During emergency situations, short-term rainfall forecasting is crucial for human life-saving and economic damage mitigation. However, due to the high interconnection among the meteorological variables, the rainfall evolution mechanism is challenging to predict. Since machine-learning techniques do not require any previous physical assumption, this study suggests a rainfall nowcasting model based on Artificial Neural Networks. The proposed model provides punctual rainfall predictions at three different lead times: 30 min, 1 h, and 2 h. The analysis is based on 10 years of records from meteorological stations over the Campania region, southern Italy. Several feed-forward neural network models were trained with 350 spatial rainfall events, wi...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
Rainfall prediction plays a crucial role in raising awareness about the potential dangers associated...
Artificial neural networks (ANNs) are being used increasingly to forecast rainfall. In this study, s...
Rainfall nowcasting supports emergency decision-making in hydrological, agricultural, and economical...
Nowcasting (very short-term forecasting) in meteorology is a very important topic for agriculture, h...
The term nowcasting reflects the need of timely and accurate predictions of risky situations related...
Accurate short-term forecasts, also known as nowcasts, of heavy precipitation are desirable for crea...
In the last decades, the great availability of data and computing power drove the development of pow...
Rainfall is one of the most important events in daily life of human beings. During several decades, ...
Abstract--Rainfall forecasting ia important for many catchment management applications, in particula...
Abstract. This paper presents a new approach using an Arti-ficial Neural Network technique to improv...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Estimating models are becoming increasingly crucial in highlighting the nonlinear connections of the...
Abstract: Rainfall is very important parameter in hydrological model. Many techniques and models hav...
The aim of this paper is to investigate if rainfall prediction (nowcasting) can successively be made...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
Rainfall prediction plays a crucial role in raising awareness about the potential dangers associated...
Artificial neural networks (ANNs) are being used increasingly to forecast rainfall. In this study, s...
Rainfall nowcasting supports emergency decision-making in hydrological, agricultural, and economical...
Nowcasting (very short-term forecasting) in meteorology is a very important topic for agriculture, h...
The term nowcasting reflects the need of timely and accurate predictions of risky situations related...
Accurate short-term forecasts, also known as nowcasts, of heavy precipitation are desirable for crea...
In the last decades, the great availability of data and computing power drove the development of pow...
Rainfall is one of the most important events in daily life of human beings. During several decades, ...
Abstract--Rainfall forecasting ia important for many catchment management applications, in particula...
Abstract. This paper presents a new approach using an Arti-ficial Neural Network technique to improv...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Estimating models are becoming increasingly crucial in highlighting the nonlinear connections of the...
Abstract: Rainfall is very important parameter in hydrological model. Many techniques and models hav...
The aim of this paper is to investigate if rainfall prediction (nowcasting) can successively be made...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
Rainfall prediction plays a crucial role in raising awareness about the potential dangers associated...
Artificial neural networks (ANNs) are being used increasingly to forecast rainfall. In this study, s...