A Least-Loss Algorithm for a Bi-Objective One-Dimensional Cutting-Stock Problem

Author:

Alfares Hesham K.1ORCID,Alsawafy Omar G.1

Affiliation:

1. King Fahd University of Petroleum and Minerals, Dhahran, Saudi Arabia

Abstract

This article presents a new model and an efficient solution algorithm for a bi-objective one-dimensional cutting-stock problem. In the cutting-stock—or trim-loss—problem, customer orders of different smaller item sizes are satisfied by cutting a number of larger standard-size objects. After cutting larger objects to satisfy orders for smaller items, the remaining parts are considered as useless or wasted material, which is called “trim-loss.” The two objectives of the proposed model, in the order of priority, are to minimize the total trim loss, and the number of partially cut large objects. To produce near-optimum solutions, a two-stage least-loss algorithm (LLA) is used to determine the combinations of small item sizes that minimize the trim loss quantity. Solving a real-life industrial problem as well as several benchmark problems from the literature, the algorithm demonstrated considerable effectiveness in terms of both objectives, in addition to high computational efficiency.

Publisher

IGI Global

Subject

General Medicine

Reference36 articles.

1. Alfares, H. K., & Alsawafy, O. G. (2017). Efficient least-loss algorithm for a bi-objective trim-loss problem. In Proceedings of the 2017 International Conference on Industrial Engineering and Operations Management, Rabat, Morocco (pp. 2118-2122). Academic Press.

2. A comparative study of exact methods for the bi-objective integer one-dimensional cutting stock problem

3. A branch-and-price-and-cut algorithm for the pattern minimization problem

4. Sufficient condition for partial efficiency in a bicriteria nonlinear cutting stock problem

5. A GENETIC ALGORITHM FOR THE ONE-DIMENSIONAL CUTTING STOCK PROBLEM WITH SETUPS

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