Optimization Strategy for Process Design in Rubber Injection Molding: A Simulation-Based Approach Allowing for the Prediction of Mechanical Properties of Vulcanizates
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In: Polymers, Vol. 16.2024, No. 14, 2033, 17.07.2024.
Research output: Contribution to journal › Article › Research › peer-review
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TY - JOUR
T1 - Optimization Strategy for Process Design in Rubber Injection Molding
T2 - A Simulation-Based Approach Allowing for the Prediction of Mechanical Properties of Vulcanizates
AU - Traintinger, Martin
AU - Azevedo, Maurício
AU - Kerschbaumer, Roman Christopher
AU - Lechner, Bernhard
AU - Lucyshyn, Thomas
N1 - Publisher Copyright: © 2024 by the authors.
PY - 2024/7/17
Y1 - 2024/7/17
N2 - Selecting the optimal settings for the production of rubber goods can be a very time-consuming and resource-intensive process. A promising method for optimizing rubber processing in a short period of time is the use of simulation routines. However, process simulations have only recently enabled meaningful predictions of not only the part’s state of cure but also its mechanical characteristics. As a first approach, second-order polynomials were considered suitable for describing the properties of compression-molded parts. However, more precision is required for injection molding due to the narrower distribution of mechanical characteristics of parts produced at different vulcanization temperatures. This became evident when the approximation of mechanical data with second order models partly revealed significant failures of part behavior prediction. To tackle this issue, a combined approach for approximation is proposed in this contribution by means of logistic growth function in addition to second order polynomials. To feed the model, an experimental plan was designed for producing injection-molded parts from an SBR compound at various temperatures and to different degrees of cure. The parts obtained were then characterized mechanically, and the results were opposed to varying degrees of cure and extents of reaction to calculate the model coefficients. Once available, a simulation-based calculation of the mechanical part quality is possible. The comparison of test results from the simulation and the real process has shown a reliable prediction, as simulation results were found within the natural deviation of the real measurements.
AB - Selecting the optimal settings for the production of rubber goods can be a very time-consuming and resource-intensive process. A promising method for optimizing rubber processing in a short period of time is the use of simulation routines. However, process simulations have only recently enabled meaningful predictions of not only the part’s state of cure but also its mechanical characteristics. As a first approach, second-order polynomials were considered suitable for describing the properties of compression-molded parts. However, more precision is required for injection molding due to the narrower distribution of mechanical characteristics of parts produced at different vulcanization temperatures. This became evident when the approximation of mechanical data with second order models partly revealed significant failures of part behavior prediction. To tackle this issue, a combined approach for approximation is proposed in this contribution by means of logistic growth function in addition to second order polynomials. To feed the model, an experimental plan was designed for producing injection-molded parts from an SBR compound at various temperatures and to different degrees of cure. The parts obtained were then characterized mechanically, and the results were opposed to varying degrees of cure and extents of reaction to calculate the model coefficients. Once available, a simulation-based calculation of the mechanical part quality is possible. The comparison of test results from the simulation and the real process has shown a reliable prediction, as simulation results were found within the natural deviation of the real measurements.
KW - injection molding
KW - logistic growth
KW - mechanical characterization
KW - optimization
KW - rubber part quality
KW - simulation
KW - sustainability
UR - http://www.scopus.com/inward/record.url?scp=85199662992&partnerID=8YFLogxK
U2 - 10.3390/polym16142033
DO - 10.3390/polym16142033
M3 - Article
AN - SCOPUS:85199662992
VL - 16.2024
JO - Polymers
JF - Polymers
SN - 2073-4360
IS - 14
M1 - 2033
ER -