Abstract
Implementing digital transformation in the garment industry is very difficult, owing to its labor-intensive structural characteristics. Further, the productivity of a garment production system is considerably influenced by a combination of processes and operators. This study proposes a simulation-based hybrid optimization method to maximize the productivity of a garment production line. The simulation reflects the actual site characteristics, i.e., process and operator level indices, and the optimization process reflects constraints based on expert knowledge. The optimization process derives an optimal operator sequence through a genetic algorithm (GA) and sequentially removes bottlenecks through workload analysis based on the results. The proposed simulation optimization (SO) method improved productivity by ∼67.4%, which is 52.3% higher than that obtained by the existing meta-heuristic algorithm. The correlation between workload and production was verified by analyzing the workload change trends. This study holds significance because it presents a new simulationbased optimization model that further applies the workload distribution method by eliminating bottlenecks and digitizing garment production lines.
Author supplied keywords
Cite
CITATION STYLE
Jung, W. K., Park, Y. C., Lee, J. W., & Suh, E. S. (2021). Simulation-based hybrid optimization method for the digital twin of garment production lines. Journal of Computing and Information Science in Engineering, 21(3). https://doi.org/10.1115/1.4050245
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.