Simulation methodology for stochastic wind pressure field composed of gaussian and non-gaussian regions

LUO Jun-jie;SU Cheng;HAN Da-jian;

Journal of Vibration and Shock ›› 2012, Vol. 31 ›› Issue (10) : 111-117.

PDF(2387 KB)
PDF(2387 KB)
Journal of Vibration and Shock ›› 2012, Vol. 31 ›› Issue (10) : 111-117.
论文

Simulation methodology for stochastic wind pressure field composed of gaussian and non-gaussian regions

  • LUO Jun-jie1,2, SU Cheng1,2, HAN Da-jian1,2
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Abstract

Simulation of stochastic fluctuating wind pressure field acting on roofs should meet with the requirements of statistical and spectral characteristics. The zero memory nonlinearity (ZMNL) transformation method is presented to generate the stochastic wind pressure time histories in this paper. A detailed procedure is provided, and two crucial problems are addressed. Firstly, the standard covariance function for transforming multivariate non-Gaussian stochastic process vector into the corresponding Gaussian one is derived for simulating the stochastic wind pressure process samples following the lognormal distribution and the Weibull distribution. Secondly, a new method is proposed to cope with the negative definite matrices of spectral density function associated with certain frequencies while generating the Gaussian stochastic process vector. After that, an illustrated example is given. It is shown that the proposed method can generate stochastic wind pressure field samples with specified statistical and spectral natures of the data obtained by wind tunnel experiment.

Key words

Stochastic wind pressure field / non-Gaussian stochastic process vector / zero memory nonlinearity transformation method / wave superposition method

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LUO Jun-jie;SU Cheng;HAN Da-jian;. Simulation methodology for stochastic wind pressure field composed of gaussian and non-gaussian regions[J]. Journal of Vibration and Shock, 2012, 31(10): 111-117
PDF(2387 KB)

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