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Markov model of wind power time series using Bayesian inference of transition matrix

机译:基于过渡矩阵贝叶斯推断的风电时间序列马尔可夫模型

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This paper proposes to use Bayesian inference of transition matrix when developing a discrete Markov model of a wind speed/power time series and 95% credible interval for the model verification. The Dirichlet distribution is used as a conjugate prior for the transition matrix. Three discrete Markov models are compared, i.e. the basic Markov model, the Bayesian Markov model and the birth-and-death Markov model. The proposed Bayesian Markov model shows the best accuracy in modeling the autocorrelation of the wind power time series.
机译:本文建议在建立风速/功率时间序列和95%可信区间的离散马尔可夫模型时使用过渡矩阵的贝叶斯推断进行模型验证。 Dirichlet分布在过渡矩阵之前用作共轭。比较了三种离散的马尔可夫模型,即基本马尔可夫模型,贝叶斯马尔可夫模型和生死马尔可夫模型。所提出的贝叶斯马尔可夫模型在风电时间序列的自相关建模中显示出最佳的准确性。

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