Title of article :
Efficient stabilization of crop yield prediction in the Canadian Prairies
Author/Authors :
Luke Bornn، نويسنده , , James V. Zidek، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
10
From page :
223
To page :
232
Abstract :
This paper describes how spatial dependence can be incorporated into statistical models for crop yield along with the dangers of ignoring it. In particular, approaches that ignore this dependence suffer in their ability to capture (and predict) the underlying phenomena. By judiciously selecting biophysically based explanatory variables and using spatially-determined prior probability distributions, a Bayesian model for crop yield is created that not only allows for increased modelling flexibility but also for improved prediction over existing least-squares methods. The model is focused on providing efficient predictions which stabilize the effects of noisy data. Prior distributions are developed to accommodate the spatial non-stationarity arising from distinct between-region differences in agricultural policy and practice. In addition, a range of possible dimension–reduction schemes and basis expansions are examined in the pursuit of improved prediction. As a result, the model developed has improved prediction performance relative to existing models, and allows for straightforward interpretation of climatic effects on the modelʹs output.
Keywords :
Crop yield prediction , Bayesian , Canadian Prairies , Smoothing , spatial correlation , Crop water stress index
Journal title :
Agricultural and Forest Meteorology
Serial Year :
2012
Journal title :
Agricultural and Forest Meteorology
Record number :
960317
Link To Document :
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