Quantitative relationships of leaf nitrogen status to canopy spectral reflectance in rice
Yan Zhu A , Dongqin Zhou A , Xia Yao A , Yongchao Tian A and Weixing Cao A BA Hi-Tech Key Laboratory of Information Agriculture of Jiangsu Province, Key Laboratory of Crop Growth Regulation of Ministry of Agriculture, Nanjing Agricultural University, Nanjing,
Jiangsu 210095, P. R. China.
B Corresponding author. Email: caow@njau.edu.cn
Australian Journal of Agricultural Research 58(11) 1077-1085 https://doi.org/10.1071/AR06413
Submitted: 21 December 2006 Accepted: 3 September 2007 Published: 26 November 2007
Abstract
Non-destructive and quick methods for assessing leaf nitrogen (N) status are helpful for precision N management in field crops. The present study was conducted to determine the quantitative relationships of leaf N concentration on a leaf dry weight basis (LNC) and leaf N accumulation per unit soil area (LNA) to ground-based canopy spectral reflectance in rice (Oryza sativa L.). Time-course measurements were taken on canopy spectral reflectance, LNC, and leaf dry weights, with 4 field experiments under different N application rates and rice cultivars across 4 growing seasons. All possible ratio vegetation indices (RVI), difference vegetation indices (DVI), and normalised difference vegetation indices (NDVI) of key wavebands from the MSR16 radiometer were calculated. The results showed that LNC, LNA, and canopy reflectance spectra all markedly varied with N rates, with consistent change patterns among different rice cultivars and experiment years. There were highly significant linear correlations between LNC and canopy reflectance in the visible region from 560 to 710 nm (|r| > 0.85), between LNA and canopy reflectance from 760 to 1100 nm (|r| > 0.79), and from 460 to 710 nm wavelengths (|r| > 0.70). Among all possible RVI, DVI, and NDVI of key wavebands from the MSR16 radiometer, NDVI of 1220 and 710 nm was most highly correlated to LNC, and RVI of 950 and 660 nm and RVI of 950 and 680 nm were the best spectral indices for quantitative monitoring of LNA in rice. The average relative root mean square errors (RRMSE) between the predicted LNC and LNA and the observed values with independent data were no more than 11% and 25%, respectively. These results indicated that the canopy spectral reflectance can be potentially used for non-destructive and real-time monitoring of leaf N status in rice.
Additional keywords: leaf nitrogen accumulation, leaf nitrogen concentration, nitrogen monitoring, Oryza sativa L., remote sensing, spectral index.
Acknowledgments
We acknowledge the financial support of the National Natural Science Foundation of China (30571092), State Hi-tech R&D Plan of China (2006AA10A303, 2006AA10Z202), Natural Science Foundation (BK2005212), and Hi-tech Research Plan (BG2006340) of Jiangsu Province for this research.
Blackmer TM,
Schepers JS,
Varvel GE, Shea EAW
(1996) Nitrogen deficiency detection using reflected shortwave radiation from irrigated corn canopies. Agronomy Journal 88, 1–5.
Confalonieri R,
Mariani L, Bocchi S
(2005) Analysis and modelling of water and near water temperatures in flooded rice (Oryza sativa L.). Ecological Modelling 183, 269–280.
| Crossref | GoogleScholarGoogle Scholar |
Curran PJ,
Dungan JL, Peterson DL
(2001) Estimating the foliar biochemical concentration of leaves with reflectance spectrometry: testing the Kokaly and Clark methodologies. Remote Sensing of Environment 76, 349–359.
| Crossref | GoogleScholarGoogle Scholar |
Feng L,
Fang H,
Zhou WJ,
Wang M, He Y
(2006) Nitrogen stress measurement of canola based on multi-spectral charged coupled device imaging sensor. Spectroscopy and Spectral Analysis 26, 1749–1752 [in Chinese with English summary].
| PubMed |
Huete AR,
Jackson RD, Post DF
(1985) Spectral response of a plant canopy with different soil backgrounds. Remote Sensing of Environment 17, 37–53.
| Crossref | GoogleScholarGoogle Scholar |
Inoue Y,
Moran MS, Horie T
(1998) Analysis of spectral measurements in paddy field for predicting rice growth and yield based on simple crop simulation model. Plant Production Science 1, 269–279.
