| Literature DB >> 35631931 |
Ismael Viejo1, Salvador Izquierdo1, Ignacio Conde1, Valentina Zambrano1, Noelia Alcalá1, Leticia A Gracia1.
Abstract
Industrial manufacturing management can benefit from the use of modeling. For a correct representation of the manufacturing process and the subsequent management, the models must incorporate the effect of the uncertainty propagation throughout the stages considered. In this paper, the proposed methodology for uncertainty management uses a nonintrusive method that is based on building a deterministic physics-informed real-time model for the a posteriori computation of output uncertainties. This model is built using tensor factorization as the Model Order Reduction technique. It includes as model parameters: material properties, process operations, and those random and epistemic uncertainties of known variables. The resulting model is used off-line to identify sensitivities and therefore to unify uncertainty management across the material transformation process. This method is presented by its direct application to an automotive door seal manufactured by continuous co-extrusion of several rubbers and reinforcement (metal strip and glass fiber thread).Entities:
Keywords: finite element analysis; material characterization; process modeling; rubber industry; uncertainty
Year: 2022 PMID: 35631931 PMCID: PMC9146617 DOI: 10.3390/polym14102049
Source DB: PubMed Journal: Polymers (Basel) ISSN: 2073-4360 Impact factor: 4.967
Figure 1Summary of the uncertainty management methodology with application to material transformation processes.
Figure 2Scheme of the manufacturing process for the automotive door seal.
Figure 3Fully-coupled algorithm of thermal-mechanical simulation with subroutines for kinetics coupling.
Figure 4Parts of the automotive door seal.
Figure 5Scheme of the thermal treatment of the extrusion line and associated boundary conditions applied for the simulation.
Parameters of the FE model.
| Parameter | Type of Parameter | Value ± Range |
|---|---|---|
| Velocity of pulling the profile | uncertainty | 20 ± 5 m/min |
| Pressure in big cavity | controllable | 1500 ± 300 Pa |
| Pressure in small cavity | controllable | 400 ± 300 Pa |
| Ratio of RPM foamed vs. no foamed | controllable | 0.335 ± 10% |
| Ratio of nominal heat in IR oven | controllable | 0.95 ± 0.15 |
| Ratio of nominal heat in Microwave oven | uncertainty | 0.55 ± 0.45 |
| Temperate in Gas1 oven | controllable | 380 ± 100 °C |
| Temperate in Gas2 oven | controllable | 350 ± 100 °C |
| Coefficient of foaming expansion | uncertainty | 0.1275 ± 0.1025 |
Figure 6Position where the thickness is measured also includes the overlaying of the manufactured product (black section) and the FEM results (green line).
Figure 7Numerical tool to visualize and explore results from the process subrogate model.
Figure 8Forward UQ application using process subrogate modeling.