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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Identifying, attributing, and overcoming common data quality issues of manned station observations
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Identifying, attributing, and overcoming common data quality issues of manned station observations

机译:识别,归因和克服载人站观测的常见数据质量问题

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摘要

In situ climatological observations are essential for studies related to climate trends and extreme events. However, in many regions of the globe, observational records are affected by a large number of data quality issues. Assessing and controlling the quality of such datasets is an important, often overlooked aspect of climate research. Besides analysing the measurement data, metadata are important for a comprehensive data quality assessment. However, metadata are often missing, but may partly be reconstructed by suitable actions such as station inspections. This study identifies and attributes the most important common data quality issues in Bolivian and Peruvian temperature and precipitation datasets. The same or similar errors are found in many other predominantly manned station networks worldwide. A large fraction of these issues can be traced back to measurement errors by the observers. Therefore, the most effective way to prevent errors is to strengthen the training of observers and to establish a near real-time quality control (QC) procedure. Many common data quality issues are hardly detected by usual QC approaches. Data visualization, however, is an effective tool to identify and attribute those issues, and therefore enables data users to potentially correct errors and to decide which purposes are not affected by specific problems. The resulting increase in usable station records is particularly important in areas where station networks are sparse. In such networks, adequate selection and treatment of time series based on a comprehensive QC procedure may contribute to improving data homogeneity more than statistical data homogenization methods.
机译:原位气候观测对于与气候趋势和极端事件有关的研究至关重要。然而,在全球的许多地区,观测记录受大量数据质量问题的影响。评估和控制这种数据集的质量是一个重要的,通常被忽视的气候研究方面。除了分析测量数据外,元数据对于全面的数据质量评估很重要。但是,元数据通常丢失,但可以部分地由站检查等合适的行动重建。本研究识别并归因于玻利维亚和秘鲁温度和降水数据集中最重要的常见数据质量问题。在许多其他主要载人的站网络中发现了相同或类似的错误。这些问题的大部分可以追溯到观察者的测量误差。因此,防止错误的最有效方法是加强观察者的训练,并建立近实时质量控制(QC)程序。通常通过通常的QC方法检测到许多常见的数据质量问题。但是,数据可视化是识别和归因于这些问题的有效工具,因此使数据用户能够潜在地纠正错误,并确定哪些目的不受特定问题的影响。在站网络稀疏的区域中,可用站记录的产生尤为重要。在这种网络中,基于全面QC过程的时间序列的充分选择和处理可能有助于提高数据均匀性,而不是统计数据均匀化方法。

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