Author:
Casanova Joaquin,Heineck Garett,Huggins David
Abstract
Highlights
Long-term site-specific multiple-crop yield data is used in two modeling approaches.
Different sources of data, including soil properties, topography, weather, and multispectral data, are tested.
Linear modeling and Bayesian hierarchical modeling (BHM) are evaluated by examining predictions of relative yield.
BHM with spatio-temporal effects provides the best estimates, handles missing data, and provides uncertainty estimates in time and space.
Abstract. Growers in the inland Pacific Northwest face numerous challenges in managing cropping systems. Climate variability, soil degradation, and topography all lead to significant spatial and temporal variability in yield. Often, yield modeling approaches such as deep learning can be “black boxes” or suffer from parameter uncertainty and instability, as with process-based crop models. To explore an alternative, we examined nearly two decades of crop rotation data from the R.J. Cook Agronomy Farm, along with soil properties, topography, weather, and multispectral data. We then tested two modeling approaches to estimate yield: linear modeling (LM) and Bayesian hierarchical modeling (BHM). We found BHM with spatial and temporal random effects performed best in predicting relative yield, both using soil variables as predictors or remotely sensed data. Since the BHM approach handles missing data, offers the possibility of farmer knowledge to be incorporated into prior probabilities, and gives uncertainty, this methodology lends itself well to decision support tools and on-farm study design. Keywords: Bayesian, Long-term, Modeling, Remote sensing, Yield.
Publisher
American Society of Agricultural and Biological Engineers (ASABE)