Spatial regression of multi-fidelity meteorological observations using a proxy-based measurement error model

Q2 Earth and Planetary Sciences
Jouke H. S. de Baar, Irene Garcia‐Marti, G. van der Schrier
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引用次数: 1

Abstract

Abstract. High-resolution weather maps are fundamental components of early warning systems, since they enable the (near) real-time tracking of extreme weather events. In this context, crowd-sourced weather networks producing low-fidelity observations are often the only type of data available at local (e.g. neighborhood) scales. In this work, we demonstrate that we can provide such maps by combining high-fidelity official weather data with low-fidelity crowd-sourced weather data and high-resolution covariate information. Because the crowd-sourced data contains significant bias and noise, we develop an approach to include a bias budget and noise budget in the multi-fidelity Bayesian spatial data analysis. The weights of the different components of these bias and noise budgets are tuned to the data set. We apply this approach to 24 hours of weather data in the Netherlands, for a day that had a “code orange” (i.e. “be prepared for extreme weather with high risk of impact”) weather warning for heavy precipitation. From our analysis, we see a significant – qualitative and quantitative – synergy effect when introducing low-fidelity data and high-resolution covariate information.
基于代理测量误差模型的多保真度气象观测空间回归
摘要高分辨率天气图是早期预警系统的基本组成部分,因为它们可以(近)实时地跟踪极端天气事件。在这种情况下,产生低保真度观测的众包天气网络往往是本地(例如邻里)尺度上唯一可用的数据类型。在这项工作中,我们证明了我们可以通过将高保真官方天气数据与低保真众包天气数据和高分辨率协变量信息相结合来提供这样的地图。由于众包数据包含显著的偏差和噪声,我们开发了一种在多保真度贝叶斯空间数据分析中包含偏差预算和噪声预算的方法。这些偏差和噪声预算的不同组成部分的权重被调整到数据集。我们将这种方法应用于荷兰24小时的天气数据,其中一天有“橙色代码”(即“为影响风险高的极端天气做好准备”)的强降水天气预警。从我们的分析中,我们看到当引入低保真数据和高分辨率协变量信息时,显著的定性和定量协同效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Science and Research
Advances in Science and Research Earth and Planetary Sciences-Geophysics
CiteScore
4.10
自引率
0.00%
发文量
13
审稿时长
22 weeks
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