Climate and Atmosphere Research Center, The Cyprus Institute, Nicosia, Cyprus.
Department of Atmospheric Chemistry, Max Planck Institute for Chemistry, Mainz, Germany.
PeerJ. 2023 Jan 10;11:e14519. doi: 10.7717/peerj.14519. eCollection 2023.
Meteorological station measurements are an important source of information for understanding the weather and its association with risk, and are vital in quantifying climate change. However, such data tend to lack spatial coverage and are often plagued with flaws such as erroneous outliers and missing values. Alternative meteorological data exist in the form of climate model output that have better spatial coverage, at the expense of bias. We propose a probabilistic framework to integrate temperature measurements with climate model (reanalysis) data, in a way that allows for biases and erroneous outliers, while enabling prediction at any spatial resolution. The approach is Bayesian which facilitates uncertainty quantification and simulation based inference, as illustrated by application to two countries from the Middle East and North Africa region, an important climate change hotspot. We demonstrate the use of the model in: identifying outliers, imputing missing values, non-linear bias correction, downscaling and aggregation to any given spatial configuration.
气象站测量是了解天气及其与风险关联的重要信息来源,对于量化气候变化至关重要。然而,此类数据往往缺乏空间覆盖范围,并且经常存在错误的异常值和缺失值等缺陷。以气候模型输出形式存在的替代气象数据具有更好的空间覆盖范围,但存在偏差。我们提出了一种概率框架,用于将温度测量与气候模型(再分析)数据集成,以允许存在偏差和错误的异常值,同时能够以任何空间分辨率进行预测。该方法是贝叶斯方法,便于不确定性量化和基于模拟的推断,我们通过应用于中东和北非地区的两个国家来说明这一点,该地区是气候变化的一个重要热点。我们展示了该模型在以下方面的应用:识别异常值、插补缺失值、非线性偏差修正、降尺度和聚合到任何给定的空间配置。