Article ID Journal Published Year Pages File Type
511460 Computers & Structures 2007 13 Pages PDF
Abstract

The Karhunen–Loève (K–L) expansion has been successfully applied to the simulation of highly skewed non-Gaussian processes based on the prescribed covariance and marginal distribution functions. When the stationary random process is indexed over a domain that is much larger than the correlation distance, the K–L expansion will approach the spectral representation. The non-Gaussian K–L technique is applied in the popular spectral representation as a special case to facilitate comparison with translation-based spectral representation. Processes with both incompatible and compatible spectral density and marginal distribution functions are simulated numerically. It is demonstrated that K–L expansion can be used to address the situation with incompatible target functions where the commonly used translation approach may not be applicable. It is therefore a more robust method for simulation of non-Gaussian processes because it can generate different processes satisfying the same target spectral density function and the same target marginal distribution function regardless of their compatibility.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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