The machine learning algorithms application in atmospheric sciences along the Earth System Models has the potential of improving prediction, forecast, and reconstruction of missing data. In the current study, a combination of two machine learning techniques namely K-means, and decision tree (C4.5) algorithms, are used to separate observed precipitation into clusters and classified the associated large-scale circulation indices. Observed precipitation from the Chinese Meteorological Agency (CMA) during 1961–2016 for 83 stations in the Poyang Lake basin (PLB) is used. The results from K-Means clusters show two precipitation clusters splitting the PLB precipitation into a northern and southern cluster, with a silhouette coefficient ~0.5. The P...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
Sub-seasonal to seasonal (S2S) forecasting ranges from two weeks to two months. This range of time h...
The temporal and spatial scale dependent relation of Convective Available Potential Energy (CAPE) an...
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.The machine learning algorithms application...
The middle and lower reaches of the Yangtze River valley (YRV), which are among the most densely pop...
Gridded precipitation data with a high spatiotemporal resolution are of great importance for studies...
A winter precipitation-type prediction is a challenging problem due to the complexity in the physica...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...
Accurate estimation of drought events is vital for the mitigation of their adverse consequences on w...
This thesis introduces a new object-oriented precipitation data set and explores statistical methods...
Regional rainfall forecasting is an important issue in hydrology and meteorology. Machine learning a...
The prediction of summer precipitation patterns (PPs) over eastern China is an important and topical...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Attaining accurate precipitation data is critical to understanding land surface processes and global...
Precipitation is one of the driving forces in water cycles, and it is vital for understanding the wa...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
Sub-seasonal to seasonal (S2S) forecasting ranges from two weeks to two months. This range of time h...
The temporal and spatial scale dependent relation of Convective Available Potential Energy (CAPE) an...
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.The machine learning algorithms application...
The middle and lower reaches of the Yangtze River valley (YRV), which are among the most densely pop...
Gridded precipitation data with a high spatiotemporal resolution are of great importance for studies...
A winter precipitation-type prediction is a challenging problem due to the complexity in the physica...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...
Accurate estimation of drought events is vital for the mitigation of their adverse consequences on w...
This thesis introduces a new object-oriented precipitation data set and explores statistical methods...
Regional rainfall forecasting is an important issue in hydrology and meteorology. Machine learning a...
The prediction of summer precipitation patterns (PPs) over eastern China is an important and topical...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Attaining accurate precipitation data is critical to understanding land surface processes and global...
Precipitation is one of the driving forces in water cycles, and it is vital for understanding the wa...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
Sub-seasonal to seasonal (S2S) forecasting ranges from two weeks to two months. This range of time h...
The temporal and spatial scale dependent relation of Convective Available Potential Energy (CAPE) an...