by Jose E. Linares Blasini, Sonia M. Bartolomei Suarez, Wandaliz Torres-Garcia
As presented at the 2019 Winter Simulation Conference
The use of deterministic scheduling for high-mix and low-volume manufacturing facility is inefficient and obsolete due to the inherent variability and occurrence of uncertain events in the manufacturing floor. This project develops a robust scheduling tool for a high-mix low-volume manufacturing facility with sequencedependent setup times taking into consideration some of the inherent variability of the manufacturing floor. This scheduling tool is created using the Simio software package to enable the creation of schedules that adjust to schedulers’ needs while incorporating manufacturing constraints. This analytical tool was created to solve an existing problem for a local industry partner and it was investigated further through a case study.
Introduction
Production scheduling in a real-life scenario is very complex, specifically when the process includes changeovers that are time-consuming and sequence-dependent. Manufacturing facilities with a large volume of products from a small mixture of family products (high-volume & low-mix) can handle the scheduling task with more ease as fewer changeovers are needed. Exactly the opposite occurs in the planning process of a high-mix and low-volume manufacturing environment. The complexity in creating a schedule is increased as more and more setups are needed to satisfy demand requirements. A way to tackle the complexity of scheduling is by using a simulation approach. A properly validated simulation model that explains most of the variability in the production environment is used as an input to the optimization of resources and schedules. The variability in the system can be captured when using a simulation model with well-defined random variables such as downtime, repair time, absenteeism, machining time, and changeover time. A schedule that considers variation in the manufacturing floor along with other details can help reduce backorders of certain products with demand. A main decision factor in the scheduling process is the dispatching rule used which we investigate in this work using simulation.