In most landscapes, accurate crop yield forecasting depends on a quantitative understanding of the relation between past weather, management and crop yield variability. We evaluated and improved the regression-based crop yield forecasting methodology currently employed in the MARS-Crop Yield Forecasting System (M-CYFS) for maize in Hungary. We quantified the effect of: 1) different statistical trends; 2) different crop growth simulation model outputs providing weekly predictors; 3) yield prediction lead times; and 4) spatial aggregation, on the forecast accuracy as evaluated against statistical yield from 1993-2012. The LOESS (locally weighted scatterplot smoothing) trend provided the lowest root mean square error (RMSE) in describing the y...
Impacts of climate variability and climate change on regional crop yields are commonly assessed usin...
Hungarian cereal production is situated in the zone of Europe which is most vulnerable to the effect...
The impact of adverse weather conditions (AWCs) on crop production is random in both time and space ...
The MARS-Crop Yield Forecasting System (M-CYFS) is used since 1993 to forecast the yields of all maj...
Pervious assessments of crop yield response to climate change are mainly aided with either process-b...
Today already climate variability has an impact on crop yield. Under future climate change, not only...
Timely and reliable maize yield prediction is essential for the agricultural supply chain and food s...
Yield forecasts are generally based on a combination of expert knowledge, survey data, statistical a...
We investigate in this study (i) a redefinition of crop variety zonations at a spatial scale of 10x1...
Abstract: We investigate in this study (i) a redefinition of crop variety zonations at a spatial sca...
Seasonal crop yield forecasting represents an important source of information to maintain market sta...
In the present study an exploratory analysis of the relationship between regional fAPAR time-series ...
We tested the usefulness of seasonal climate predictions for impacts prediction in eastern Africa. I...
Many studies have applied machine learning to crop yield prediction with a focus on specific case st...
peer reviewedWe investigate in this study (i) a redefinition of crop variety zonations at a spatial ...
Impacts of climate variability and climate change on regional crop yields are commonly assessed usin...
Hungarian cereal production is situated in the zone of Europe which is most vulnerable to the effect...
The impact of adverse weather conditions (AWCs) on crop production is random in both time and space ...
The MARS-Crop Yield Forecasting System (M-CYFS) is used since 1993 to forecast the yields of all maj...
Pervious assessments of crop yield response to climate change are mainly aided with either process-b...
Today already climate variability has an impact on crop yield. Under future climate change, not only...
Timely and reliable maize yield prediction is essential for the agricultural supply chain and food s...
Yield forecasts are generally based on a combination of expert knowledge, survey data, statistical a...
We investigate in this study (i) a redefinition of crop variety zonations at a spatial scale of 10x1...
Abstract: We investigate in this study (i) a redefinition of crop variety zonations at a spatial sca...
Seasonal crop yield forecasting represents an important source of information to maintain market sta...
In the present study an exploratory analysis of the relationship between regional fAPAR time-series ...
We tested the usefulness of seasonal climate predictions for impacts prediction in eastern Africa. I...
Many studies have applied machine learning to crop yield prediction with a focus on specific case st...
peer reviewedWe investigate in this study (i) a redefinition of crop variety zonations at a spatial ...
Impacts of climate variability and climate change on regional crop yields are commonly assessed usin...
Hungarian cereal production is situated in the zone of Europe which is most vulnerable to the effect...
The impact of adverse weather conditions (AWCs) on crop production is random in both time and space ...