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The reciprocal approximation in stochastic analysis of structures

โœ Scribed by Moshe B. Fuchs; Eitan Shabtay


Book ID
104364014
Publisher
Elsevier Science
Year
2000
Tongue
English
Weight
268 KB
Volume
11
Category
Article
ISSN
0960-0779

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โœฆ Synopsis


A stochastic analysis of structures usually requires multiple reanalysis of the structures to compute the statistics of the structural response. A similar problem exists in the design of optimal structures where many analysis are needed before reaching the extremal solution. In both ยฎelds the reanalysis requirements are considered as an unacceptable numerical burden. To circumvent the reanalysis obstacle investigators have been using approximate analysis. Common methods are ยฎrst and second-order series expansions of the nodal displacements, and related perturbation methods. Interestingly, a popular approximation method in structural design, the reciprocal approximation technique, has not been used in stochastic analysis. This paper shows that this method can easily be used to compute the statistics of the structural response. When expanding the displacements linearly in terms of the reciprocals of the element stinesses, one obtains, as a rule, better results than with a linear Taylor expansion. It is shown that for low values of the relative redundancy the method yields second order quality approximations. Unlike many other techniques, the reciprocal approximation also produces the statistics of the internal forces. The theory is illustrated with typical beam and arch trusses and is compared with existing stochastic methods.


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