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 Older versions will no longer be available and have been superseded by Version 07.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 |
|---|---|---|---|
| Increasing temporal stability of global tropical cyclone precipitation | Deng, E, Xiang, Qian, Chan, Johnny C. L., Dong, Yue, Tu, Shifei, Chan, Pak-Wai, Ni, Yi-Qing | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Initial Polarimetric Radio Occultation Results from Spire's Nanosatellite Constellation: Satellite Payload, Collection, and Calibration | Talpe, Matthieu J., Nguyen, Vu A., Tomas, Sergio | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| InSAR Reveals Recovery of Stressed Aquifer Systems in Parts of Delhi | Kumar, Hrishikesh, Syed, Tajdarul Hassan, Amelung, Falk, Mirzaee, Sara, Venkatesh, A. S., Agrawal, Ritesh | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Influence of Soil Moisture on the Development of Organized Convective | Paccini, Laura, Schiro, Kathleen A. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Mid-Latitude Versus Tropical Scales of Predictability and Their | Keane, Richard J., Parker, Douglas J., DunnSigouin, Etienne, Kolstad, Erik W., Marsham, John H. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Mesoscale Convective Systems in Northeast China From Satellite Products | Yu, Hongyong, Prein, Andreas F., Qi, Dan, Wang, Kaicun | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Brightness Temperature | |
| Mesoscale Convective Systems over Ecuador: Climatology, Trends and | Robaina, Leandro, Campozano, Lenin, Villacis, Marcos, Rehbein, Amanda | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Mesoscale Convective Systems over South America: Representation in Kilometer-Scale Met Office Unified Model Climate Simulations | Gilmour, Harriet, Chadwick, Robin, Catto, Jennifer L., Halladay, Kate, Hart, Neil C. G., Rehbein, Amanda | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Brightness Temperature | |
| Mesoscale Convective Systems over South Asia: Unraveling climatology, land-ocean differences and environmental drivers | Paul, Debjit, Dubey, Sarvesh, Cui, Wenjun | Precipitation, Brightness Temperature, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Mesoscale Convective Systems Tracking Method Intercomparison (MCSMIP): | Feng, Zhe, Prein, Andreas F., Kukulies, Julia, Fiolleau, Thomas, Jones, William K., Maybee, Ben, Moon, Zachary L., Nunez Ocasio, Kelly M., Dong, Wenhao, Molina, Maria J., Albright, Mary Grace, Rajagopal, Manikandan, Robledo, Vanessa, Song, Jinyan, Song, Fengfei, Leung, L. Ruby, Varble, Adam C., Klein, Cornelia, Roca, Remy, Feng, Ran, Mejia, John F. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Atmospheric Water Vapor, RADAR, Brightness Temperature | |
| Mechanistic Modeling of Aedes aegypti Mosquito Habitats for | Yasanayake, C. N., Zaitchik, B. F., Gnanadesikan, A., Gardner, L. M., Shet, A. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, 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, Atmospheric Radiation, Longwave Radiation, Shortwave Radiation, Radiative Flux, Radiative Forcing, Surface Radiative Properties, Albedo, Emissivity, Cloud Properties, Cloud Fraction, Cloud Optical Depth/Thickness, Skin Temperature, Sea Surface Skin Temperature, Soil Heat Budget, Soil Heat Budget, Soil Temperature, Soil Temperature, Soil Infiltration, Soil Infiltration, Soil Moisture/Water Content, Surface Soil Moisture, Root Zone Soil Moisture, Soil Moisture/Water Content, Evaporation, Surface Water, Runoff Rate, Average Flow, Average Flow, Snow/Ice, Snow Depth, Snow Melt, Snow/Ice Temperature, Leaf Area Index (LAI), Leaf Area Index (LAI) | |
| Mapping the spatio-temporal distribution of burned areas in the Amazon | Abid, Mohamed, Gonzalez, Jonatan A., de Rivera, Oscar Rodriguez, Moraga, Paula | Fire Ecology, Biomass Burning, Wildfires, Fire Occurrence, Land Use/Land Cover Classification, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Surface Pressure, Heat Flux, Longwave Radiation, Shortwave Radiation, Air Temperature, Specific Humidity, Evapotranspiration, Wind Speed, Soil Moisture/Water Content, Soil Temperature, Land Surface Temperature, Snow Cover, Snow Depth, Snow Water Equivalent, Runoff, Burned Area, Emissivity | |
| Making earth observations model-friendly: An interoperable tool enabling | Wang, Linji, Rajib, Adnan, Merwade, Venkatesh | Leaf Characteristics, Photosynthetically Active Radiation, Leaf Area Index (LAI), Fraction Of Absorbed Photosynthetically Active Radiation (fapar), Evapotranspiration, Latent Heat Flux, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Interferometric Radar Satellite and In-Situ Well Time-Series Reveal | Kakar, N., Metzger, S., Schone, T., Motagh, M., Waizy, H., Nasrat, N. A., Lazecky, M., Amelung, F., Bookhagen, B. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Interplay of freezethaw cycles and avalanche impact on glacial landslidedebris flow geohazard chain in the southeastern Tibetan Plateau | Huang, Taosheng, Wang, Tengfei, Zhang, Limin, Peng, Dalei, Shen, Ping | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Observation of Gravity Waves Generated by Convection and the ``Moving | Corcos, Milena, Bramberger, Martina, Alexander, M. Joan, Hertzog, Albert, Liu, Chuntao, Wright, Corwin | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Observational evidence of increased afternoon rainfall downwind of irrigated areas | Greve, P., Schmitt, A. U., Miralles, D. G., McDermid, S., Findell, K. L., Garcia-Garcia, A., Peng, J. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Land Use/Land Cover Classification | |
| On the utility of Ensemble Rainfall Forecasts over River Basins in India | Dube, Anumeha, Ashrit, Raghavendra | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| All-Sky Assimilation of GOES-16 Water Vapor Channels in Consideration of Cloud-Dependent Interchannel Observation-Error Correlations | Feng, Chengfeng, Pu, Zhaoxia | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Added Value of Environmental Variables for Satellite Precipitation | Li, Runze, Guilloteau, Clement, FoufoulaGeorgiou, Efi | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Liquid Precipitation, Precipitation Rate, Radar Reflectivity | |
| An unexpected peak in daytime convection initiation weakens diurnal amplitude of tropical oceanic precipitation and cloud cover | Wessinger, Sarah E., Rapp, Anita D., Elsaesser, Gregory S. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Analise de concordancia dos dados de precipitacao estimados por sensoriamento remoto em Mesorregioes do estado de Pernambuco Brasil | Costa Neto, Frederico Antonio Peregrino Wanderley da, Salgueiro, Camila Oliveira de Britto, Menezes, Rebecca Borja Goncalves Gomes de, Santos, Sylvana Melo dos, Oliveira, Leidjane Maria Maciel de | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| An approach for good modeling and forecasting of sea surface salinity in | Ajibola-James, Opeyemi, Okeke, Francis I. | Surface Winds, Salinity, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| A Single Tropical Rainbelt in Global Storm-Resolving Models: The Role of | Segura, H., Bayley, C., Fievet, R., Glockner, H., Gunther, M., Kluft, L., Naumann, A. K., Ortega, S., Praturi, D. S., Rixen, M., Schmidt, H., Winkler, M., Hohenegger, C., Stevens, B. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| A self-attention multisource precipitation fusion model for improving | You, Shaojie, Zhang, Xiaodan, Wang, Hongyu, Quan, Chen, Zhao, Tong, Zhang, Yongkun, Liu, Chang | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain |