Early crop yield forecasts provide valuable information for growers and industry to base decisions on. This work considers early forecasting of macadamia nut yield at the individual orchard block level with input variables derived from spatio-temporal datasets including remote sensing, weather and elevation. Yield data from 2012–2019, for 101 blocks belonging to 10 orchards, was obtained. We forecast yield on each test year from 2014–2019 using models trained on data from years prior to the test year. Forecasts are generated in January, for the coming harvest in March–September. A linear model using ridge regularized regression produced consistently good predictions compared with other machine learning algorithms including lasso, support ve...
California's almond growers face challenges with nitrogen management as new legislatively mandated n...
Methods using remote sensing associated with artificial intelligence to forecast corn yield at the m...
Early detection of within-field yield variability for high-value commodity crops, such as cotton (Go...
To facilitate marketing and export, the Australian macadamia industry requires accurate crop forecas...
Three types of forecasts of the total Australian production of macadamia nuts (t nut-in-shell) have ...
Accurate estimates of tree crop orchard age and historical crop area are important to develop yield ...
Many broadacre farmers have a time series of crop yield monitor data for their paddocks which are of...
Agricultural productivity is subject to various stressors, including abiotic and biotic threats, man...
Annual forecasts for the Australian macadamia crop have been issued since 2001, with varying (and no...
This study presents a comprehensive evaluation of seasonal, locational, and varietal variations in c...
The overall goal of this study is to define an intelligent system for predicting citrus fruit yield ...
We present a novel forecasting method for generating agricultural crop yield forecasts at the season...
Modern agriculture is increasingly adopting data-driven techniques to enhance productivity and susta...
Timely yield prediction is crucial for the agri-food supply chain as a whole. However, different sta...
Many studies have applied machine learning to crop yield prediction with a focus on specific case st...
California's almond growers face challenges with nitrogen management as new legislatively mandated n...
Methods using remote sensing associated with artificial intelligence to forecast corn yield at the m...
Early detection of within-field yield variability for high-value commodity crops, such as cotton (Go...
To facilitate marketing and export, the Australian macadamia industry requires accurate crop forecas...
Three types of forecasts of the total Australian production of macadamia nuts (t nut-in-shell) have ...
Accurate estimates of tree crop orchard age and historical crop area are important to develop yield ...
Many broadacre farmers have a time series of crop yield monitor data for their paddocks which are of...
Agricultural productivity is subject to various stressors, including abiotic and biotic threats, man...
Annual forecasts for the Australian macadamia crop have been issued since 2001, with varying (and no...
This study presents a comprehensive evaluation of seasonal, locational, and varietal variations in c...
The overall goal of this study is to define an intelligent system for predicting citrus fruit yield ...
We present a novel forecasting method for generating agricultural crop yield forecasts at the season...
Modern agriculture is increasingly adopting data-driven techniques to enhance productivity and susta...
Timely yield prediction is crucial for the agri-food supply chain as a whole. However, different sta...
Many studies have applied machine learning to crop yield prediction with a focus on specific case st...
California's almond growers face challenges with nitrogen management as new legislatively mandated n...
Methods using remote sensing associated with artificial intelligence to forecast corn yield at the m...
Early detection of within-field yield variability for high-value commodity crops, such as cotton (Go...