In general, meteorological parameters such as temperature, rain and global radiation are important for agricultural systems. Anticipating on future conditions is most often needed in these systems. Weather forecasts then become of substantial importance. As weather forecasts are subject to uncertainties, there is a need in minimising the uncertainties. In this paper, a framework is presented in which local weather forecasts are updated using local measurements. Kalman filtering is used for this purpose as assimilation technique. This method is compared and combined with diurnal bias correction. It is shown that the standard deviation of the forecast error can be reduced up to 6 h ahead for temperature, up to 31 h ahead for wind speed, and u...
A local three-dimensional variational data assimilation (DA) system was implemented operationally in...
This paper investigates the use of non-linear functions in classical Kalman filter algorithms on th...
Techniques for planning adaptive observations that are based on tangent-linear models and their adjo...
In general, meteorological parameters such as temperature, rain and global radiation are important f...
For controlling agricultural systems, weather forecasts can be of substantial importance. Studies ha...
Weather forecasts are typically produced once or twice each day. Each run usually covers several for...
In dynamic modeling of the greenhouse climate, prediction errors are a significant issue due to unce...
this article is to present a rigorous, yet practical, method for estimating forecast bias in an atmo...
In this work, the use of adaptive filters for reducing forecast errors produced by a Regional Climat...
Marine operations depend on the ability to forecast suddenly appearing storms and failures often cau...
Forecasts from numerical weather prediction models suffer from systematic and nonsystematic errors, ...
In closed agricultural systems the weather acts both as a disturbance and as a resource. By using we...
Data assimilation in Numerical Weather Prediction (NWP) optimally blends observations with atmospher...
Two new postprocessing methods are proposed to reduce numerical weather prediction’s systematic and ...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
A local three-dimensional variational data assimilation (DA) system was implemented operationally in...
This paper investigates the use of non-linear functions in classical Kalman filter algorithms on th...
Techniques for planning adaptive observations that are based on tangent-linear models and their adjo...
In general, meteorological parameters such as temperature, rain and global radiation are important f...
For controlling agricultural systems, weather forecasts can be of substantial importance. Studies ha...
Weather forecasts are typically produced once or twice each day. Each run usually covers several for...
In dynamic modeling of the greenhouse climate, prediction errors are a significant issue due to unce...
this article is to present a rigorous, yet practical, method for estimating forecast bias in an atmo...
In this work, the use of adaptive filters for reducing forecast errors produced by a Regional Climat...
Marine operations depend on the ability to forecast suddenly appearing storms and failures often cau...
Forecasts from numerical weather prediction models suffer from systematic and nonsystematic errors, ...
In closed agricultural systems the weather acts both as a disturbance and as a resource. By using we...
Data assimilation in Numerical Weather Prediction (NWP) optimally blends observations with atmospher...
Two new postprocessing methods are proposed to reduce numerical weather prediction’s systematic and ...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
A local three-dimensional variational data assimilation (DA) system was implemented operationally in...
This paper investigates the use of non-linear functions in classical Kalman filter algorithms on th...
Techniques for planning adaptive observations that are based on tangent-linear models and their adjo...