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A cross‐checked global monthly weather station database for precipitation covering the period 1901–2010

机译:用于降水的交叉检查的全球日常气象站数据库,包括1901-2010期

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Comprehensive monthly weather station databases are the foundation for many gridded climate data products, and they are widely used to characterize regional climate conditions, track climate change and research the impact of climate on natural and managed ecosystems. However, weather station databases are often regional in coverage, and they can have extensive gaps in station coverage over time. They may also contain errors in climate records, station coordinates or elevation. Here, we assemble a comprehensive monthly weather station database for precipitation from multiple reputable data sources. We use digital elevation models and nearby stations to search for inconsistencies in reported station locations and recorded precipitation values. We also estimated missing values in weather station time series using a linear model approach based on interpolated anomaly surfaces. The resulting station records were ranked into ten classes, according to the completeness of records, the reliability of missing value estimations and other criteria. We corrected incomplete or erroneous location and elevation information for 12% of all available station records. A total of 23% of monthly records that had missing values could be estimated with high or moderate confidence. We sub‐sampled our global database of more than 80,000 stations with various spatial filters, so that only the highest quality station for a given area was retained. Our contribution significantly enhances global data coverage compared to individual databases currently available. Even when accepting only the stations within the top two quality ranks in our combined database, and applying the coarsest spatial filter of one station per approximately 1,600?km2, the remaining station count of more than 20,000 stations exceeds the largest alternative database (without a spatial filter applied) by more than 50%.
机译:全面的月度气象站数据库是许多包装的气候数据产品的基础,它们被广泛用于特征区域气候条件,跟踪气候变化和研究气候对自然和管理生态系统的影响。然而,气象站数据库通常是区域覆盖范围,它们可以随着时间的推移在站覆盖范围内具有广泛的差距。它们还可能包含气候记录,站坐标或海拔的错误。在这里,我们组装了一个全面的月度气象站数据库,用于从多个信誉良好的数据源降水。我们使用数字高度模型和附近的电台来搜索报告的电台位置和记录的降水值中的不一致。我们还使用基于内插异常表面的线性模型方法估计气象站时间序列中的缺失值。根据记录的完整性,缺失值估计和其他标准的可靠性,所得站记录被排名为十个类。我们纠正了所有可用电台记录的12%的不完整或错误的位置和高程信息。总共23%的每月记录缺少值,可以估计高或中等信心。我们使用各种空间过滤器将我们全球数据库的全球数据库分开,因此只保留了给定区域的最高质量站。与当前可用的各个数据库相比,我们的贡献显着增强了全球数据覆盖范围。即使在我们的组合数据库中只接受前两个质量等级的站点,并应用每次大约1,600?KM2的一个站的粗糙空间过滤器,剩余的站点数量超过20,000站超过最大的替代数据库(没有空间滤波器施用)超过50%。

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