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A synthesis of atmospheric turbulence using a Markov chain

The simulation of the atmospheric turbulence has wide applications in science and engineering. There are a variety of modelling techniques for synthesizing a wind speed time series available today. To decide which model to use one has to know the characteristics of the simulation technique. In this dissertation, alternative approaches for synthetically generating a wind speed time series are discussed. These approaches include: (1) the use of independent values from a specific probability distribution; (2) the use of an algorithm based on the statistical behavior of a one step Markov chain; (3) the use of an algorithm based on the behavior of a transition probability matrix that describes the next wind speed value statistically as a function of the current wind speed value and the previous wind speed value; (4) the use of Box-Jenkins model; (5) the use of the Shinozuka algorithm; (6) the use of an embedded Markov chain; and (7) the use of the fractal concept. The ability of each approach to capture the statistical properties of the desired wind speed time series is discussed. Wind speed collected at Windsor, Massachusetts and at Altamont, California are used as target wind speed values. Each model will be used to generate a synthetic wind speed for each site to compare with the real wind speed. The performance of each model will be decided on by the statistical similarity of the synthetic wind speed to the real wind speed. The criteria of the statistical similarity include the mean and the variance of the wind speed values, the probability distribution of the wind speed values, the power spectrum of the wind speed values and the autocorrelation function of the wind speed values. One of the applications of the wind speed simulation is to fill in a missing segment of a wind speed time series. In this context the missing segment of the wind speed at Cuttyhunk island is simulated and filled in for the study of a wind/diesel energy conversion system.

Identiferoai:union.ndltd.org:UMASS/oai:scholarworks.umass.edu:dissertations-7985
Date01 January 1991
CreatorsSyu, Chiung-yu
PublisherScholarWorks@UMass Amherst
Source SetsUniversity of Massachusetts, Amherst
LanguageEnglish
Detected LanguageEnglish
Typetext
SourceDoctoral Dissertations Available from Proquest

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