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Comprehensive Automated Quality Assurance of Daily Surface Observations
by
Menne, Matthew J.
, Durre, Imke
, Vose, Russell S.
, Houston, Tamara G.
, Gleason, Byron E.
in
Automation
/ Climate change
/ Climatology
/ Daily
/ Daily temperatures
/ Data analysis
/ Datasets
/ Design
/ Earth, ocean, space
/ Error detection
/ Error rates
/ Errors
/ Exact sciences and technology
/ External geophysics
/ False positive errors
/ Meteorology
/ Meteors
/ Minimum temperatures
/ Outliers
/ Outliers (statistics)
/ Precipitation
/ Probability theory
/ Procedures
/ Quality assurance
/ Quality control
/ Random sampling
/ Snow
/ Snow accumulation
/ Snow depth
/ Snowfall
/ Studies
/ Surface temperature
/ Tests
2010
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Comprehensive Automated Quality Assurance of Daily Surface Observations
by
Menne, Matthew J.
, Durre, Imke
, Vose, Russell S.
, Houston, Tamara G.
, Gleason, Byron E.
in
Automation
/ Climate change
/ Climatology
/ Daily
/ Daily temperatures
/ Data analysis
/ Datasets
/ Design
/ Earth, ocean, space
/ Error detection
/ Error rates
/ Errors
/ Exact sciences and technology
/ External geophysics
/ False positive errors
/ Meteorology
/ Meteors
/ Minimum temperatures
/ Outliers
/ Outliers (statistics)
/ Precipitation
/ Probability theory
/ Procedures
/ Quality assurance
/ Quality control
/ Random sampling
/ Snow
/ Snow accumulation
/ Snow depth
/ Snowfall
/ Studies
/ Surface temperature
/ Tests
2010
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Do you wish to request the book?
Comprehensive Automated Quality Assurance of Daily Surface Observations
by
Menne, Matthew J.
, Durre, Imke
, Vose, Russell S.
, Houston, Tamara G.
, Gleason, Byron E.
in
Automation
/ Climate change
/ Climatology
/ Daily
/ Daily temperatures
/ Data analysis
/ Datasets
/ Design
/ Earth, ocean, space
/ Error detection
/ Error rates
/ Errors
/ Exact sciences and technology
/ External geophysics
/ False positive errors
/ Meteorology
/ Meteors
/ Minimum temperatures
/ Outliers
/ Outliers (statistics)
/ Precipitation
/ Probability theory
/ Procedures
/ Quality assurance
/ Quality control
/ Random sampling
/ Snow
/ Snow accumulation
/ Snow depth
/ Snowfall
/ Studies
/ Surface temperature
/ Tests
2010
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Comprehensive Automated Quality Assurance of Daily Surface Observations
Journal Article
Comprehensive Automated Quality Assurance of Daily Surface Observations
2010
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Overview
This paper describes a comprehensive set of fully automated quality assurance (QA) procedures for observations of daily surface temperature, precipitation, snowfall, and snow depth. The QA procedures are being applied operationally to the Global Historical Climatology Network (GHCN)-Daily dataset. Since these data are used for analyzing and monitoring variations in extremes, the QA system is designed to detect as many errors as possible while maintaining a low probability of falsely identifying true meteorological events as erroneous. The system consists of 19 carefully evaluated tests that detect duplicate data, climatological outliers, and various inconsistencies (internal, temporal, and spatial). Manual review of random samples of the values flagged as errors is used to set the threshold for each procedure such that its false-positive rate, or fraction of valid values identified as errors, is minimized. In addition, the tests are arranged in a deliberate sequence in which the performance of the later checks is enhanced by the error detection capabilities of the earlier tests. Based on an assessment of each individual check and a final evaluation for each element, the system identifies 3.6 million (0.24%) of the more than 1.5 billion maximum/minimum temperature, precipitation, snowfall, and snow depth values in GHCN-Daily as errors, has a false-positive rate of 1%–2%, and is effective at detecting both the grossest errors as well as more subtle inconsistencies among elements.
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