7 results on '"Durre, Imke"'
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2. Daily High-Resolution Temperature and Precipitation Fields for the Contiguous United States from 1951 to Present.
- Author
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Durre, Imke, Arguez, Anthony, Schreck III, Carl J., Squires, Michael F., and Vose, Russell S.
- Subjects
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SPATIAL ability , *DROUGHTS , *TEMPERATURE , *GEOGRAPHIC names , *SPATIAL variation , *CLIMATOLOGY , *INTERPOLATION - Abstract
In this paper, a new set of daily gridded fields and area averages of temperature and precipitation is introduced that covers the contiguous United States (CONUS) from 1951 to present. With daily updates and a grid resolution of approximately 0.0417° (nominally 5 km), the product, named nClimGrid-Daily, is designed to be used particularly in climate monitoring and other applications that rely on placing event-specific meteorological patterns into a long-term historical context. The gridded fields were generated by interpolating morning and midnight observations from the Global Historical Climatology Network–Daily dataset using thin-plate smoothing splines. Additional processing steps limit the adverse effects of spatial and temporal variations in station density, observation time, and other factors on the quality and homogeneity of the fields. The resulting gridded data provide smoothed representations of the point observations, although the accuracy of estimates for individual grid points and days can be sensitive to local spatial variability and the ability of the available observations and interpolation technique to capture that variability. The nClimGrid-Daily dataset is therefore recommended for applications that require the aggregation of estimates in space and/or time, such as climate monitoring analyses at regional to national scales. Significance Statement: Many applications that use historical weather observations require data on a high-resolution grid that are updated daily. Here, a new dataset of daily temperature and precipitation for 1951–present is introduced that was created by interpolating irregularly spaced observations to a regular grid with a spacing of 0.0417° across the contiguous United States. Compared to other such datasets, this product is particularly suitable for monitoring climate and drought on a daily basis because it was processed so as to limit artificial variations in space and time that may result from changes in the types and distribution of observations used. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
3. Development of an Updated Global Land In Situ‐Based Data Set of Temperature and Precipitation Extremes: HadEX3.
- Author
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Dunn, Robert J. H., Alexander, Lisa V., Donat, Markus G., Zhang, Xuebin, Bador, Margot, Herold, Nicholas, Lippmann, Tanya, Allan, Rob, Aguilar, Enric, Barry, Abdoul Aziz, Brunet, Manola, Caesar, John, Chagnaud, Guillaume, Cheng, Vincent, Cinco, Thelma, Durre, Imke, Guzman, Rosaline, Htay, Tin Mar, Wan Ibadullah, Wan Maisarah, and Bin Ibrahim, Muhammad Khairul Izzat
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PRECIPITATION (Chemistry) ,CLIMATE change ,METEOROLOGY ,TEMPERATURE measuring instruments - Abstract
We present the second update to a data set of gridded land‐based temperature and precipitation extremes indices: HadEX3. This consists of 17 temperature and 12 precipitation indices derived from daily, in situ observations and recommended by the World Meteorological Organization (WMO) Expert Team on Climate Change Detection and Indices (ETCCDI). These indices have been calculated at around 7,000 locations for temperature and 17,000 for precipitation. The annual (and monthly) indices have been interpolated on a 1.875°×1.25° longitude‐latitude grid, covering 1901–2018. We show changes in these indices by examining "global"‐average time series in comparison with previous observational data sets and also estimating the uncertainty resulting from the nonuniform distribution of meteorological stations. Both the short and long time scale behavior of HadEX3 agrees well with existing products. Changes in the temperature indices are widespread and consistent with global‐scale warming. The extremes related to daily minimum temperatures are changing faster than the maximum. Spatial changes in the linear trends of precipitation indices over 1950–2018 are less spatially coherent than those for temperature indices. Globally, there are more heavy precipitation events that are also more intense and contribute a greater fraction to the total. Some of the indices use a reference period for calculating exceedance thresholds. We present a comparison between using 1961–1990 and 1981–2010. The differences between the time series of the temperature indices observed over longer time scales are shown to be the result of the interaction of the reference period with a warming climate. The gridded netCDF files and, where possible, underlying station indices are available from www.metoffice.gov.uk/hadobs/hadex3 and www.climdex.org. Key Points: We present an updated data set of gridded temperature and precipitation extremesSpatio‐temporal coverage over 1901–2018 for 29 extremes indices was improved over previous versionWe find increased (decreased) intensity and frequency of warm (cool) extremes and increased intensity of heavy precipitation events [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
