The need for a reliable rainfall model to produce accurate simulation of rainfall series is imperative in water resources planning. Simulated series are used when there are shortages of observed series at location of interest. This study focuses on modelling of rainfall series with a range of probability distributions representing rainfall intensity of the Space-Time Neyman Scott (ST-NS) model. Theoretically, the ST-NS model is constructed by having parameters to represent the physical attributes of rainfall process. Therefore having appropriate distributions to describe the parameters are critical so that credible rainfall series could be generated. In this study, the performance of four probability distributions namely Mixed-Exponential, ...
Prior knowledge of rainfall is essential in the planning and lessening of the risks associated with ...
Sub-daily timescale data such as hourly data are needed for modeling urban systems. However such ser...
Flash floods are known as one of the common natural disasters that cost over billions of Ringgit Mal...
The need for a reliable rainfall model to produce accurate simulation of rainfall series is imperati...
The need for a reliable rainfall model to produce accurate simulation of rainfall series is imperat...
Weather generator is a numerical tool that uses existing meteorological records to generate series o...
Weather generator is a numerical tool that uses existing meteorological records to generate series o...
Weather generator is a numerical tool that uses existing meteorological records to generate series o...
A stochastic rainfall model is presented for the generation of hourly rainfall data in an urban area...
The long term rainfall characteristics of an area are best understood if the statistical distributio...
The long term rainfall characteristics of an area are best understood if the statistical distributio...
In this study, several types of probability distributions were used to fit the daily torrential rain...
In this study, several types of probability distributions were used to fit the daily torrential rain...
Adequate and accurate rainfall information is vital in hydrological forecasting, however historical ...
Rainfall data at fine resolution and knowledge of its characteristics plays a major role in the effi...
Prior knowledge of rainfall is essential in the planning and lessening of the risks associated with ...
Sub-daily timescale data such as hourly data are needed for modeling urban systems. However such ser...
Flash floods are known as one of the common natural disasters that cost over billions of Ringgit Mal...
The need for a reliable rainfall model to produce accurate simulation of rainfall series is imperati...
The need for a reliable rainfall model to produce accurate simulation of rainfall series is imperat...
Weather generator is a numerical tool that uses existing meteorological records to generate series o...
Weather generator is a numerical tool that uses existing meteorological records to generate series o...
Weather generator is a numerical tool that uses existing meteorological records to generate series o...
A stochastic rainfall model is presented for the generation of hourly rainfall data in an urban area...
The long term rainfall characteristics of an area are best understood if the statistical distributio...
The long term rainfall characteristics of an area are best understood if the statistical distributio...
In this study, several types of probability distributions were used to fit the daily torrential rain...
In this study, several types of probability distributions were used to fit the daily torrential rain...
Adequate and accurate rainfall information is vital in hydrological forecasting, however historical ...
Rainfall data at fine resolution and knowledge of its characteristics plays a major role in the effi...
Prior knowledge of rainfall is essential in the planning and lessening of the risks associated with ...
Sub-daily timescale data such as hourly data are needed for modeling urban systems. However such ser...
Flash floods are known as one of the common natural disasters that cost over billions of Ringgit Mal...