• Media type: E-Article
  • Title: Study on multi-objective flexible job-shop scheduling problem considering energy consumption
  • Contributor: Jiang, Zengqiang [Author]; Le, Zuo [Author]; E, Mingcheng [Author]
  • imprint: Barcelona: OmniaScience, 2014
  • Language: English
  • DOI: https://doi.org/10.3926/jiem.1075
  • ISSN: 2013-0953
  • Keywords: energy consumption ; flexible job-shop scheduling ; multi-objective scheduling ; NSGA-II ; blood variation
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  • Description: Purpose: Build a multi-objective Flexible Job-shop Scheduling Problem(FJSP) optimization model, in which the makespan, processing cost, energy consumption and cost-weighted processing quality are considered, then Design a Modified Non-dominated Sorting Genetic Algorithm (NSGA-II) based on blood variation for above scheduling model. Design/methodology/approach: A multi-objective optimization theory based on Pareto optimal method is used in carrying out the optimization model. NSGA-II is used to solve the model. Findings: By analyzing the research status and insufficiency of multi-objective FJSP, Find that the difference in scheduling will also have an effect on energy consumption in machining process and environmental emissions. Therefore, job-shop scheduling requires not only guaranteeing the processing quality, time and cost, but also optimizing operation plan of machines and minimizing energy consumption. Originality/value: A multi-objective FJSP optimization model is put forward, in which the makespan, processing cost, energy consumption and cost-weighted processing quality are considered. According to above model, Blood-Variation-based NSGA-II (BVNSGA-II) is designed. In which, the chromosome mutation rate is determined after calculating the blood relationship between two cross chromosomes, crossover and mutation strategy of NSGA-II is optimized and the prematurity of population is overcome. Finally, the performance of the proposed model and algorithm is evaluated through a case study, and the results proved the efficiency and feasibility of the proposed model and algorithm.
  • Access State: Open Access