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Estimating Rainfall Anomalies with IMERG Satellite Data: Access via the IPE Web Application
by
Mehta, Amita V.
, Liang, Chen
, Onochie, Sandra Ogugua
, Coll, James Matthew
, Ekpetere, Kenneth Okechukwu
, Ekpetere, Michael Chinedu
in
Anomalies
/ Applications programs
/ Bias
/ Climate change
/ Climate models
/ Climate science
/ Climate studies
/ Climatic changes
/ Correlation coefficient
/ Correlation coefficients
/ Drought
/ El Nino
/ Estimation
/ Extreme weather
/ Floods
/ Global climate
/ Hydrologic data
/ IMERG
/ Internet software
/ IPE
/ Precipitation
/ Rain
/ Rain and rainfall
/ Rainfall
/ rainfall anomaly index
/ rainfall frequencies
/ Rainfall intensity
/ Regions
/ Root-mean-square errors
/ Wet climates
2024
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Estimating Rainfall Anomalies with IMERG Satellite Data: Access via the IPE Web Application
by
Mehta, Amita V.
, Liang, Chen
, Onochie, Sandra Ogugua
, Coll, James Matthew
, Ekpetere, Kenneth Okechukwu
, Ekpetere, Michael Chinedu
in
Anomalies
/ Applications programs
/ Bias
/ Climate change
/ Climate models
/ Climate science
/ Climate studies
/ Climatic changes
/ Correlation coefficient
/ Correlation coefficients
/ Drought
/ El Nino
/ Estimation
/ Extreme weather
/ Floods
/ Global climate
/ Hydrologic data
/ IMERG
/ Internet software
/ IPE
/ Precipitation
/ Rain
/ Rain and rainfall
/ Rainfall
/ rainfall anomaly index
/ rainfall frequencies
/ Rainfall intensity
/ Regions
/ Root-mean-square errors
/ Wet climates
2024
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Do you wish to request the book?
Estimating Rainfall Anomalies with IMERG Satellite Data: Access via the IPE Web Application
by
Mehta, Amita V.
, Liang, Chen
, Onochie, Sandra Ogugua
, Coll, James Matthew
, Ekpetere, Kenneth Okechukwu
, Ekpetere, Michael Chinedu
in
Anomalies
/ Applications programs
/ Bias
/ Climate change
/ Climate models
/ Climate science
/ Climate studies
/ Climatic changes
/ Correlation coefficient
/ Correlation coefficients
/ Drought
/ El Nino
/ Estimation
/ Extreme weather
/ Floods
/ Global climate
/ Hydrologic data
/ IMERG
/ Internet software
/ IPE
/ Precipitation
/ Rain
/ Rain and rainfall
/ Rainfall
/ rainfall anomaly index
/ rainfall frequencies
/ Rainfall intensity
/ Regions
/ Root-mean-square errors
/ Wet climates
2024
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Estimating Rainfall Anomalies with IMERG Satellite Data: Access via the IPE Web Application
Journal Article
Estimating Rainfall Anomalies with IMERG Satellite Data: Access via the IPE Web Application
2024
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Overview
This study assesses the possibilities of the Integrated Multi-satellite Retrievals for Global Precipitation Measurement (IMERG-GPM) to estimate extreme rainfall anomalies. A web application, the IMERG Precipitation Extractor (IPE), was developed which allows for the querying, visualization, and downloading of time-series satellite precipitation data for points, watersheds, country extents, and digitized areas. The tool supports different temporal resolutions ranging from 30 min to 1 week and facilitates advanced analyses such as anomaly detection and storm tracking, an important component for climate change study. To validate the IMERG precipitation data for anomaly estimation over a 22-year period (2001 to 2022), the Rainfall Anomaly Index (RAI) was calculated and compared with RAI data from 2360 NOAA stations across the conterminous United States (CONUS), considering both dry and wet climate regions. In the dry region, the results showed an average correlation coefficient (CC) of 0.94, a percentage relative bias (PRB) of −22.32%, a root mean square error (RMSE) of 0.96, a mean bias ratio (MBR) of 0.74, a Nash–Sutcliffe Efficiency (NSE) of 0.80, and a Kling–Gupta Efficiency (KGE) of 0.52. In the wet region, the average CC of 0.93, PRB of 24.82%, RMSE of 0.96, MBR of 0.79, NSE of 0.80, and KGE of 0.18 were computed. Median RAI indices from both the IMERG and NOAA indicated an increase in rainfall intensity and frequency since 2010, highlighting growing concerns about climate change. The study suggests that IMERG data can serve as a valuable alternative for modeling extreme rainfall anomalies in data-scarce areas, noting its possibilities, limitations, and uncertainties. The IPE web application also offers a platform for extending research beyond CONUS and advocating for further global climate change studies.
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