Advanced Search

International Journal of Production Research

Volume 48, Issue 22, 2010

JIT mixed-model sequencing with batching and setup considerations via search heuristics

JIT mixed-model sequencing with batching and setup considerations via search heuristics

DOI:
10.1080/00207540903321640
Patrick R. McMullena*

pages 6559-6582

Available online: 21 Dec 2009

Abstract

This research addresses the problem of sequencing items for production when it is desired that the production sequences result in minimal usage rates–surrogate measures for flexibility in a JIT environment. While seeking sequences with minimal usage rates, the number of required setups for the sequences is also considered, along with feasible batch-sizing combinations. The general intent is to find minimum usage-rate sequences for each associated number of setups and total batches. This multiple objective problem is addressed via a three-dimensional efficient frontier. Because the combinatorial nature of sequencing problems typically provides an intractable search space for problems of ‘real world’ size, the search heuristics of simulated annealing and genetic algorithms are presented and used to find solutions for several problem sets from the literature. Experimentation shows that the simulated annealing approach outperforms the genetic algorithm approach in both objective function and CPU performance.

Keywords

 

Details

  • Available online: 21 Dec 2009

Author affiliations

  • a Wake Forest University, Schools of Business, Winston-Salem, NC 27109, USA

Journal news

  • 2010 Impact Factor now 1.033 up from 0.803 in 2009
free access to inaugural issue

Librarians

Taylor & Francis Group