Leaf wetness is an important input parameter into disease prediction models. The use of machine learning algorithms for the classification of leaf wetness measurements from 30 meteorological stations in North Western Europe during the period of January 2014 to October 2018 was assessed in this study. The accuracy of the empirical models utilised within in this study was enhanced by increasing the relative humidity threshold from 90% to 92%. Increasing the relative humidity threshold led to an average increase in the classification accuracy of 1.12%. The use of machine learning classification algorithms consistently provided more accurate results for the prediction of leaf wetness when compared to the empirical models that were studied with ...
Models have been developed to estimate leaf wetness duration (LWD) using measured or estimated weath...
The conceptual frame for the discussion is introduced. Then the phenomenon called leaf wetness is di...
The sap flow of plants directly indicates their water requirements and provides farmers with a good ...
Leaf wetness duration (LWD) is a key driving variable for peat and disease control in greenhouse man...
Leaf wetness often emerges as the result of the exchange of atmospheric water-soluble gases between ...
Leaf wetness (LW) is one of the most important input variables of disease simulation models 3 becaus...
Wetness on crop leaves has particular epidemiological significance because many fungal diseases affe...
The growing demand for sustainable development brings a series of information technologies to help a...
International audienceThe model PROCULTURE has been developed by the Université Catholique de Louvai...
Leaf wetness duration (LWD) models based on empirical approaches offer practical advantages over phy...
A description and analysis is given of a wetness duration experiment, carried out in a potato field ...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...
A novel data analysis method for the evaluation of plant disease risk that utilizes weather informat...
Agricultural production is improving as a result of recent technological and scientific advances. In...
We compared Support Vector Machine (SVM) and Random Forest (RF) machine learning approaches with the...
Models have been developed to estimate leaf wetness duration (LWD) using measured or estimated weath...
The conceptual frame for the discussion is introduced. Then the phenomenon called leaf wetness is di...
The sap flow of plants directly indicates their water requirements and provides farmers with a good ...
Leaf wetness duration (LWD) is a key driving variable for peat and disease control in greenhouse man...
Leaf wetness often emerges as the result of the exchange of atmospheric water-soluble gases between ...
Leaf wetness (LW) is one of the most important input variables of disease simulation models 3 becaus...
Wetness on crop leaves has particular epidemiological significance because many fungal diseases affe...
The growing demand for sustainable development brings a series of information technologies to help a...
International audienceThe model PROCULTURE has been developed by the Université Catholique de Louvai...
Leaf wetness duration (LWD) models based on empirical approaches offer practical advantages over phy...
A description and analysis is given of a wetness duration experiment, carried out in a potato field ...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...
A novel data analysis method for the evaluation of plant disease risk that utilizes weather informat...
Agricultural production is improving as a result of recent technological and scientific advances. In...
We compared Support Vector Machine (SVM) and Random Forest (RF) machine learning approaches with the...
Models have been developed to estimate leaf wetness duration (LWD) using measured or estimated weath...
The conceptual frame for the discussion is introduced. Then the phenomenon called leaf wetness is di...
The sap flow of plants directly indicates their water requirements and provides farmers with a good ...