Idealized models of the joint probability distribution of wind speeds

Author:

Monahan Adam H.

Abstract

Abstract. The joint probability distribution of wind speeds at two separate locations in space or points in time completely characterizes the statistical dependence of these two quantities, providing more information than linear measures such as correlation. In this study, we consider two models of the joint distribution of wind speeds obtained from idealized models of the dependence structure of the horizontal wind velocity components. The bivariate Rice distribution follows from assuming that the wind components have Gaussian and isotropic fluctuations. The bivariate Weibull distribution arises from power law transformations of wind speeds corresponding to vector components with Gaussian, isotropic, mean-zero variability. Maximum likelihood estimates of these distributions are compared using wind speed data from the mid-troposphere, from different altitudes at the Cabauw tower in the Netherlands, and from scatterometer observations over the sea surface. While the bivariate Rice distribution is more flexible and can represent a broader class of dependence structures, the bivariate Weibull distribution is mathematically simpler and may be more convenient in many applications. The complexity of the mathematical expressions obtained for the joint distributions suggests that the development of explicit functional forms for multivariate speed distributions from distributions of the components will not be practical for more complicated dependence structure or more than two speed variables.

Funder

Natural Sciences and Engineering Research Council of Canada

Publisher

Copernicus GmbH

Subject

General Medicine

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Joint distribution of wind speed and direction over complex terrains based on nonparametric copula models;Journal of Wind Engineering and Industrial Aerodynamics;2023-10

2. Gaussian mixture model for extreme wind turbulence estimation;Wind Energy Science;2022-10-26

3. Bayesian estimation of copula parameters for wind speed models of dependence;IET Renewable Power Generation;2021-09-27

4. Dependent Wind Speed Models: Copula Approach;2020 IEEE Electric Power and Energy Conference (EPEC);2020-11-09

5. Effective probability distribution approximation for the reconstruction of missing data;Stochastic Environmental Research and Risk Assessment;2020-02

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