Title of article :
Non-Gaussian models for stochastic mechanics
Author/Authors :
Grigoriu، نويسنده , , M، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Abstract :
Memoryless transformations of Gaussian processes and transformations with memory of the Brownian and Lévy processes are used to represent general non-Gaussian processes. The transformations with memory are solutions of stochastic differential equations driven by Gaussian and Lévy white noises. The processes obtained by these transformations are referred to as non-Gaussian models. Methods are developed for calibrating these models to records or partial probabilistic characteristics of non-Gaussian processes. The solution of the model calibration problem is not unique. There are different non-Gaussian models that are equivalent in the sense that they are consistent with the available information on a non-Gaussian process. The response analysis of linear and non-linear oscillators subjected to equivalent non-Gaussian models shows that some response statistics are sensitive to the particular equivalent non-Gaussian model used to represent the input. This observation is relevant for applications because the choice of a particular non-Gaussian input model can result in inaccurate predictions of system performance.
Keywords :
Non-Gaussian model , Brownian motion , Translation process , Lévy process
Journal title :
Probabilistic Engineering Mechanics
Journal title :
Probabilistic Engineering Mechanics