4.6 Article

A Novel Integer Linear Programming Formulation for Job-Shop Scheduling Problems

Journal

IEEE ROBOTICS AND AUTOMATION LETTERS
Volume 6, Issue 3, Pages 5937-5944

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2021.3086422

Keywords

Manufacturing; job-shop scheduling; integer linear programming; decomposition and coordination

Categories

Funding

  1. Chinese National Innovation Center of High Speed Train R&D project Modeling and comprehensive intelligent optimization for new high efficiency urban rail transit system [CX/KJ-2020-0006]

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This letter presents a novel ILP formulation for job-shop scheduling problems, which significantly reduces computational requirements while ensuring quality by improving existing ILP formulations. By enhancing the SAVLR method under the new formulation, near-optimal solutions are efficiently obtained for large problems where traditional methods have difficulties.
Job-shop scheduling is an important but difficult problem arising in low-volume high-variety manufacturing. It is usually solved at the beginning of each shift with strict computational time requirements. To obtain near-optimal solutions with quantifiable quality within strict time limits, a direction is to formulate them in an Integer Linear Programming (ILP) form so as to take advantages of widely available ILP methods such as Branch-and-Cut (B&C). Nevertheless, computational requirements for ILP methods on existing ILP formulations are high. In this letter, a novel ILP formulation for minimizing total weighted tardiness is presented. The new formulation has much fewer decision variables and constraints, and is proven to be tighter as compared to our previous formulation. For fast resolution of large problems, our recent decomposition-and-coordination method Surrogate Absolute-Value Lagrangian Relaxation (SAVLR) is enhanced by using a 3-segment piecewise linear penalty function, which more accurately approximates a quadratic penalty function as compared to an absolute-value function. Testing results demonstrate that our new formulation drastically reduces the computational requirements of B&C as compared to our previous formulation. For large problems where B&C has difficulties, near-optimal solutions are efficiently obtained by using the enhanced SAVLR under the new formulation.

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