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    Simulation of Stochastic Processes by Spectral Representation

    Source: Applied Mechanics Reviews:;1991:;volume( 044 ):;issue: 004::page 191
    Author:
    Masanobu Shinozuka
    ,
    George Deodatis
    DOI: 10.1115/1.3119501
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: The subject of this paper is the simulation of one-dimensional, uni-variate, stationary, Gaussian stochastic processes using the spectral representation method. Following this methodology, sample functions of the stochastic process can be generated with great computational efficiency using a cosine series formula. These sample functions accurately reflect the prescribed probabilistic characteristics of the stochastic process when the number N of the terms in the cosine series is large. The ensemble-averaged power spectral density or autocorrelation function approaches the corresponding target function as the sample size increases. In addition, the generated sample functions possess ergodic characteristics in the sense that the temporally-averaged mean value and the autocorrelation function are identical with the corresponding targets, when the averaging takes place over the fundamental period of the cosine series. The most important property of the simulated stochastic process is that it is asymptotically Gaussian as N → ∞. Another attractive feature of the method is that the cosine series formula can be numerically computed efficiently using the Fast Fourier Transform technique. The main area of application of this method is the Monte Carlo solution of stochastic problems in engineering mechanics and structural engineering. Specifically, the method has been applied to problems involving random loading (random vibration theory) and random material and geometric properties (response variability due to system stochasticity).
    keyword(s): Simulation , Stochastic processes , Functions , Formulas , Structural engineering , Spectral energy distribution , Engineering mechanics , Random vibration AND Fast Fourier transforms ,
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      Simulation of Stochastic Processes by Spectral Representation

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    contributor authorMasanobu Shinozuka
    contributor authorGeorge Deodatis
    date accessioned2017-05-08T23:34:24Z
    date available2017-05-08T23:34:24Z
    date copyrightApril, 1991
    date issued1991
    identifier issn0003-6900
    identifier otherAMREAD-25601#191_1.pdf
    identifier urihttp://yetl.yabesh.ir/yetl/handle/yetl/107909
    description abstractThe subject of this paper is the simulation of one-dimensional, uni-variate, stationary, Gaussian stochastic processes using the spectral representation method. Following this methodology, sample functions of the stochastic process can be generated with great computational efficiency using a cosine series formula. These sample functions accurately reflect the prescribed probabilistic characteristics of the stochastic process when the number N of the terms in the cosine series is large. The ensemble-averaged power spectral density or autocorrelation function approaches the corresponding target function as the sample size increases. In addition, the generated sample functions possess ergodic characteristics in the sense that the temporally-averaged mean value and the autocorrelation function are identical with the corresponding targets, when the averaging takes place over the fundamental period of the cosine series. The most important property of the simulated stochastic process is that it is asymptotically Gaussian as N → ∞. Another attractive feature of the method is that the cosine series formula can be numerically computed efficiently using the Fast Fourier Transform technique. The main area of application of this method is the Monte Carlo solution of stochastic problems in engineering mechanics and structural engineering. Specifically, the method has been applied to problems involving random loading (random vibration theory) and random material and geometric properties (response variability due to system stochasticity).
    publisherThe American Society of Mechanical Engineers (ASME)
    titleSimulation of Stochastic Processes by Spectral Representation
    typeJournal Paper
    journal volume44
    journal issue4
    journal titleApplied Mechanics Reviews
    identifier doi10.1115/1.3119501
    journal fristpage191
    journal lastpage204
    identifier eissn0003-6900
    keywordsSimulation
    keywordsStochastic processes
    keywordsFunctions
    keywordsFormulas
    keywordsStructural engineering
    keywordsSpectral energy distribution
    keywordsEngineering mechanics
    keywordsRandom vibration AND Fast Fourier transforms
    treeApplied Mechanics Reviews:;1991:;volume( 044 ):;issue: 004
    contenttypeFulltext
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