Title of article
Makespan Minimization using Hybrid Heuristic Metaheuristic Genetic Algorithm
Author/Authors
BARI ، PRASAD Department of Mechanical Engineering - Fr. C. Rodrigues Institute of Technology , KARANDE ، PRASAD Department of Mechanical Engineering - Veermata Jijabai Technological Institute
From page
133
To page
148
Abstract
This paper presents a model for minimizing the makespan in the flow shop scheduling problem. Due to the impact of increased workloads, flow shops are becoming more popular and widely used in industries. To solve the challenge of minimizing makespan, a Hybrid-Heuristic-Metaheuristic-Genetic-Algorithm (HHMGA) is proposed. The proposed HHMGA algorithm is tested using the simulation software and demonstrated with steel industry data. The results are compared with those of the best available flow shop problem algorithms such as Palmer’s slope index, Campbell-Dudek-Smith (CDS), Nawaz-Enscore-Ham (NEH), genetic algorithm (GA) and particle swarm optimization (PSO). According to empirical results and relative differences from the lower bound, the proposed technique outperforms the three heuristics and two metaheuristics algorithms in three of six cases, while the remaining three produce the same results as the NEH heuristic. In comparison to the steel industry’s regular job scheduling technique, the simulation model based on HHMGA can save 4642 hours. It was discovered that the suggested model enhanced the job sequence based on the makespan requirements.
Keywords
Makespan , Scheduling , Heuristic , Metaheuristic , Genetic algorithm , Lower bound
Journal title
International Journal of Industrial Engineering and Production Research
Journal title
International Journal of Industrial Engineering and Production Research
Record number
2767594
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