Machine learning (ML) is the most advanced field of predictive modelling and incorporating it into process-based crop modelling is a highly promising avenue for accurate predictions of plant growth, development and yield. Here, we embed ML algorithms into a process-based crop model. ML is used within GLAM-Parti for daily predictions of radiation use efficiency, the rate of change of harvest index and the days to anthesis and maturity. The GLAM-Parti-ML framework exhibited high skill for wheat growth and development in a wide range of temperature, solar radiation and atmospheric humidity conditions, including various levels of heat stress. The model exhibited less than 20% error in simulating the above-ground biomass, grain yield and the day...
An expanding area of study is agriculture. Agriculture, in particular, depends heavily on soil and e...
International audienceA prerequisite for application of crop models is a careful parameterization ba...
The global population growth has led to a considerable rise in demand for wheat. Today, the amount o...
Provisioning a sufficient stable source of food requires sound knowledge about current and upcoming ...
© 2019 Accurately assessing the impacts of extreme climate events (ECEs)on crop yield can help devel...
Many studies have applied machine learning to crop yield prediction with a focus on specific case st...
Pervious assessments of crop yield response to climate change are mainly aided with either process-b...
The increasing availability of complex, geo-referenced on-farm data demands analytical frameworks th...
Forecasting crop yields is becoming increasingly important under the current context in which food s...
Forecasting crop yields is becoming increasingly important under the current context in which food s...
Wheat is a cool season crop and its optimal daytime growing temperature during reproductive developm...
Increasing the accuracy of crop productivity estimates is a key element in planning adaptation strat...
Crop yield forecasting depends on many interactive factors, including crop genotype, weather, soil, ...
Machine learning is an important decision support tool for crop yield prediction, including supporti...
Crop water productivity modeling is an increasingly popular rapid decision making tool to optimize w...
An expanding area of study is agriculture. Agriculture, in particular, depends heavily on soil and e...
International audienceA prerequisite for application of crop models is a careful parameterization ba...
The global population growth has led to a considerable rise in demand for wheat. Today, the amount o...
Provisioning a sufficient stable source of food requires sound knowledge about current and upcoming ...
© 2019 Accurately assessing the impacts of extreme climate events (ECEs)on crop yield can help devel...
Many studies have applied machine learning to crop yield prediction with a focus on specific case st...
Pervious assessments of crop yield response to climate change are mainly aided with either process-b...
The increasing availability of complex, geo-referenced on-farm data demands analytical frameworks th...
Forecasting crop yields is becoming increasingly important under the current context in which food s...
Forecasting crop yields is becoming increasingly important under the current context in which food s...
Wheat is a cool season crop and its optimal daytime growing temperature during reproductive developm...
Increasing the accuracy of crop productivity estimates is a key element in planning adaptation strat...
Crop yield forecasting depends on many interactive factors, including crop genotype, weather, soil, ...
Machine learning is an important decision support tool for crop yield prediction, including supporti...
Crop water productivity modeling is an increasingly popular rapid decision making tool to optimize w...
An expanding area of study is agriculture. Agriculture, in particular, depends heavily on soil and e...
International audienceA prerequisite for application of crop models is a careful parameterization ba...
The global population growth has led to a considerable rise in demand for wheat. Today, the amount o...