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 Older versions will no longer be available and have been superseded by Version 07.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 |
|---|---|---|---|
| Greenhouse gas-induced modification of intense storms over the west | Zhao, Siyu, Cook, Kerry H., Vizy, Edward K. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| First observational investigation on the temporal trends of Vertical Total Electron Content (VTEC) over an equatorial station: Discerning the impacts of Mora and Ockhi Two tropical cyclones in 2017 | Chowdhury, Swati, Subrahamanyam, D. Bala, Choudhary, R.K. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Evaluation of IMERG climate trends over land in the TRMM and GPM eras | Zhu, Siyu, Li, Zhi, Chen, Mengye, Wen, Yixin, Liu, Zhong, Huffman, George J, Tsoodle, Theresa E, Ferraro, Sebastian C, Wang, Yuzhou, Hong, Yang | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Evaluation of IMERG precipitation product over various temporal scales in a semi-arid region of southern Iran | Najafi Tireh Shabankareh, Rahim, Ziaee, Pardis, Abedini, Mohammad Javad | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Comparing Remote Sensing and Geostatistical Techniques in Filling Gaps in Rain Gauge Records and Generating Multi-Return Period Isohyetal Maps in Arid RegionsCase Study: Kingdom of Saudi Arabia | Helmi, Ahmed M., Farouk, Mohamed I., Hassan, Raouf, Mumtaz, Mohd Aamir, Chaouachi, Lotfi, Elgamal, Mohamed H. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Comparing the atmospheric and ocean characteristics associated with two | Paul, Debashis, Panda, Jagabandhu, Sarkar, Ankan, Kumar, Subodh, Zhu, YiJie, Collins, Jennifer | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Non-negligible clear-sky biases of satellite thermal infrared observations for analyzing surface urban heat island intensity: A case study in China | Ma, Jin, Zhou, Ji, Zhang, Tao, Tang, Wenbin, Liao, Yangsiyu, Yang, Miao | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Albedo, Anisotropy, Land Surface Temperature, Emissivity, Vegetation Index, Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI), Air Temperature, 24 Hour Maximum Temperature, 24 Hour Minimum Temperature, Land Use/Land Cover Classification | |
| Precipitation variability related to atmospheric circulation patterns | Lai, HuiWen, Chen, Deliang, Chen, Hans W. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Precursors and pathways: dynamically informed extreme event forecasting demonstrated on the historic Emilia-Romagna 2023 flood | Dorrington, Joshua, Wenta, Marta, Grazzini, Federico, Magnusson, Linus, Vitart, Frederic, Grams, Christian M. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Multiscale interactions associated with two offshore rainfall events near the west coast of Sumatra | Stoddard, Johnathan, Pu, Zhaoxia | Surface Temperature, Skin Temperature, Upper Air Temperature, Air Temperature, Atmospheric Winds, Surface Winds, U/V Wind Components, Atmospheric Pressure, Sea Level Pressure, Surface Pressure, Specific Humidity, Total Precipitable Water, Cloud Liquid Water/Ice, Atmospheric Water Vapor, Atmospheric Ozone, Oxygen Compounds, Altitude, Boundary Layer Winds, Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Multidimensional forecasting of precipitation and potential | Mendez Vallejo, Carlos Andres, Lilla Manzione, Rodrigo | 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 | |
| Optimal model-based temperature inputs for global soil moisture and vegetation optical depth retrievals from SMAP | Xiao, Yao, Li, Xiaojun, Fan, Lei, De Lannoy, Gabrielle, Peng, Jian, Frappart, Frederic, Ebtehaj, Ardeshir, de Rosnay, Patricia, Xing, Zanpin, Yu, Ling, Dong, Guanyu, Yueh, Simon H., Colliander, Andress, Wigneron, Jean-Pierre | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Brightness Temperature, Surface Soil Moisture | |
| Monitoring monthly mortality of maricultured Atlantic salmon (Salmo salar L.) in Scotland I. Dynamic linear models at production cycle level | Merca, Carolina, Boerlage, Annette Simone, Kristensen, Anders Ringgaard, Jensen, Dan Brge | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Monitoring Cover Crop Biomass in Southern Brazil Using Combined | Breunig, Fabio Marcelo, Dalagnol, Ricardo, Galvao, Lenio Soares, Bispo, Polyanna da Conceicao, Liu, Qing, Berra, Elias Fernando, Gaida, William, Liesenberg, Veraldo, Sampaio, Tony Vinicius Moreira | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Air Temperature, 24 Hour Maximum Temperature, 24 Hour Minimum Temperature | |
| Monsoonal MCS Initiation, Rainfall, and Diurnal Gravity Waves over the Bay of Bengal: Observation and a Linear Model | Peng, Chin-Hsuan, Chen, Xingchao | Precipitation, Brightness Temperature, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| NEW MONTHLY PRECIPITATION DATABASE OF ARGENTINA (PMRAv1), 2000-2022 | Gaitan, Juan J., Biancari, Lucio | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Numerical Study on the Effect of Warm Ocean Anomalies in the South China Sea on the Heavy Rainfall Event on Hainan Island | Hao, Sai, Peng, Wei, Chen, Li, Liu, Xiaoyan, Liu, Kewei | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Occurrence and characteristics of snowfall on the highest mountain of Mexico (Citlaltepetl volcano) through the grounds surface temperature | Soto, Victor, Delgado-Granados, Hugo | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Observations and computational multi-phase modelling in tropical river | Panici, Diego, Bennett, Georgina L., Boothroyd, Richard J., Abanco, Claudia, Williams, Richard D., Tan, Fibor, Matera, Mark | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Modeling of mercury deposition in India: evaluating emission inventories and anthropogenic impacts | Malasani, Chakradhar Reddy, Swain, Basudev, Patel, Ankit, Pulipatti, Yaswanth, Anchan, Nidhi L., Sharma, Amit, Vountas, Marco, Liu, Pengfei, Gunthe, Sachin S. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Modelling antecedent soil hydrological conditions to improve the prediction of landslide susceptibility in typhoon-prone regions | Abanco, Claudia, Asurza, Flavio Alexander, Medina, Vicente, Hurlimann, Marcel, Bennett, Georgina L. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain, Root Zone Soil Moisture, Surface Soil Moisture | |
| Mesoscale structures in the Orinoco basin during an extreme | Martinez, J. Alejandro, Arias, Paola A., Dominguez, Francina, Prein, Andreas | Precipitation, Brightness Temperature, Precipitation Amount, Precipitation Rate, Snow, Rain, Total Surface Precipitation Rate | |
| Mechanisms Accounting for the Formation of the Strong Winds that Caused the Tripping Incident of Transmission Line in Eastern Inner Mongolia | Jin, Shuanglong, Liu, Xiaolin, Bo, Wang, Song, Zongpeng | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Moist processes in NCUM global forecasts during the boreal summer monsoon | Mohan, T.S., Kumar, Kondapalli Niranjan, Ashrit, Raghavendra, Martin, Gill, Jayakumar, A., Mohandas, Saji, Sarkar, Abhijit, Prasad, V.S. | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain | |
| Real-time water quality forecasting in rivers using satellite data and dynamic models: an online system for operational management, control and citizen science | Whitehead, Paul G., Edmunds, Paul, Bussi, Gianbattista, ODonnell, Seamus, Futter, Martyn, Groom, Steve, Rampley, Cordelia, Szweda, Chris, Johnson, David, Triggs Hodge, Andy, Porter, Tim, Castro, Geraldine | Precipitation, Precipitation Amount, Precipitation Rate, Snow, Rain |