Efficient cutting stock optimization strategies for the steel industry

Journal article


Authors/Editors


Strategic Research Themes


Publication Details

Author listChattriya Jariyavajee, Suthida Fairee, Charoenchai Khompatraporn, Jumpol Polvichai, Booncharoen Sirinaovakul

PublisherPublic Library of Science

Publication year2025

JournalPLoS ONE (1932-6203)

Volume number20

Issue number3

ISSN1932-6203

eISSN1932-6203

URLhttps://journals.plos.org/plosone/article?id=10.1371/journal.pone.0319644

LanguagesEnglish-United States (EN-US)


View on publisher site


Abstract

This study addresses a cutting stock problem in steel cutting industry by developing a mathematical model in which machine specifications and cutting conditions are constraints. The solution process involves three key steps: (i) Problem representation, where feasible cutting solutions are modeled based on pre-cut steel bars and customer orders, (ii) Problem space reduction, which reduces the problem space by eliminating suboptimal solutions and following manufacturer loss limits, and (iii) Optimal solution search, whereas the optimal solution is identified using a new Adaptive Pathfinding Optimization Algorithm. This algorithm combines a newly proposed Wandering Ant Colony Optimization with a brute force method, and uses specific conditions to determine which of these two approaches to be used to obtain the solution. The proposed algorithm can also be applied to other cutting stock problems, such as paper roll cutting, metal rod cutting, and wood plank cutting. The algorithm was applied to real customer orders in a steel manufacturer and showed significant benefits by reducing the number of planners from four to merely one person and decreasing the cutting planning time from six hours to under one hour. Additionally, the algorithm yields an average cost saving of USD 3.95 per ton, or 52.18% of the baseline.


Keywords

Cutting Stock ProblemHybrid-Approach Optimization AlgorithmMachine Specifications and Cutting ConditionsProblem Space ReductionWandering Ant Colony Optimization


Last updated on 2025-01-04 at 00:00