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A Comparison of Spatio-Temporal Bayesian Models for Reconstruction of Rainfall Fields in a Cloud Seeding Experiment | Science Publications

机译:云播实验中降雨时空重建的时空贝叶斯模型比较科学出版物

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> In response to the drought experienced in Southern Italy a rain seeding project has been setup and developed during the years 1989-1994. The initiative was taken with the purpose of applying existing methods of rain enhancement technology to regions of south Italy including Puglia. The aim of this study is to provide statistical support for the evaluation of the experimental part of the project. In particular our aim is to reconstruct rainfall fields by combining two data sources: rainfall intensity as measured by ground raingauges and radar reflectivity. A difficulty in modeling the rainfall data here comes from rounding of many recorded rainguages. The rounding of the rainfall measurements make the data essentially discrete and models based on continuous distributions are not suitable for modeling these discrete data. In this study we extend two recently developed spatio-temporal models for continuous data to accommodate rounded rainfall measurements taking discrete values with positive probabilities. We use MCMC methods to implement the models and obtain forecasts in space and time together with their standard errors. We compare the two models using predictive Bayesian methods. The benefits of our modeling extensions are seen in accurate predictions of dry periods with no positive prediction standard errors.
机译: >为了应对意大利南部的干旱,在1989-1994年间建立并开发了雨育项目。该倡议旨在将现有的增雨技术方法应用于意大利南部的地区,包括普利亚大区。这项研究的目的是为项目实验部分的评估提供统计支持。特别是,我们的目标是通过合并两个数据源来重建降雨场:通过地面雨量计测量的降雨强度和雷达反射率。此处对降雨数据建模的困难来自许多记录的雨量图的四舍五入。降雨测量值的取整使数据本质上是离散的,并且基于连续分布的模型不适合对这些离散数据进行建模。在这项研究中,我们扩展了两个最新开发的时空模型用于连续数据,以适应采用正值离散值的圆形降雨测量。我们使用MCMC方法实施模型,并获得时空预测以及标准误差。我们使用预测贝叶斯方法比较这两个模型。我们的建模扩展的好处体现在对干旱期的准确预测中,而没有正向预测标准误差。

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