N: 90 S: -90 E: 180 W: -180
Description
Version 07B is the current version of the IMERG data sets. Older versions will no longer be available and have been superseded by Version 07.
The Integrated Multi-satellitE Retrievals for GPM (IMERG) is the unified U.S. algorithm that provides the multi-satellite precipitation product for the U.S. GPM team.
The precipitation estimates from the various precipitation-relevant satellite passive microwave (PMW) sensors comprising the GPM constellation are computed using the 2021 version of the Goddard Profiling Algorithm (GPROF2021), then gridded, intercalibrated to the GPM Combined Ku Radar-Radiometer Algorithm (CORRA) product, and merged into half-hourly 0.1°x0.1° (roughly 10x10 km) fields. Note that CORRA is adjusted to the monthly Global Precipitation Climatology Project (GPCP) Satellite-Gauge (SG) product over high-latitude ocean to correct known biases.
The half-hourly intercalibrated merged PMW estimates are then input to both a Morphing-Kalman Filter (KF) Lagrangian time interpolation scheme based on work by the Climate Prediction Center (CPC) and the Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks (PERSIANN) Dynamic Infrared–Rain Rate (PDIR) re-calibration scheme. In parallel, CPC assembles the zenith-angle-corrected, intercalibrated merged geo-IR fields and forwards them to PPS for input to the PERSIANN-CCS algorithm (supported by an asynchronous re-calibration cycle) which are then input to the KF morphing (quasi-Lagrangian time interpolation) scheme.
The KF morphing (supported by an asynchronous KF weights updating cycle) uses the PMW and IR estimates to create half-hourly estimates. Motion vectors for the morphing are computed by maximizing the pattern correlation of successive hours within each of the precipitation (PRECTOT), total precipitable liquid water (TQL), and vertically integrated vapor (TQV) data fields provided by the Modern-Era Retrospective Analysis for Research and Applications, Version 2 (MERRA-2) and Goddard Earth Observing System model Version 5 (GEOS-5) Forward Processing (FP) for the post-real-time (Final) Run and the near-real-time (Early and Late) Runs, respectively. The vectors from PRECTOT are chosen if available, else from TQL, if available, else from TQV. The KF uses the morphed data as the “forecast” and the IR estimates as the “observations”, with weighting that depends on the time interval(s) away from the microwave overpass time. The IR becomes important after about ±90 minutes away from the overpass time. Variable averaging in the KF is accounted for in a routine (Scheme for Histogram Adjustment with Ranked Precipitation Estimates in the Neighborhood, or SHARPEN) that compares the local histogram of KF morphed precipitation to the local histogram of forward- and backward-morphed microwave data and the IR.
The IMERG system is run twice in near-real time:
"Early" multi-satellite product ~4 hr after observation time using only forward morphing and
"Late" multi-satellite product ~14 hr after observation time, using both forward and backward morphing
and once after the monthly gauge analysis is received:
"Final", satellite-gauge product ~4 months after the observation month, using both forward and backward morphing and including monthly gauge analyses.
In V07, the near-real-time Early and Late half-hourly estimates have a monthly climatological concluding calibration based on averaging the concluding calibrations computed in the Final, while in the post-real-time Final Run the multi-satellite half-hourly estimates are adjusted so that they sum to the Final Run monthly satellite-gauge combination. In all cases the output contains multiple fields that provide information on the input data, selected intermediate fields, and estimation quality. In general, the complete calibrated precipitation, precipitation, is the data field of choice for most users.
Briefly describing the Final Run, the input precipitation estimates computed from the various satellite passive microwave sensors are intercalibrated to the CORRA product (because it is presumed to be the best snapshot TRMM/GPM estimate after adjustment to the monthly GPCP SG), then "forward/backward morphed" and combined with microwave precipitation-calibrated geo-IR fields, and adjusted with seasonal GPCP SG surface precipitation data to provide half-hourly and monthly precipitation estimates on a 0.1°x0.1° (roughly 10x10 km) grid over the globe. Precipitation phase is a diagnostic variable computed using analyses of surface temperature, humidity, and pressure. The current period of record is June 2000 to the present (delayed by about 4 months).
