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Shape Optimization Under Uncertainty From A Stochastic Programming Point Of View Harald Held

  • SKU: BELL-1377290
Shape Optimization Under Uncertainty From A Stochastic Programming Point Of View Harald Held
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Shape Optimization Under Uncertainty From A Stochastic Programming Point Of View Harald Held instant download after payment.

Publisher: Vieweg and Teubner
File Extension: PDF
File size: 1.01 MB
Pages: 140
Author: Harald Held
ISBN: 9783834809094, 3834809098
Language: English
Year: 2009

Product desciption

Shape Optimization Under Uncertainty From A Stochastic Programming Point Of View Harald Held by Harald Held 9783834809094, 3834809098 instant download after payment.

Optimization problems are relevant in many areas of technical, industrial, and economic applications. At the same time, they pose challenging mathematical research problems in numerical analysis optimization. Harald Held considers an elastic body subjected to uncertain internal and external forces. Since simply averaging the possible loadings will result in a structure that might not be robust for the individual loadings, he uses techniques from level set-based shape optimization and two-stage stochastic programming. Taking advantage of the PDE's linearity, he is able to compute solutions for an arbitrary number of scenarios without significantly increasing the computational effort. The author applies a gradient method using the shape derivative and the topological gradient to minimize, e.g., the compliance. The stochastic programming perspective also allows incorporating risk measures into the model which might be more appropriate objective in many practical applications.

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