Publication | Closed Access
Dynamics and performance modeling of multi-stage manufacturing systems using nonlinear stochastic differential equations
22
Citations
12
References
2008
Year
Unknown Venue
EngineeringMulti-stage Manufacturing SystemsIndustrial EngineeringSimulationAutomated ManufacturingOperations ResearchSystems EngineeringModeling And SimulationComputer EngineeringManufacturing PlanningIt InfrastructureManufacturing SystemsSupply Chain ManagementSigmoid Function TheoryProduction ControlProcess Simulation ModelPerformance ModelingProcess ControlBusinessMechanic Manufacturing SystemProduction EngineeringIndustrial InformaticsFactory ModelingModern Manufacturing Enterprises
Modern manufacturing enterprises have invested in a variety of sensors and IT infrastructure to increase plant floor information visibility. This offers an unprecedented opportunity to track performances of manufacturing systems from a dynamic, as opposed to static, sense. Conventional static models are inadequate to model manufacturing system performance variations in real-time from these large non-stationary data sources. This paper addresses a physics-based approach to model the performance outputs (e.g., throughputs, uptimes, and yield rates) from a multi-stage manufacturing system. Unlike previous methods, degradation and repair dynamics that influence downtime distributions in such manufacturing systems are explicitly considered. Sigmoid function theory is used to remove discontinuities in the models. The resulting model is validated using real-world datasets acquired from the General Motorpsilas assembly lines, and it is found to capture dynamics of downtime better than traditional exponential distribution based simulation models.
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