unduly increase the shipping costs. Since it is infeasible to make unique, tailor-made boxes for each of the products, the fundamental question that confronts e-commerce companies is: How many cuboidal boxes need to manufactured and what should be their dimensions? In this paper, we propose a solution for the single-count shipment containing one product per box in two steps: (i) reduce it to a clustering problem in the dimensional space of length, width and height where each cluster corresponds to the group of products that will be shipped in a particular size variant, and (ii) present an efficient forward-backward decision tree based clustering method with low computational complexity on…
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Taxonomy
TopicsAdvanced Manufacturing and Logistics Optimization · Urban and Freight Transport Logistics · Optimization and Packing Problems
