The lack of accurate estimation of intense precipitation is a universal limitation in precipitation retrieval. Therefore, a new rainfall retrieval technique based on the Random Forest (RF) algorithm is presented using the Advanced Himawari Imager-8 (Himawari-8/AHI) infrared spectrum data and the NCEP operational Global Forecast System (GFS) forecast information. And the gauge-calibrated rainfall estimates from the Global Precipitation Measurement (GPM) product served as the ground truth to train the model. The two-step RF classification model was established for (1) rain area delineation and (2) precipitation grades’ estimation to improve the accuracy of moderate rain and heavy rain. In view of the imbalance categories’ distribution in the ...
Extreme precipitation events have increasingly happened at global and regional scales as the global ...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Accurate estimation of drought events is vital for the mitigation of their adverse consequences on w...
Increasing the accuracy of rainfall forecasts is crucial as an effort to prevent hydrometeorological...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Attaining accurate precipitation data is critical to understanding land surface processes and global...
Southwest Asia has different climate types including arid, semiarid, Mediterranean, and temperate re...
AbstractThe present study aims to investigate the potential of the random forests ensemble classific...
This study presents the results of an effort to improve the forecast of precipitation (> 0.1 mm/hr o...
Precipitation data are important for the fields of hydrology and meteorology, and are fundamental fo...
Precipitation with high spatial and temporal resolution can improve the defense capability of meteor...
Accurately and timely predicting climatic variables are most challenging task for the researchers. S...
One of the most difficult aspects of weather forecasting is tropical weather forecasting. Rainfall p...
The provision of high resolution near real-time rainfall data has made satellite rainfall products v...
Precipitation is one of the driving forces in water cycles, and it is vital for understanding the wa...
Extreme precipitation events have increasingly happened at global and regional scales as the global ...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Accurate estimation of drought events is vital for the mitigation of their adverse consequences on w...
Increasing the accuracy of rainfall forecasts is crucial as an effort to prevent hydrometeorological...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Attaining accurate precipitation data is critical to understanding land surface processes and global...
Southwest Asia has different climate types including arid, semiarid, Mediterranean, and temperate re...
AbstractThe present study aims to investigate the potential of the random forests ensemble classific...
This study presents the results of an effort to improve the forecast of precipitation (> 0.1 mm/hr o...
Precipitation data are important for the fields of hydrology and meteorology, and are fundamental fo...
Precipitation with high spatial and temporal resolution can improve the defense capability of meteor...
Accurately and timely predicting climatic variables are most challenging task for the researchers. S...
One of the most difficult aspects of weather forecasting is tropical weather forecasting. Rainfall p...
The provision of high resolution near real-time rainfall data has made satellite rainfall products v...
Precipitation is one of the driving forces in water cycles, and it is vital for understanding the wa...
Extreme precipitation events have increasingly happened at global and regional scales as the global ...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Accurate estimation of drought events is vital for the mitigation of their adverse consequences on w...