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Approximation Methods For High Dimensional Simulation Results Parameter Sensitivity Analysis And Propagation Of Variations For Process Chains 1st Edition Daniela Steffeslai

  • SKU: BELL-51656066
Approximation Methods For High Dimensional Simulation Results Parameter Sensitivity Analysis And Propagation Of Variations For Process Chains 1st Edition Daniela Steffeslai
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Approximation Methods For High Dimensional Simulation Results Parameter Sensitivity Analysis And Propagation Of Variations For Process Chains 1st Edition Daniela Steffeslai instant download after payment.

Publisher: Logos Verlag Berlin
File Extension: PDF
File size: 15.78 MB
Pages: 232
Author: Daniela Steffes-lai
ISBN: 9783832591632, 383259163X
Language: English
Year: 2014
Edition: 1

Product desciption

Approximation Methods For High Dimensional Simulation Results Parameter Sensitivity Analysis And Propagation Of Variations For Process Chains 1st Edition Daniela Steffeslai by Daniela Steffes-lai 9783832591632, 383259163X instant download after payment.

This work addresses the analysis of a sequential chain of processing steps, which is particularly important for the manufacture of robust product components. In each processing step, the material properties may have changed and distributions of related characteristics, for example, strains, may become inhomogeneous. For this reason, the history of the process including design-parameter uncertainties becomes relevant for subsequent processing steps. Therefore, we have developed a methodology, called PRO-CHAIN, which enables an efficient analysis, quantification, and propagation of uncertainties for complex process chains locally on the entire mesh. This innovative methodology has the objective to improve the overall forecast quality, specifically, in local regions of interest, while minimizing the computational effort of subsequent analysis steps. We have demonstrated the benefits and efficiency of the methodology proposed by means of real applications from the automotive industry.

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