4. Enhancing the Data Coverage in the Integrated Global Radiosonde Archive.
- Author
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Durre, Imke, Yin, Xungang, Vose, Russell S., Applequist, Scott, and Arnfield, Jeff
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RADIOSONDES , *PILOT balloons , *TROPOSPHERE , *STRATOSPHERE - Abstract
The Integrated Global Radiosonde Archive (IGRA) is a collection of historical and near-real-time radiosonde and pilot balloon observations from around the globe. Consisting of a foundational dataset of individual soundings, a set of sounding-derived parameters, and monthly means, the collection is maintained and distributed by the National Oceanic and Atmospheric Administration's National Centers for Environmental Information (NCEI). It has been used in a variety of applications, including reanalysis projects, assessments of tropospheric and stratospheric temperature and moisture trends, a wide range of studies of atmospheric processes and structures, and as validation of observations from other observing platforms. In 2016, NCEI released version 2 of the dataset, IGRA 2, which incorporates data from a considerably greater number of data sources, thus increasing the data volume by 30%, extending the data back in time to as early as 1905, and improving the spatial coverage. To create IGRA 2, 40 data sources were converted into a common data format and merged into one coherent dataset using a newly designed suite of algorithms. Then, an overhauled version of the IGRA 1 quality-assurance system was applied to the integrated data. Last, monthly means and sounding-by-sounding moisture and stability parameters were derived from the new dataset. All of these components are updated on a regular basis and made available for download free of charge on the NCEI website. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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5. Comprehensive Automated Quality Assurance of Daily Surface Observations.
- Author
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Durre, Imke, Menne, Matthew J., Gleason, Byron E., Houston, Tamara G., and Vose, Russell S.
- Subjects
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CLIMATOLOGY observations , *QUALITY assurance , *TEMPERATURE , *METEOROLOGICAL precipitation , *SNOW , *ERRORS - Abstract
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. [ABSTRACT FROM AUTHOR]
- Published
- 2010
- Full Text
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6. Robust Automated Quality Assurance of Radiosonde Temperatures.
- Author
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Durre, Imke, Vose, Russell S., and Wuertz, David B.
- Subjects
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RADIOSONDES , *QUALITY control , *QUALITY assurance , *TEMPERATURE , *ROBUST control , *TROPOSPHERIC thermodynamics , *METEOROLOGY , *METEOROLOGICAL instruments ,PERSISTENCE - Abstract
This paper presents a description of the fully automated quality-assurance (QA) procedures that are being applied to temperatures in the Integrated Global Radiosonde Archive (IGRA). Because these data are routinely used for monitoring variations in tropospheric temperature, it is of critical importance that the system be able to detect as many errors as possible without falsely identifying true meteorological events as erroneous. Three steps were taken to achieve such robust performance. First, 14 tests for excessive persistence, climatological outliers, and vertical and temporal inconsistencies were developed and arranged into a deliberate sequence so as to render the system capable of detecting a variety of data errors. Second, manual review of random samples of flagged values was used to set the “thresholds” for each individual check so as to minimize the number of valid values that are mistakenly identified as errors. The performance of the system as a whole was also assessed through manual inspection of random samples of the quality-assured data. As a result of these efforts, the IGRA temperature QA procedures effectively remove the grossest errors while maintaining a false-positive rate of approximately 10%. [ABSTRACT FROM AUTHOR]
- Published
- 2008
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7. Using First Differences to Reduce Inhomogeneity in Radiosonde Temperature Datasets.
- Author
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Free, Melissa, Angell, James K., Durre, Imke, Lanzante, John, Peterson, Thomas C., and Seidel, Dian J.
- Subjects
FALLIBILITY ,RADIOSONDES ,METEOROLOGICAL instruments ,IONOSONDES ,TEMPERATURE ,THERMAL properties - Abstract
The utility of a “first difference” method for producing temporally homogeneous large-scale mean time series is assessed. Starting with monthly averages, the method involves dropping data around the time of suspected discontinuities and then calculating differences in temperature from one year to the next, resulting in a time series of year-to-year differences for each month at each station. These first difference time series are then combined to form large-scale means, and mean temperature time series are constructed from the first difference series. When applied to radiosonde temperature data, the method introduces random errors that decrease with the number of station time series used to create the large-scale time series and increase with the number of temporal gaps in the station time series. Root-mean-square errors for annual means of datasets produced with this method using over 500 stations are estimated at no more than 0.03 K, with errors in trends less than 0.02 K decade
-1 for 1960–97 at 500 mb. For a 50-station dataset, errors in trends in annual global means introduced by the first differencing procedure may be as large as 0.06 K decade-1 (for six breaks per series), which is greater than the standard error of the trend. Although the first difference method offers significant resource and labor advantages over methods that attempt to adjust the data, it introduces an error in large-scale mean time series that may be unacceptable in some cases. [ABSTRACT FROM AUTHOR]- Published
- 2004
- Full Text
- View/download PDF
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