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Publications Citing This Dataset
| Title | Year Sort ascending | Author | Topic |
|---|---|---|---|
| Aerial photography and machine learning for estimating extremely high flamingo numbers on the Makgadikgadi Pans, Botswana | Yang, Sophie, Francis, Roxane J., Holding, Mike, Kingsford, Richard T. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| A modular framework for FAIR shallow landslide susceptibility mapping based on machine learning | Edrich, Ann-Kathrin, Yildiz, Anil, Roscher, Ribana, Bast, Alexander, Graf, Frank, Kowalski, Julia | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Absolute Intercalibration of Spaceborne Microwave Radiometers | Wentz, Katherine, Meissner, Thomas, Wentz, Frank, Manaster, Andrew | Atmospheric Water Vapor, Precipitation, Radar Cross-Section, Radar Reflectivity, Surface Winds, WIND VELOCITY/SPEED, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| A scenario-based approach for modeling and monitoring the impacts of climate change on forest fire using MODIS time series images | Garajeh, Mohammad Kazemi, Kamran, Khalil Valizadeh, Mirzaei, Saham, Feizizadeh, Bakhtiar | Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| A Probabilistic Statistical Risk Assessment Method for Soil Erosion Using Remote Sensing Data: A Case Study of the Dali River Basin | Zhao, Hao, Cheng, Yuhui, Zhang, Xiwang, Yu, Shiqi, Chen, Mengwei, Zhang, Chengqiang | Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Analysis of radiative heat flux using ASTER thermal images: Climatological and volcanological factors on Java Island, Indonesia | Andriani, Dini, Supriyadi, Aufaristama, Muhammad, Saepuloh, Asep, Singarimbun, Alamta, Srigutomo, Wahyu | Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow, Land Surface Temperature, Sea Surface Temperature | |
| Geographical distribution of coral reefs and their responses to environmental factors in the South China Sea | Li, Tianchi, Feng, Jianlong, Zhao, Liang, Wang, Daoru, Fan, Renfu | Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Assessment of physical schemes for WRF model in convection-permitting mode over southern Iberian Peninsula | Solano-Farias, Feliciano, Garcia-Valdecasas Ojeda, Matilde, Donaire-Montano, David, Rosa-Canovas, Juan Jose, Castro-Diez, Yolanda, Esteban-Parra, Maria Jesus, Gamiz-Fortis, Sonia Raquel | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Capability of satellite data to estimate observed precipitation in | Benitez, Victoria D., Forgioni, Fernando P., Lovino, Miguel A., Sgroi, Leandro, Doyle, Moira E., Muller, Gabriela V. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Bridging the Terrestrial Water Storage Anomalies between the | Qian, Nijia, Gao, Jingxiang, Li, Zengke, Yan, Zhaojin, Feng, Yong, Yan, Zhengwen, Yang, Liu | Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Large-Scale Climate Features Control Fire Emissions and Transport in | Dezfuli, Amin, Ichoku, Charles M., Bosilovich, Michael G. | Geopotential Height, Altitude, Surface Temperature, Skin Temperature, Upper Air Temperature, Dew Point Temperature, Air Temperature, Cloud Top Temperature, Atmospheric Winds, Surface Winds, U/V Wind Components, Upper Level Winds, U/V Wind Components, Vertical Wind Velocity/Speed, Atmospheric Pressure, Sea Level Pressure, Cloud Top Pressure, Sea Level Pressure, Surface Pressure, Specific Humidity, Total Precipitable Water, Cloud Liquid Water/Ice, Atmospheric Water Vapor, Atmospheric Ozone, Oxygen Compounds, Boundary Layer Winds, Total Ozone, Aerosols, Aerosol Extinction, Aerosol Optical Depth/Thickness, Angstrom Exponent, Aerosol Particle Properties, Carbonaceous Aerosols, Dust/Ash/Smoke, Organic Particles, Sulfate Particles, Sulfur Oxides, Sulfur Compounds, Sulfate, Sulfur Dioxide, Sulfur Oxides, Particulate Matter, Dimethyl Sulfide, Black Carbon, Sea Salt, PARTICULATE MATTER (PM 2.5), PARTICULATE MATTER (PM 10), PARTICULATE MATTER (PM 1.0), Potential Vorticity, Vertical Profiles, Relative Humidity, Ozone Profiles, Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Saharan rainfall climatology and its relationship with surface cyclones | Armon, Moshe, de Vries, Andries Jan, Marra, Francesco, Peleg, Nadav, Wernli, Heini | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Study on the Seasonal and Spatial Variations of Cirrus Parameters, Radiative Characteristics and Precipitation over the Indian Subcontinent | Priya, J. S., Krishnakumar, V., Baiju, Sona, Sreelekshmi, R. G., Shoufeer, Afna | Aerosol Backscatter, Aerosol Extinction, Aerosol Optical Depth/Thickness, Angstrom Exponent, Aerosol Particle Properties, Aerosol Radiance, Carbonaceous Aerosols, Cloud Condensation Nuclei, Dust/Ash/Smoke, Nitrate Particles, Organic Particles, Particulate Matter, Sulfate Particles, Trace