Due to the spatiotemporal variability of precipitation and the complexity of physical processes involved, missing precipitation data estimation remains as a significant problem. Algeria, like other countries in the world, is affected by this problem. In the present paper, Long Short-Term Memory (LSTM) deep neural Networks model was tested to estimate missing monthly precipitation data. The application was presented for the K'sob basin, Algeria. In the present paper, the optimal architecture of LSTM model was adjusted by trial-and-error-procedure. The LSTM model was compared with the most widely used classical methods including inverse distance weighting method (IDWM) and the coefficient of correlation weighting method (CCWM). Finally, it wa...
Rainfall is a natural climatic phenomenon and prediction of its value is crucial for weather forecas...
Multivariate time series with missing data is ubiquitous when the streaming data is collected by sen...
Prediction of meteorological variables such as precipitation, temperature, wind speed, and solar rad...
Meteorological events constantly affect human life, especially the occurrence of excessive precipita...
The availability of precipitation data plays important role for analysis of various systems required...
Precipitation is one of the driving forces in water cycles, and it is vital for understanding the wa...
Missing rainfall data have reduced the quality of hydrological data analysis because they are the es...
Estimating models are becoming increasingly crucial in highlighting the nonlinear connections of the...
Short-term Quantitative Precipitation Forecasting is important for flood forecasting, early flood wa...
Missing observational data pose an unavoidable problem in the hydrological field. Deep learning tech...
Climate forecasting plays an important role for human life in many areas such as water management, a...
Dealing with missing data in spatio-temporal time series constitutes important branch of general mis...
Real-world time series often present missing values due to sensor malfunctions or human errors. Trad...
Precipitation forecasting is one of the most important and crucial task that has gained the attentio...
Missing data is a very frequent problem in climatology, it influences on the quality of results that...
Rainfall is a natural climatic phenomenon and prediction of its value is crucial for weather forecas...
Multivariate time series with missing data is ubiquitous when the streaming data is collected by sen...
Prediction of meteorological variables such as precipitation, temperature, wind speed, and solar rad...
Meteorological events constantly affect human life, especially the occurrence of excessive precipita...
The availability of precipitation data plays important role for analysis of various systems required...
Precipitation is one of the driving forces in water cycles, and it is vital for understanding the wa...
Missing rainfall data have reduced the quality of hydrological data analysis because they are the es...
Estimating models are becoming increasingly crucial in highlighting the nonlinear connections of the...
Short-term Quantitative Precipitation Forecasting is important for flood forecasting, early flood wa...
Missing observational data pose an unavoidable problem in the hydrological field. Deep learning tech...
Climate forecasting plays an important role for human life in many areas such as water management, a...
Dealing with missing data in spatio-temporal time series constitutes important branch of general mis...
Real-world time series often present missing values due to sensor malfunctions or human errors. Trad...
Precipitation forecasting is one of the most important and crucial task that has gained the attentio...
Missing data is a very frequent problem in climatology, it influences on the quality of results that...
Rainfall is a natural climatic phenomenon and prediction of its value is crucial for weather forecas...
Multivariate time series with missing data is ubiquitous when the streaming data is collected by sen...
Prediction of meteorological variables such as precipitation, temperature, wind speed, and solar rad...