Hybrid model and method for determining mechanical properties and processing properties of an injection-molded part

kA method of predicting the properties (e.g., mechanical and/or processing properties) of an injection-molded article is disclosed. The method makes use of a hybrid model which includes at least one neural network. In order to forecast (or predict) properties with respect to the manufacture of a pla...

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Hauptverfasser: Sarabi, Bahman, Mrziglod, Thomas, Salewski, Klaus, Loosen, Roland, Wanders, Martin
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creator Sarabi, Bahman
Mrziglod, Thomas
Salewski, Klaus
Loosen, Roland
Wanders, Martin
description kA method of predicting the properties (e.g., mechanical and/or processing properties) of an injection-molded article is disclosed. The method makes use of a hybrid model which includes at least one neural network. In order to forecast (or predict) properties with respect to the manufacture of a plastic molded article, a hybrid model is used in the present invention, which includes: one or more neural networks NN, NN, NN, NN, . . . , NN; and optionally one or more rigorous models R, R, R, R, . . . , which are connected to one another. The rigorous models are used to map model elements which can be described in mathematical formulae. The neural networks are used to map processes whose relationship is present only in the form of data, as it is in effect impossible to model such processes rigorously. As a result, a forecast relating to properties including the mechanical, thermal and rheological processing properties and relating to the process time of a plastic molded article is obtained.
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title Hybrid model and method for determining mechanical properties and processing properties of an injection-molded part
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