Author/Authors :
S. P. Huang، نويسنده , , S. T. Quek، نويسنده , , K. K. Phoon، نويسنده ,
Abstract :
A random process can be represented as a series expansion involving a complete set of deterministic
functions with corresponding random coevecommon covariancemode ls. Theconve rgenceand accuracy of theK–L expansion
are investigated by comparing the second-order statistics of the simulated random process with that of
the target process. It is shown that the factors a?ecting convergence are: (a) ratio of the length of the
process over correlation parameter, (b) form of the covariance function, and (c) method of solving for
the eigen-solutions of the covariance function (namely, analytical or numerical). Comparison with the
established and commonly used spectral representation method is made. K–L expansion has an edge
over the spectral method for highly correlated processes. For long stationary processes, the spectral
method is generally more e
Keywords :
Stationary Gaussian process , Covariance models , simulation , stochastic series representation , Karhunen–Loeve expansion , non-stationary Gaussianprocess
Journal title :
International Journal for Numerical Methods in Engineering
Journal title :
International Journal for Numerical Methods in Engineering