Jamieson PD,
Porter JR, Wilson DR
(1991) A test of the computer simulation model ARC-WHEAT1 on wheat crops grown in New Zealand. Field Crops Research 27, 337–350.
| Crossref | GoogleScholarGoogle Scholar |
Janssen BH
(1998) Efficient use of nutrients: an art of balancing. Field Crops Research 56, 197–201.
| Crossref | GoogleScholarGoogle Scholar |
Jiang D,
Dai TB,
Jing Q, Cao WX
(2004) Effects of long term fertilization on leaf photosynthetic characteristics and grain yield in winter wheat. Photosynthetica 42, 439–446.
| Crossref | GoogleScholarGoogle Scholar |
Johnkutty I,
Mathew G,
Thiyagarajan TM, Balasubramanian V
(2000) Relationship among leaf nitrogen content, SPAD and LCC values in rice. Journal of Tropical Agriculture 38, 97–99.
Jongschaap REE, Booij R
(2004) Spectral measurements at different spatial scales in potato: relating leaf, plant and canopy nitrogen status. International Journal of Applied Earth Observation and Geoinformation 5, 205–218.
| Crossref | GoogleScholarGoogle Scholar |
Lee T,
Raja K, Reddy G
(2000) Reflectance indices with precision and accuracy in predicting cotton leaf nitrogen concentration. Crop Science 40, 1814–1819.
Li JH,
Dong ZX, Zhu JZ
(2003) Present application and outlook for method of nitrogen nutrition diagnosis. Journal of Shihezi University (Natural Science) 7, 80–83.
Lin XQ,
Zhou WJ,
Zhu DF,
Chen HZ, Zhang YP
(2006) Nitrogen accumulation, remobilization and partitioning of rice (Oryza sativa L.) under an improved irrigation practice. Field Crops Research 96, 448–454.
| Crossref | GoogleScholarGoogle Scholar |
Raun WR, Johnson GV
(1999) Improving nitrogen use efficiency for cereal production. Agronomy Journal 91, 357–363.
Roth GW, Fox RH
(1989) Plant tissue test for predicting nitrogen fertilizer requirement of winter wheat. Agronomy Journal 81, 502–507.
Shibayama M, Akiyama T
(1986) A spectroradiometer for field use. VII. Radiometric estimation of nitrogen levels in field rice canopies. Nihon Sakumotsu Gakkai Kiji 55, 439–445.
Stone ML,
Soile JB,
Raun WR,
Whitney RW,
Taylor SL, Ringer JD
(1996) Use of spectral radiance for correcting in-season fertilizer nitrogen deficiencies in winter wheat. Transactions of American Society of Agricultural Engineering 39, 1623–1631.
Takahashi W,
Nguyen-Cong V,
Kawaguchi S,
Minamiyama M, Ninomiya S
(2000) Statistical models for prediction of dry weight and nitrogen accumulation based on visible and near-infrared hyper-spectral reflectance. Plant Production Science 3, 377–386.
Thenkabail PS,
Smith RB, Pauw ED
(2000) Hyperspectral vegetation indices and their relationships with agricultural crop characteristics. Remote Sensing of Environment 71, 158–182.
| Crossref | GoogleScholarGoogle Scholar |
Turner FT, Jund MF
(1994) Assessing the nitrogen requirements of rice crops with a chlorophyll meter. Australian Journal of Experiment Agriculture 34, 1001–1005.
| Crossref | GoogleScholarGoogle Scholar |
Wang RC,
Chen MZ, Jiang HX
(1993) Studies on agronomic mechanism of the rice yield estimation by remote sensing. I. The rice reflectance characteristics of different nitrogen levels and the selection of their sensitive bands. Journal of Zhejiang Agricultural University 19(suppl.), 7–14 [in Chinese with English summary].
Wang SH,
Ji ZJ,
Liu SH,
Ding YF, Cao WX
(2003) Relationships between balance of nitrogen supply-demand and nitrogen translocation and senescence of different position leaves on rice. Agricultural Sciences in China 2, 747–751.
Wang SH,
Zhu Y,
Jiang HD, Cao WX
(2006) Positional differences in nitrogen and sugar concentrations of upper leaves relate to plant N status in rice under different N rates. Field Crops Research 96, 224–234.
| Crossref | GoogleScholarGoogle Scholar |
Wood CW,
Reeves DW, Himclrick DG
(1993) Relationships between chlorophyll meter reading and leaf chlorophyll concentration, N status, and crop yield: a review. Proceedings of Agronomy Society of New Zealand 23, 1–9.
Xue LH,
Cao WX,
Luo WH,
Dai TB, Zhu Y
(2004) Monitoring leaf nitrogen status in rice with canopy spectral reflectance. Agronomy Journal 96, 135–142.
Zhang FS, Ma W
(2000) The relationship between fertilizer input level and nutrient use efficiency. Soil and Environment Sciences 9, 154–157 [in Chinese with English summary].