Gases/Trace Species, Atmospheric Emitted Radiation, Emissivity, Optical Depth/Thickness, Radiative Flux, Reflectance, Transmittance, Atmospheric Stability, Humidity, Total Precipitable Water, Water Vapor Profiles, Cloud Condensation Nuclei, Cloud Droplet Concentration/Size, Cloud Liquid Water/Ice, Cloud Optical Depth/Thickness, Cloud Asymmetry, Cloud Ceiling, Cloud Frequency, Cloud Height, Cloud Top Pressure, Cloud Top Temperature, Cloud Vertical Distribution, Cloud Emissivity, Cloud Radiative Forcing, Cloud Reflectance, Rain Storms, Atmospheric Ozone, Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Spatial-Temporal Evaluation of Satellite-Derived Rainfall Estimations for Water Resource Applications in the Upper Congo River Basin | Boluwade, Alaba | Total Surface Precipitation Rate, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Spatio-Temporal Analysis of Fire Events Over the Past 10 Years in the Central-East Region of Argentina and Surrounding Areas | Seijo, Maria Fernanda Valle, Otero, Lidia Ana, Piacentini, Ruben Dario | Air Temperature, Precipitation Rate, 24 Hour Maximum Temperature, 24 Hour Minimum Temperature, Precipitation, Precipitation Amount, Snow, Rain | |
| Spatiotemporal analysis of different vegetation indices and relation to meteorological parameters over a tropical urban location and its surroundings | De, Arijit, Sahani, Nemai, Datta, Abhirup, Maitra, Animesh | Emissivity, Land Surface Temperature, Gross Primary Production (gpp), Vegetation Cover, Fraction Of Absorbed Photosynthetically Active Radiation (fapar), Primary Production, Land Use/Land Cover Classification, Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Spatial and conventional verifications of hurricanes Dorian and Fiona using the Canadian precipitation analysis & integrated multi-satellite retrievals for GPM products | Boluwade, Alaba, Farooque, Aitazaz A. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Utility of satellite precipitation products for drought monitoring (case study: southwestern regions in Iran) | Keikhosravi-Kiany, Mohammad Sadegh, Balling, Robert C. | Total Surface Precipitation Rate, Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Spatiotemporal evaluation of five satellite-based precipitation products under the arid environment of Saudi Arabia | Jazem Ghanim, Abdulnoor Ali, Anjum, Muhammad Naveed, Alharbi, Raid Saad, Aurangzaib, Muhammad, Zafar, Usama, Rehamn, Abdur, Irfan, Muhammad, Rahman, Saifur, Faraj Mursal, Salim Nasar, Alyami, Saleh, Algobahi, Redhwan M., Alhamami, Ali | Total Surface Precipitation Rate, Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Spatiotemporal Variations in Snow Cover on the Tibetan Plateau from 2003 to 2020 | Pu, Chaoxu, Zhou, Shuaibo, Sun, Peijun, Luo, Yunchuan, Li, Siyi, Sun, Zhangli | Precipitation, Rain, Precipitation Amount, Precipitation Rate, Snow | |
| Warming Climate-Induced Changes in Cloud Vertical Distribution Possibly | Zhao, Yang, Li, Jiming, Wang, Yifei, Zhang, Weiyuan, Wen, Deyu | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Validation of CRU TS v4.08, ERA5-Land, IMERG v07B, and MSWEP v2.8 Precipitation Estimates Against Observed Values over Pakistan | Abbas, Haider, Song, Wenlong, Wang, Yicheng, Xiang, Kaizheng, Chen, Long, Feng, Tianshi, Linghu, Shaobo, Alam, Muneer | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Two-decadal climate impacts on growth of major forest types of Eastern Himalaya | Chanda, Rajdeep, Singh, Salam Suresh, Singh, Ngangbam Somen, Upadhyay, Keshav Kumar, Tripathi, Shri Kant | Surface Pressure, Heat Flux, Longwave Radiation, Shortwave Radiation, Air Temperature, Specific Humidity, Evapotranspiration, Wind Speed, Rain, Snow, Soil Moisture/Water Content, Soil Temperature, Land Surface Temperature, Snow Cover, Snow Depth, Snow Water Equivalent, Runoff, Precipitation, Precipitation Amount, Precipitation Rate, Surface Temperature, Skin Temperature, Upper Air Temperature, Atmospheric Winds, Surface Winds, U/V Wind Components, Atmospheric Pressure, Sea Level Pressure, Total Precipitable Water, Cloud Liquid Water/Ice, Atmospheric Water Vapor, Atmospheric Ozone, Oxygen Compounds, Altitude, Boundary Layer Winds, Relative Humidity, Cloud Optical Depth/Thickness, Cloud Properties, Cloud Fraction, Cloud Mass Flux | |
| Uncertainty of Atmospheric Winds in Three Widely Used Global Reanalysis Datasets | Wu, Longtao, Su, Hui, Zeng, Xubin, Posselt, Derek J., Wong, Sun, Chen, Shuyi, Stoffelen, Ad | Precipitation, Brightness Temperature, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Upgrade and extension of LSA-SAF land surface albedo archive from EPS Metop/AVHRR: description and quality assessment | Delmotte, Anthea, Juncu, Daniel, Ceamanos, Xavier, Trigo, Isabel F., Gomes, Sandra | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain |