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Stochastic Finite Elements

Stochastic Finite Elements

$5.93

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Stochastic Finite Elements

$16.95

$5.93

The Story

Discrepancies frequently occur between a physical system's responses and predictions obtained from mathematical models. The Spectral Stochastic Finite Element Method (SSFEM) has proven successful at forecasting a variety of uncertainties in calculating system responses. This text analyzes a class of discrete mathematical models of engineering systems, identifying key issues and reviewing relevant theoretical concepts, with particular attention to a spectral approach.
Random system parameters are modeled as second-order stochastic processes, defined by their mean and covariance functions. Relying on the spectral properties of the covariance function, the Karhunen-Loeve expansion is employed to represent these processes in terms of a countable set of uncorrected random variables, casting the problem in a finite dimensional setting. Various spectral approximations for the stochastic response of the system are obtained. Implementing the concept of generalized inverse leads to an explicit expression for the response process as a multivariate polynomial functional of a set of uncorrelated random variables. Alternatively, the solution process is treated as an element in the Hilbert space of random functions, in which a spectral representation is identified in terms of polynomial chaos. In this context, the solution process is approximated by its projection onto a finite subspace spanned by these polynomials.

Reprint of the Springer-Verlag, New York, 1991 edition.
mathematics; study of mathematics; discrepancies physical systems responses and predictions; predictions and mathematics; self study; predictions; calculating system responses; discrete mathematical models; engineering systems; relevant theoretical concepts; spectral approach; stochastic processes; covariance functions; engineering; geometry; engaging; complex; technology; career; science and math; realistic; random systems; discrete mathematical models; second order stochastic processes

Description

Discrepancies frequently occur between a physical system's responses and predictions obtained from mathematical models. The Spectral Stochastic Finite Element Method (SSFEM) has proven successful at forecasting a variety of uncertainties in calculating system responses. This text analyzes a class of discrete mathematical models of engineering systems, identifying key issues and reviewing relevant theoretical concepts, with particular attention to a spectral approach.
Random system parameters are modeled as second-order stochastic processes, defined by their mean and covariance functions. Relying on the spectral properties of the covariance function, the Karhunen-Loeve expansion is employed to represent these processes in terms of a countable set of uncorrected random variables, casting the problem in a finite dimensional setting. Various spectral approximations for the stochastic response of the system are obtained. Implementing the concept of generalized inverse leads to an explicit expression for the response process as a multivariate polynomial functional of a set of uncorrelated random variables. Alternatively, the solution process is treated as an element in the Hilbert space of random functions, in which a spectral representation is identified in terms of polynomial chaos. In this context, the solution process is approximated by its projection onto a finite subspace spanned by these polynomials.

Reprint of the Springer-Verlag, New York, 1991 edition.
mathematics; study of mathematics; discrepancies physical systems responses and predictions; predictions and mathematics; self study; predictions; calculating system responses; discrete mathematical models; engineering systems; relevant theoretical concepts; spectral approach; stochastic processes; covariance functions; engineering; geometry; engaging; complex; technology; career; science and math; realistic; random systems; discrete mathematical models; second order stochastic processes