Column generation and sequential heuristic procedure for solving an irregular shape cutting stock problem
Column generation and sequential heuristic procedure for solving an irregular shape cutting stock problem
The research addressing two-dimensional (2D) irregular shape packing has largely focused on the strip packing variant of the problem. However, it can be argued that this is a simplification. The materials from which pieces are required to be cut will ultimately have a fixed length either due to the physical dimensions of the material or through constraints on the cutting machinery. Hence, in order to cut all the pieces, multiple sheets may be required. From this scenario arises the 2D irregular shape cutting stock problem. In this paper, we will present implementations of cutting stock approaches adapted to handle irregular shapes, including two approaches based on column generation (CG) and a sequential heuristic procedure. In many applications, setup costs can be reduced if the same pattern layout is cut from multiple sheets; hence there is a trade-off between material waste and number of patterns. Therefore, we describe the formulation and implementation of an adaptation of the CG method to control the number of different patterns. CG is a common method for the cutting stock problem; however, when the pieces are irregular the sub-problem cannot be solved optimally. Hence we implement CG and solve the subproblem using the beam search heuristic. Further, we introduce a version of CG for instances where the number of rows is less than the number of columns.
1037-1052
Song, Xiang
28fc03d0-9077-49f5-bc94-a4f92fa76565
Bennell, Julia A.
38d924bc-c870-4641-9448-1ac8dd663a30
July 2014
Song, Xiang
28fc03d0-9077-49f5-bc94-a4f92fa76565
Bennell, Julia A.
38d924bc-c870-4641-9448-1ac8dd663a30
Song, Xiang and Bennell, Julia A.
(2014)
Column generation and sequential heuristic procedure for solving an irregular shape cutting stock problem.
Journal of the Operational Research Society, 65, .
(doi:10.1057/jors.2013.44).
Abstract
The research addressing two-dimensional (2D) irregular shape packing has largely focused on the strip packing variant of the problem. However, it can be argued that this is a simplification. The materials from which pieces are required to be cut will ultimately have a fixed length either due to the physical dimensions of the material or through constraints on the cutting machinery. Hence, in order to cut all the pieces, multiple sheets may be required. From this scenario arises the 2D irregular shape cutting stock problem. In this paper, we will present implementations of cutting stock approaches adapted to handle irregular shapes, including two approaches based on column generation (CG) and a sequential heuristic procedure. In many applications, setup costs can be reduced if the same pattern layout is cut from multiple sheets; hence there is a trade-off between material waste and number of patterns. Therefore, we describe the formulation and implementation of an adaptation of the CG method to control the number of different patterns. CG is a common method for the cutting stock problem; however, when the pieces are irregular the sub-problem cannot be solved optimally. Hence we implement CG and solve the subproblem using the beam search heuristic. Further, we introduce a version of CG for instances where the number of rows is less than the number of columns.
Text
Song&Bennell_JORS_final.pdf
- Accepted Manuscript
More information
e-pub ahead of print date: 8 May 2013
Published date: July 2014
Organisations:
Centre of Excellence for International Banking, Finance & Accounting
Identifiers
Local EPrints ID: 352258
URI: http://eprints.soton.ac.uk/id/eprint/352258
ISSN: 0160-5682
PURE UUID: 2f77f3ff-5b96-4c4f-9268-9bc8e9a7acc4
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Date deposited: 08 May 2013 11:45
Last modified: 14 Mar 2024 13:49
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Author:
Xiang Song
Author:
Julia A. Bennell
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