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首页> 外文期刊>The Annals of applied statistics >A DYNAMIC NONSTATIONARY SPATIO-TEMPORAL MODEL FOR SHORT TERM PREDICTION OF PRECIPITATION
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A DYNAMIC NONSTATIONARY SPATIO-TEMPORAL MODEL FOR SHORT TERM PREDICTION OF PRECIPITATION

机译:短期预报的动态非平稳时空模型

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摘要

Precipitation is a complex physical process that varies in space and time. Predictions and interpolations at unobserved times and/or locations help to solve important problems in many areas. In this paper, we present a hierarchical Bayesian model for spatio-temporal data and apply it to obtain short term predictions of rainfall. The model incorporates physical knowledge about the underlying processes that determine rainfall, such as advection, diffusion and convection. It is based on a temporal autoregressive convolution with spatially colored and temporally white innovations. By linking the advection parameter of the convolution kernel to an external wind vector, the model is temporally nonstationary. Further, it allows for nonseparable and anisotropic covariance structures. With the help of the Voronoi tessellation, we construct a natural parametrization, that is, space as well as time resolution consistent, for data lying on irregular grid points. In the application, the statistical model combines forecasts of three other meteorological variables obtained from a numerical weather prediction model with past precipitation observations. The model is then used to predict three-hourly precipitation over 24 hours. It performs better than a separable, stationary and isotropic version, and it performs comparably to a deterministic numerical weather prediction model for precipitation and has the advantage that it quantifies prediction uncertainty.
机译:降水是一个复杂的物理过程,其时空变化。在未观察到的时间和/或位置进行预测和内插有助于解决许多领域中的重要问题。在本文中,我们提出了用于时空数据的分层贝叶斯模型,并将其用于获得降雨的短期预测。该模型结合了有关确定降雨的基本过程的物理知识,例如对流,扩散和对流。它基于时间自回归卷积,具有空间彩色和时空白色创新。通过将卷积核的对流参数链接到外部风矢量,该模型在时间上是非平稳的。此外,它允许不可分离且各向异性的协方差结构。借助Voronoi细分,我们为位于不规则网格点上的数据构建了自然的参数化,即空间和时间分辨率保持一致。在应用程序中,统计模型将从数值天气预报模型获得的其他三个气象变量的预测与过去的降水观测结果结合起来。然后,该模型用于预测24小时内的三小时降水量。它的性能优于可分离的,固定的和各向同性的版本,并且与确定性的降水数字天气预报模型具有可比性,并且具有量化预测不确定性的优势。

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