Title :
A DE-based algorithm for reentrant permutation flow-shop scheduling with different job reentrant times
Author :
Bin Qian ; Jing Wan ; Bo Liu ; Rong Hu ; Guo-Lin Che
Author_Institution :
Dept. of Autom., Kunming Univ. of Sci. & Technol., Kunming, China
Abstract :
The m-machine reentrant permutation flow-shop scheduling problem with different job reentrant times (MRPFSSP_DJRT) is a more practical optimization problem in semiconductor manufacturing industries. However, this important problem has not attracted any attention from an academic standpoint. In this work, a differential evolution (DE) algorithm with two strategies is proposed for solving MRPFSSP_DJRT. Firstly, a largest-order-value (LOV) rule based on random key representation is presented to convert the continuous values of individuals in DE to operation-based job permutations. Then, after the DE-based exploration, an Interchange-based local search with two problem-dependent strategies (i.e., speed-up strategy and change neighborhood strategy) is developed and incorporated into DE to enhance the exploitation ability. Simulation results and comparisons show the effectiveness of the proposed algorithm.
Keywords :
evolutionary computation; flow shop scheduling; optimisation; search problems; DE algorithm; DE-based algorithm; DE-based exploration; LOV rule; MRPFSSP_DJRT; change neighborhood strategy; continuous values; different job reentrant times; differential evolution algorithm; exploitation ability enhancement; interchange-based local search; largest-order-value rule; m-machine reentrant permutation flow-shop scheduling problem; operation-based job permutations; optimization problem; problem-dependent strategies; random key representation; semiconductor manufacturing industries; speed-up strategy; Job shop scheduling; Processor scheduling; Schedules; Simulation; Sociology; Statistics; Interchange-based local search; change neighborhood strategy; different job reentrant times; differential evolution algorithm; reentrant permutation flow-shop scheduling problem; speed-up strategy;
Conference_Titel :
Computational Intelligence in Scheduling (SCIS), 2013 IEEE Symposium on
Conference_Location :
Singapore
DOI :
10.1109/SCIS.2013.6613248