The Global Climate Model (GCM) run at a coarse spatial resolution cannot be directly used for climate impact studies. Downscaling is required to extract the sub-grid and local scale information. This paper investigates if the artificial neural network (ANN) is better than the widely-used regression-based statistical downscaling model (SDSM) for downscaling climate for a site in Colombo, Sri Lanka. Based on seasonal and annual model biases and the root mean squared error (RMSE), the ANN performed better than the SDSM for precipitation. This paper proposes a novel methodology for improving climate predictions by combining SDSM with neural networks. This method will allow a user to apply SDSM with a neural network model for higher skills in do...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
The idea of statistical downscaling is to translate the information we get from the Global Climate M...
Choosing downscaling techniques is crucial in obtaining accurate and reliable climate change predict...
The Global Climate Model (GCM) run at a coarse spatial resolution cannot be directly used for climat...
Global climate change is a major area of concern to public and climate researchers. It impacts flood...
Study of Climate change effect on water resources is very important for its effective management. Pr...
The increase in global surface temperature in response to the changing composition of the atmosphere...
This paper presents an application of temporal neural networks for downscaling global climate models...
Abstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability o...
Downscaling improves considerably the results of General Circulation Models (GCMs). However, little ...
In recent years, climate change has demonstrated the volatility of unexpected events such as typhoon...
Assessment of climate change in future periods is considered necessary, especially with regard to p...
This research presented a holistic approach for downscaling of precipitation in both space and time ...
A coupled K-nearest neighbour (KNN) and Bayesian neural network (BNN) model was developed for downsc...
This research is focused on the development of statistical downscaling model using neural network te...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
The idea of statistical downscaling is to translate the information we get from the Global Climate M...
Choosing downscaling techniques is crucial in obtaining accurate and reliable climate change predict...
The Global Climate Model (GCM) run at a coarse spatial resolution cannot be directly used for climat...
Global climate change is a major area of concern to public and climate researchers. It impacts flood...
Study of Climate change effect on water resources is very important for its effective management. Pr...
The increase in global surface temperature in response to the changing composition of the atmosphere...
This paper presents an application of temporal neural networks for downscaling global climate models...
Abstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability o...
Downscaling improves considerably the results of General Circulation Models (GCMs). However, little ...
In recent years, climate change has demonstrated the volatility of unexpected events such as typhoon...
Assessment of climate change in future periods is considered necessary, especially with regard to p...
This research presented a holistic approach for downscaling of precipitation in both space and time ...
A coupled K-nearest neighbour (KNN) and Bayesian neural network (BNN) model was developed for downsc...
This research is focused on the development of statistical downscaling model using neural network te...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
The idea of statistical downscaling is to translate the information we get from the Global Climate M...
Choosing downscaling techniques is crucial in obtaining accurate and reliable climate change predict...