Estimation of Sunflower Seed Yield Using Partial Least Squares Regression and Artificial Neural Network Models

被引:0
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作者
ZENG Wenzhi [1 ]
XU Chi [1 ]
Gang ZHAO [2 ]
WU Jingwei [1 ]
HUANG Jiesheng [1 ]
机构
[1] State Key Laboratory of Water Resources and Hydropower Engineering Science
[2] Crop Science Group,Institute of Crop Science and Resource Conservation,University of
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S565.5 [向日葵];
学科分类号
摘要
Statistical models can efficiently establish the relationships between crop growth and environmental conditions while explicitly quantifying uncertainties. This study aimed to test the efficiency of statistical models established using partial least squares regression(PLSR) and artificial neural network(ANN) in predicting seed yields of sunflower(Helianthus annuus). Two-year field trial data on sunflower growth under different salinity levels and nitrogen(N) application rates in the Yichang Experimental Station in Hetao Irrigation District, Inner Mongolia, China, were used to calibrate and validate the statistical models. The variable importance in projection score was calculated in order to select the sensitive crop indices for seed yield prediction. We found that when the most sensitive indices were used as inputs for seed yield estimation, the PLSR could attain a comparable accuracy(root mean square error(RMSE) = 0.93 t ha-1, coefficient of determination(R2) = 0.69) to that when using all measured indices(RMSE = 0.81 t ha-1,R2= 0.77). The ANN model outperformed the PLSR for yield prediction with different combinations of inputs of both microplots and field data. The results indicated that sunflower seed yield could be reasonably estimated by using a small number of crop characteristic indices under complex environmental conditions and management options(e.g., saline soils and N application). Since leaf area index and plant height were found to be the most sensitive crop indices for sunflower seed yield prediction, remotely sensed data and the ANN model may be joined for regional crop yield simulation.
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页码:764 / 774
页数:11
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