Glenn Fitzgerald , Daniel Rodriguez , Garry O’Leary
{"title":"Measuring and predicting canopy nitrogen nutrition in wheat using a spectral index—The canopy chlorophyll content index (CCCI)","authors":"Glenn Fitzgerald , Daniel Rodriguez , Garry O’Leary","doi":"10.1016/j.fcr.2010.01.010","DOIUrl":null,"url":null,"abstract":"<div><p><span>Varying the spatial distribution of applied nitrogen (N) fertilizer to match demand in crops has been shown to increase profits in Australia. Better matching the timing of N inputs to plant requirements has been shown to improve nitrogen use efficiency and crop yields and could reduce nitrous oxide emissions from broad acre grains. Farmers in the wheat production area of south eastern Australia are increasingly splitting N application with the second timing applied at stem elongation<span> (Zadoks 30). Spectral indices have shown the ability to detect crop canopy N status but a robust method using a consistent calibration that functions across seasons has been lacking. One spectral index, the canopy chlorophyll content index (CCCI) designed to detect canopy N using three wavebands along the “red edge” of the spectrum was combined with the canopy nitrogen index (CNI), which was developed to normalize for crop biomass and correct for the N dilution effect of crop canopies. The CCCI–CNI index approach was applied to a 3-year study to develop a single calibration derived from a wheat crop sown in research plots near Horsham, Victoria, Australia. The index was able to predict canopy N (g</span></span> <!-->m<sup>−2</sup>) from Zadoks 14–37 with an <em>r</em><sup>2</sup> of 0.97 and RMSE of 0.65<!--> <!-->g<!--> <!-->N<!--> <!-->m<sup>−2</sup><span> when dry weight biomass by area was also considered. We suggest that measures of N estimated from remote methods use N per unit area as the metric and that reference directly to canopy %N is not an appropriate method for estimating plant concentration without first accounting for the N dilution effect. This approach provides a link to crop development rather than creating a purely numerical relationship. The sole biophysical input, biomass, is challenging to quantify robustly via spectral methods. Combining remote sensing with crop modelling could provide a robust method for estimating biomass and therefore a method to estimate canopy N remotely. Future research will explore this and the use of active and passive sensor technologies for use in precision farming for targeted N management.</span></p></div>","PeriodicalId":12143,"journal":{"name":"Field Crops Research","volume":"116 3","pages":"Pages 318-324"},"PeriodicalIF":5.6000,"publicationDate":"2010-04-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://sci-hub-pdf.com/10.1016/j.fcr.2010.01.010","citationCount":"259","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Field Crops Research","FirstCategoryId":"97","ListUrlMain":"https://www.sciencedirect.com/science/article/pii/S0378429010000304","RegionNum":1,"RegionCategory":"农林科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"AGRONOMY","Score":null,"Total":0}
引用次数: 259
Abstract
Varying the spatial distribution of applied nitrogen (N) fertilizer to match demand in crops has been shown to increase profits in Australia. Better matching the timing of N inputs to plant requirements has been shown to improve nitrogen use efficiency and crop yields and could reduce nitrous oxide emissions from broad acre grains. Farmers in the wheat production area of south eastern Australia are increasingly splitting N application with the second timing applied at stem elongation (Zadoks 30). Spectral indices have shown the ability to detect crop canopy N status but a robust method using a consistent calibration that functions across seasons has been lacking. One spectral index, the canopy chlorophyll content index (CCCI) designed to detect canopy N using three wavebands along the “red edge” of the spectrum was combined with the canopy nitrogen index (CNI), which was developed to normalize for crop biomass and correct for the N dilution effect of crop canopies. The CCCI–CNI index approach was applied to a 3-year study to develop a single calibration derived from a wheat crop sown in research plots near Horsham, Victoria, Australia. The index was able to predict canopy N (g m−2) from Zadoks 14–37 with an r2 of 0.97 and RMSE of 0.65 g N m−2 when dry weight biomass by area was also considered. We suggest that measures of N estimated from remote methods use N per unit area as the metric and that reference directly to canopy %N is not an appropriate method for estimating plant concentration without first accounting for the N dilution effect. This approach provides a link to crop development rather than creating a purely numerical relationship. The sole biophysical input, biomass, is challenging to quantify robustly via spectral methods. Combining remote sensing with crop modelling could provide a robust method for estimating biomass and therefore a method to estimate canopy N remotely. Future research will explore this and the use of active and passive sensor technologies for use in precision farming for targeted N management.
在澳大利亚,改变施用氮肥的空间分布以满足作物需求已被证明可以增加利润。研究表明,将氮投入的时间与植物需求更好地匹配,可以提高氮利用效率和作物产量,并可以减少大面积谷物的一氧化二氮排放。澳大利亚东南部小麦产区的农民越来越多地分配施氮量,第二次施氮时间为茎伸长(Zadoks 30)。光谱指数显示出检测作物冠层氮状况的能力,但缺乏一种使用跨季节一致校准的稳健方法。将一个光谱指数,即冠层叶绿素含量指数(CCCI)与冠层氮指数(CNI)相结合,该指数旨在通过沿光谱“红边”的三个波段检测冠层氮,该指数用于对作物生物量进行归一化,并校正作物冠层的氮稀释效应。将CCCI–CNI指数方法应用于一项为期3年的研究,以开发一个单一的校准,该校准源于澳大利亚维多利亚州霍舍姆附近研究区播种的小麦作物。当还考虑到按面积划分的干重生物量时,该指数能够预测Zadoks 14–37的冠层N(g m−2),r2为0.97,RMSE为0.65 g N m−2。我们建议,通过远程方法估计的N测量使用单位面积的N作为度量标准,并且在不首先考虑N稀释效应的情况下,直接参考冠层%N不是估计植物浓度的合适方法。这种方法提供了与作物发展的联系,而不是建立纯粹的数字关系。唯一的生物物理输入,即生物量,很难通过光谱方法进行有力的量化。将遥感与作物建模相结合,可以提供一种稳健的生物量估计方法,从而提供一种远程估计冠层氮的方法。未来的研究将探索这一点,以及在精准农业中使用主动和被动传感器技术进行有针对性的氮管理。
期刊介绍:
Field Crops Research is an international journal publishing scientific articles on:
√ experimental and modelling research at field, farm and landscape levels
on temperate and tropical crops and cropping systems,
with a focus on crop ecology and physiology, agronomy, and plant genetics and breeding.