Submitted:
25 March 2025
Posted:
27 March 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods

- Production downtime
- Material shortages
- Time constraints
- Production stoppages
- Disruptions in meeting daily production plans
- Failure to fulfill customer orders
- Low machine efficiency
- Process blockages
- Increased movement between production lines
- Other operational inefficiencies



3. Proposed Solutions for the Elimination of Bottlenecks
- Tugger train operators – 2 employees
- Production operators – 20 employees
- Line supervisors – 4 employees
- Maintenance service – 2 employees
- Security personnel – 1 employee
- Production and technical staff – 3 employees
- Data analysts – 2 employees
- Process engineers – 3 employees
- Shift supervisor – 1 employee
5. Conclusions

Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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| Planned ideal state | State proposed and verified through simulation | Actual state during data collection | |
| Number of collisions per month | 0 | 0 | 9 |
| Production capacity (units/production line) | 1200 | 950 | 825 |
| Loading time of the tugger trains | 90 minutes | <105 minutes | <120 minutes |
| Tugger train time in the production hall | < 30 minutes | < 20 minutes | < 44 minutes |
| Kanban replenishment time | < 3 minutes | < 2 minutes | < 1,32 minutes |
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