2 datasets found
  1. Bangkok_AirQuality

    • kaggle.com
    Updated Jan 21, 2020
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    yokkm (2020). Bangkok_AirQuality [Dataset]. https://www.kaggle.com/chadapamettapun/bangkok-airquality/code
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jan 21, 2020
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    yokkm
    Area covered
    Bangkok
    Description

    Bangkok_AirQuality is in crisis

    21/01/2020, the air quality still remained at unhealthy level for Bangkok, Thailand and its nearby provinces. this workbook only satisfy my current interest in data exploratory, forecasting, programming in python and the current air pollution situation in Bangkok, Thailand.

    Remark- the available air quality data that provided by Pollution Control Department (http://www.aqmthai.com/) can be trace only 1 month back , luckily I found the article from Khun Worasom Kundhikanjana https://towardsdatascience.com/identifying-the-sources-of-winter-air-pollution-in-bangkok-part-ii-72539f9b767a she suggest that "historical data can be found in Berkeley Earth website" so, here i am scraping data from Berkeley Earth website.

    Credits& Acknowledgement to Khun Worasom Kundhikanjana, and Berkeley Earth website

    regards

  2. Temperature and precipitation gridded data for global and regional domains...

    • cds.climate.copernicus.eu
    • cds-stable-bopen.copernicus-climate.eu
    netcdf
    Updated Apr 9, 2025
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    ECMWF (2025). Temperature and precipitation gridded data for global and regional domains derived from in-situ and satellite observations [Dataset]. http://doi.org/10.24381/cds.11dedf0c
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    netcdfAvailable download formats
    Dataset updated
    Apr 9, 2025
    Dataset provided by
    European Centre for Medium-Range Weather Forecastshttp://ecmwf.int/
    Authors
    ECMWF
    License

    https://object-store.os-api.cci2.ecmwf.int:443/cci2-prod-catalogue/licences/insitu-gridded-observations-global-and-regional/insitu-gridded-observations-global-and-regional_15437b363f02bf5e6f41fc2995e3d19a590eb4daff5a7ce67d1ef6c269d81d68.pdfhttps://object-store.os-api.cci2.ecmwf.int:443/cci2-prod-catalogue/licences/insitu-gridded-observations-global-and-regional/insitu-gridded-observations-global-and-regional_15437b363f02bf5e6f41fc2995e3d19a590eb4daff5a7ce67d1ef6c269d81d68.pdf

    Time period covered
    Jan 1, 1750 - Jan 1, 2021
    Description

    This dataset provides high-resolution gridded temperature and precipitation observations from a selection of sources. Additionally the dataset contains daily global average near-surface temperature anomalies. All fields are defined on either daily or monthly frequency. The datasets are regularly updated to incorporate recent observations. The included data sources are commonly known as GISTEMP, Berkeley Earth, CPC and CPC-CONUS, CHIRPS, IMERG, CMORPH, GPCC and CRU, where the abbreviations are explained below. These data have been constructed from high-quality analyses of meteorological station series and rain gauges around the world, and as such provide a reliable source for the analysis of weather extremes and climate trends. The regular update cycle makes these data suitable for a rapid study of recently occurred phenomena or events. The NASA Goddard Institute for Space Studies temperature analysis dataset (GISTEMP-v4) combines station data of the Global Historical Climatology Network (GHCN) with the Extended Reconstructed Sea Surface Temperature (ERSST) to construct a global temperature change estimate. The Berkeley Earth Foundation dataset (BERKEARTH) merges temperature records from 16 archives into a single coherent dataset. The NOAA Climate Prediction Center datasets (CPC and CPC-CONUS) define a suite of unified precipitation products with consistent quantity and improved quality by combining all information sources available at CPC and by taking advantage of the optimal interpolation (OI) objective analysis technique. The Climate Hazards Group InfraRed Precipitation with Station dataset (CHIRPS-v2) incorporates 0.05° resolution satellite imagery and in-situ station data to create gridded rainfall time series over the African continent, suitable for trend analysis and seasonal drought monitoring. The Integrated Multi-satellitE Retrievals dataset (IMERG) by NASA uses an algorithm to intercalibrate, merge, and interpolate “all'' satellite microwave precipitation estimates, together with microwave-calibrated infrared (IR) satellite estimates, precipitation gauge analyses, and potentially other precipitation estimators over the entire globe at fine time and space scales for the Tropical Rainfall Measuring Mission (TRMM) and its successor, Global Precipitation Measurement (GPM) satellite-based precipitation products. The Climate Prediction Center morphing technique dataset (CMORPH) by NOAA has been created using precipitation estimates that have been derived from low orbiter satellite microwave observations exclusively. Then, geostationary IR data are used as a means to transport the microwave-derived precipitation features during periods when microwave data are not available at a location. The Global Precipitation Climatology Centre dataset (GPCC) is a centennial product of monthly global land-surface precipitation based on the ~80,000 stations world-wide that feature record durations of 10 years or longer. The data coverage per month varies from ~6,000 (before 1900) to more than 50,000 stations. The Climatic Research Unit dataset (CRU v4) features an improved interpolation process, which delivers full traceability back to station measurements. The station measurements of temperature and precipitation are public, as well as the gridded dataset and national averages for each country. Cross-validation was performed at a station level, and the results have been published as a guide to the accuracy of the interpolation. This catalogue entry complements the E-OBS record in many aspects, as it intends to provide high-resolution gridded meteorological observations at a global rather than continental scale. These data may be suitable as a baseline for model comparisons or extreme event analysis in the CMIP5 and CMIP6 dataset.

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yokkm (2020). Bangkok_AirQuality [Dataset]. https://www.kaggle.com/chadapamettapun/bangkok-airquality/code
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Bangkok_AirQuality

Air quality in Bangkok, Thailand

Explore at:
CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
Dataset updated
Jan 21, 2020
Dataset provided by
Kagglehttp://kaggle.com/
Authors
yokkm
Area covered
Bangkok
Description

Bangkok_AirQuality is in crisis

21/01/2020, the air quality still remained at unhealthy level for Bangkok, Thailand and its nearby provinces. this workbook only satisfy my current interest in data exploratory, forecasting, programming in python and the current air pollution situation in Bangkok, Thailand.

Remark- the available air quality data that provided by Pollution Control Department (http://www.aqmthai.com/) can be trace only 1 month back , luckily I found the article from Khun Worasom Kundhikanjana https://towardsdatascience.com/identifying-the-sources-of-winter-air-pollution-in-bangkok-part-ii-72539f9b767a she suggest that "historical data can be found in Berkeley Earth website" so, here i am scraping data from Berkeley Earth website.

Credits& Acknowledgement to Khun Worasom Kundhikanjana, and Berkeley Earth website

regards

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