DocumentCode
9412
Title
Critical Nitrogen Curve and Remote Detection of Nitrogen Nutrition Index for Corn in the Northwestern Plain of Shandong Province, China
Author
Pengfei Chen ; Jihua Wang ; Wenjiang Huang ; Tremblay, Nicolas ; Yangzhu Ou ; Qian Zhang
Author_Institution
State Key Lab. of Resources & Environ. Inf. Syst., Inst. of Geogr. Sci. & Natural Resources Res., Beijing, China
Volume
6
Issue
2
fYear
2013
fDate
Apr-13
Firstpage
682
Lastpage
689
Abstract
The nitrogen nutrition index (NNI) is calculated from the measured N concentration and the critical nitrogen (N) curve. It can be used to determine the N required by a crop and is helpful for optimizing N application in the field. Our objectives were to validate the existing corn critical N curve for the northwestern plain of Shandong Province and to design a more accurate remote detection method for the NNI. For this purpose, field measurements were conducted weekly to acquire the biomass and N concentrations during the corn growing season of 2011. Additionally, nearly 60 corn canopy spectra were collected during field campaigns. First, limiting and non-limiting N points were selected from sampled data, and they were used to validate the existing critical N curve. Second, an NNI estimation model based on a Principal Component Analysis method and Back Propagation Artificial Neural Network (PCA-BP-ANN) model was established. The collected canopy spectra and corresponding NNI were used to compare the performances of the above mentioned method and other for NNI estimation. The results showed that the N curve proposed in the literature is suitable for the study region. Among the three remote detection methods, PCA-BP-ANN provided the best results with highest R value and lowest root mean square error value.
Keywords
backpropagation; crops; geochemistry; mean square error methods; neural nets; nitrogen; principal component analysis; remote sensing; AD 2011; Back Propagation Artificial Neural Network; China; N; N application; N concentrations; N curve; NNI; PCA-BP-ANN model; Shandong Province; biomass; collected canopy spectra; corn growing season; critical nitrogen curve; field campaigns; field measurements; nitrogen nutrition index; northwestern plain; principal component analysis method; remote detection methods; root mean square error value; Agriculture; Artificial neural networks; Biomass; Indexes; Mathematical model; Nitrogen; Remote sensing; Critical nitrogen curve; NNI; remote sensing;
fLanguage
English
Journal_Title
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher
ieee
ISSN
1939-1404
Type
jour
DOI
10.1109/JSTARS.2012.2236302
Filename
6410363
Link To Document