The asymptotic predictability of global land-surface precipitation is estimated empirically at the seasonal time scale at lead times from zero to 12 months. Predictability is defined as the maximum achievable predictive skill for a given model assuming all the relevant predictors are included and that an infinitely long training sample is available for parameter estimation, and represents an approximate upper bound to the predictive skill of statistical, and possibly dynamical, seasonal forecasting approaches. To estimate predictability, a simple linear regression model is formulated based on the assumption that land surface precipitation variability can be divided into a component forced by low-frequency variability in external boundary co...
Seasonal prediction is based on changes in the probability of weather statistics due to changes in s...
This thesis examines the potentially achievable prediction skill of temperature and precipitation on...
The study presents a statistically based seasonal precipitation forecast model, which automatically...
The asymptotic predictability of global land surface precipitation is estimated empirically at the s...
Seasonal prediction is based on changes in the probability of weather statistics due to changes in s...
Climate-driven changes in precipitation amounts and their seasonal variability are expected in many ...
Climate-driven changes in precipitation amounts and their seasonal variability are expected in many ...
© 2021 Yawen ShaoFor managing the impacts of climate variability and change, climate outlooks on sub...
Skilful seasonal climate forecasts have potential to affect decision making in agriculture, health a...
Seasonal rainfall forecasts are in high demand for users such as irrigators and water managers in de...
This study examines skill of retrospective forecasts using the ECHAM4.5 atmospheric general circulat...
The skill with which a coupled ocean–atmosphere model is able to predict precipitation over a range ...
The Seasonal Diagnostics Consortium of the Applied Research Centers is engaging in a real-time activ...
This review paper presents an assessment of the current state of knowledge and capability in seasona...
Abstract Given observed initial conditions, how well do coupled atmosphere–ocean models predict prec...
Seasonal prediction is based on changes in the probability of weather statistics due to changes in s...
This thesis examines the potentially achievable prediction skill of temperature and precipitation on...
The study presents a statistically based seasonal precipitation forecast model, which automatically...
The asymptotic predictability of global land surface precipitation is estimated empirically at the s...
Seasonal prediction is based on changes in the probability of weather statistics due to changes in s...
Climate-driven changes in precipitation amounts and their seasonal variability are expected in many ...
Climate-driven changes in precipitation amounts and their seasonal variability are expected in many ...
© 2021 Yawen ShaoFor managing the impacts of climate variability and change, climate outlooks on sub...
Skilful seasonal climate forecasts have potential to affect decision making in agriculture, health a...
Seasonal rainfall forecasts are in high demand for users such as irrigators and water managers in de...
This study examines skill of retrospective forecasts using the ECHAM4.5 atmospheric general circulat...
The skill with which a coupled ocean–atmosphere model is able to predict precipitation over a range ...
The Seasonal Diagnostics Consortium of the Applied Research Centers is engaging in a real-time activ...
This review paper presents an assessment of the current state of knowledge and capability in seasona...
Abstract Given observed initial conditions, how well do coupled atmosphere–ocean models predict prec...
Seasonal prediction is based on changes in the probability of weather statistics due to changes in s...
This thesis examines the potentially achievable prediction skill of temperature and precipitation on...
The study presents a statistically based seasonal precipitation forecast model, which automatically...