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 Older versions will no longer be available and have been superseded by Version 07.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.
Precipitation phase is a diagnostic variable computed using analyses of surface temperature, humidity, and pressure.
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Publications Citing This Dataset
| Title | Year Sort ascending | Author | Topic |
|---|---|---|---|
| Intercomparison of Automated Near-Real-Time Flood Mapping Algorithms Using Satellite Data and DEM-Based Methods: A Case Study of 2022 Madagascar Flood | Li, Wenzhao, Li, Dongfeng, Fang, Zheng N. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Influences of Using Different Satellite Soil Moisture Products on SM2RAIN for Rainfall Estimation Across the Tibetan Plateau | Miao, Linguang, Wei, Zushuai, Hu, Fengmin, Duan, Zheng | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Improved the Characterization of Flood Monitoring Based on Reconstructed | Nie, Shengkun, Zheng, Wei, Yin, Wenjie, Zhong, Yulong, Shen, Yifan, Li, Kezhao | Total Surface Precipitation Rate, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Improving the SM2RAIN-derived rainfall estimation using Bayesian optimization | Miao, Linguang, Wei, Zushuai, Zhong, Yanmei, Duan, Zheng | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Impact of land surface processes on convection over West Africa in convectionpermitting ensemble forecasts: A case study using the MOGREPS ensemble | Semeena, Valiyaveetil Shamsudheen, Klein, Cornelia, Taylor, Christopher M., Webster, Stuart | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Impacts of Direct Assimilation of the FY-4A/GIIRS Long-Wave Temperature | Zhang, Lei, Niu, Zeyi, Weng, Fuzhong, Dong, Peiming, Huang, Wei, Zhu, Jia | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Implementation of a probability matching method in developing intensitydurationfrequency relationships for sub-daily durations using IMERG satellite-based data | Najafi Tireh Shabankareh, Rahim, Abedini, Mohammad Javad | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Earth Observation Data Synergy for the Enhanced Monitoring of Ephemeral Water Bodies to Anticipate Karst-Related Flooding | Papageorgiou, Elena, Foumelis, Michael, Mouratidis, Antonios | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Diffusion-based Composite Meteorological Element Regional Weather Generator | Zhao, Yahan, Xiu, Jiapeng, Yang, Zhengqiu, Liu, Chen | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Effect of GNSS radio occultation observations on the prediction of the | Wang, Yu, Jin, Shuanggen | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Drought monitoring performance of global precipitation products in three | Degefu, Mekonnen Adnew, Bewket, Woldeamlak | 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 1.0), PARTICULATE MATTER (PM 10), Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Drought Propagation in Brazilian Biomes Revealed by Remote Sensing | Rossi, Julia Brusso, Ruhoff, Anderson, Fleischmann, Ayan Santos, Laipelt, Leonardo | Photosynthesis, Primary Production, Vegetation Productivity, Land Surface Temperature, Emissivity, Vegetation Index, Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI), Evapotranspiration, Latent Heat Flux, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Downscaling and Merging of Daily Scale Satellite Precipitation Data in | Xu, Chi, Liu, Chuanqi, Zhang, Wanchang, Li, Zhenghao, An, Bangsheng | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Dataset on the global distribution of shallow groundwater | Soylu, Mehmet Evren, Bras, Rafael L. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Evaluation of 12 precipitation products and comparison of 8 multi-model averaging methods for estimating precipitation in the Qilian Mountains, Northwest China | Yang, Yong, Chen, Rensheng, Ding, Yongjian, Qing, Wenwu, Li, Hongyuan, Han, Chuntan, Liu, Zhangwen, Liu, Junfeng | Total Surface Precipitation Rate, 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, Surface Temperature, Humidity, Surface Winds, Precipitation Rate, Precipitation, Precipitation Amount | |
| Evaluating the Effectiveness of Calcium Silicate in Enhancing Soybean Growth and Yield | Attipoe, John Quarshie, Khan, Waleed, Tayade, Rupesh, Steven, Senabulya, Islam, Mohammad Shafiqul, Lay, Liny, Ghimire, Amit, Kim, Hogyun, Sereyvichea, Muong, Propey, Then, Rana, Yam Bahadur, Kim, Yoonha | Surface Pressure, Heat Flux, Longwave Radiation, Shortwave Radiation, Surface Temperature, Humidity, Evapotranspiration, Surface Winds, Rain, Precipitation Rate, Snow, Soil Moisture/Water Content, Soil Temperature, Land Surface Temperature, Snow Water Equivalent, Runoff, Precipitation, Precipitation Amount | |
| Evaluating the Hydrological Components Contributions to Terrestrial | Guo, Yi, Xing, Naichen, Gan, Fuping, Yan, Baikun, Bai, Juan | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Comprehensive analysis of droughts over the Middle East using IMERG data over the past two decades (20012020) | Ghasemifar, Elham, Sonboli, Zahra, Hedayatizade, Mahin | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Combining APHRODITE Rain Gauges-Based Precipitation with Downscaled-TRMM | Noor, Rabeea, Arshad, Arfan, Shafeeque, Muhammad, Liu, Jinping, Baig, Azhar, Ali, Shoaib, Maqsood, Aarish, Pham, Quoc Bao, Dilawar, Adil, Khan, Shahbaz Nasir, Anh, Duong Tran, Elbeltagi, Ahmed | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Estimating the Impacts of Ungauged Reservoirs Using Publicly Available | Nguyen, Ngoc Thi, Du, Tien Le Thuy, Park, Hyunkyu, Chang, Chi-Hung, Choi, Sunghwa, Chae, Hyosok, Nelson, E. James, Hossain, Faisal, Kim, Donghwan, Lee, Hyongki | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Estimating Monthly River Discharges from GRACE/GRACE-FO Terrestrial | Duvvuri, Bhavya, Beighley, Edward | Emissivity, Land Surface Temperature, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Contributions from climate variation and human activities to flow regime change of Tonle Sap Lake from 2001 to 2020 | Morovati, Khosro, Tian, Fuqiang, Kummu, Matti, Shi, Lidi, Tudaji, Mahmut, Nakhaei, Pouria, Alberto Olivares, Marcelo | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Convection-permitting climate simulations for South America with the Met | Halladay, Kate, Kahana, Ron, Johnson, Ben, Still, Christopher, Fosser, Giorgia, Alves, Lincoln | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Divergent runoff regime revealed by hydrological simulations with corrected precipitation in the upper Indus | Meng, Fanchong, Su, Fengge, Sun, He, Huang, Jingheng, Li, Chunhong | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Surface Pressure, Heat Flux, Longwave Radiation, Shortwave Radiation, Surface Temperature, Humidity, Evapotranspiration, Surface Winds, Soil Moisture/Water Content, Soil Temperature, Land Surface Temperature, Snow Water Equivalent, Runoff | |
| Cyclone Yaas: A Curse to Coastal People of Odisha and West Bengal (India) | Chatterjee, Soumen, Biswas, Biplab | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain |