This study evaluates statistical downscaling techniques using different metrics and compares climate change signals and extreme precipitation and temperature changes under future climate change scenarios in the Bosque watershed, North-Central Texas. The study utilizes observed gridded Daymet data to assess the effectiveness of statistical downscaling techniques. It involves comparing the mean, the 90th percentile, 10th percentile, wet day frequency, and Cumulative Distribution Function (CDF) of climate model simulations before and after downscaling and the Daymet data during the historical period (1981–2005). Furthermore, the study analyzes changes in climate change signals, extreme precipitation, and temperature values under both near-futu...
AbstractIn this work we perform a statistical downscaling by applying a CDF transformation function ...
Statistical downscaling is a method in which small-scale or local-scale weather data can be generate...
Large-scale general circulation models give us an idea of how the climate may possibly develop over ...
Anthropogenic-driven climate change would affect the global ecosystem and is becoming a world-wide c...
Regional climate impact assessments require high-resolution projections to resolve local factors tha...
Global Climate Models (GCMs) are the typical sources of future climate data required for impact asse...
The idea of statistical downscaling is to translate the information we get from the Global Climate M...
Downscaling of climate model data is essential to local and regional impact analysis. We compare two...
In this work we perform a statistical downscaling by applying a CDF transformation function to local...
A warmer climate may affect the frequency and severity of weather extremes, such as heavy rainfalls,...
Projections of historical and future changes in climate extremes are examined by applying the bias-...
Projections of historical and future changes in climate extremes are examined by applying the bias-c...
Information on extreme precipitation for future climate is needed to assess the changes in the frequ...
There are often large biases associated with climate predictions and these are problematic when it c...
The Statistical DownScaling Model (SDSM) is a freely available tool that produces high resolution cl...
AbstractIn this work we perform a statistical downscaling by applying a CDF transformation function ...
Statistical downscaling is a method in which small-scale or local-scale weather data can be generate...
Large-scale general circulation models give us an idea of how the climate may possibly develop over ...
Anthropogenic-driven climate change would affect the global ecosystem and is becoming a world-wide c...
Regional climate impact assessments require high-resolution projections to resolve local factors tha...
Global Climate Models (GCMs) are the typical sources of future climate data required for impact asse...
The idea of statistical downscaling is to translate the information we get from the Global Climate M...
Downscaling of climate model data is essential to local and regional impact analysis. We compare two...
In this work we perform a statistical downscaling by applying a CDF transformation function to local...
A warmer climate may affect the frequency and severity of weather extremes, such as heavy rainfalls,...
Projections of historical and future changes in climate extremes are examined by applying the bias-...
Projections of historical and future changes in climate extremes are examined by applying the bias-c...
Information on extreme precipitation for future climate is needed to assess the changes in the frequ...
There are often large biases associated with climate predictions and these are problematic when it c...
The Statistical DownScaling Model (SDSM) is a freely available tool that produces high resolution cl...
AbstractIn this work we perform a statistical downscaling by applying a CDF transformation function ...
Statistical downscaling is a method in which small-scale or local-scale weather data can be generate...
Large-scale general circulation models give us an idea of how the climate may possibly develop over ...