中国农业气象 ›› 2022, Vol. 43 ›› Issue (04): 308-320.doi: 10.3969/j.issn.1000-6362.2022.04.006

• 农业气象信息技术 栏目 • 上一篇    

基于无人机图像参数对滴灌条件下玉米氮素营养的动态诊断

翟勇全,魏雪,运彬媛,马健祯,贾彪   

  1. 宁夏大学农学院,银川 750021
  • 收稿日期:2021-08-09 出版日期:2022-04-20 发布日期:2022-04-18
  • 通讯作者: 贾彪,副教授,主要从事农业信息与精准农业研究 E-mail:jiabiao2008@163.com
  • 作者简介:翟勇全,Email:zyq6692@163.com
  • 基金资助:
    宁夏自然基金重点项目(2020AAC02012);宁夏自然科学基金一般项目(2021AAC03025)

Dynamic Diagnosis of Nitrogen Nutrition in Maize under Drip Irrigation Condition Based on UAV Image Parameters

ZHAI Yong-quan, WEI Xue, YUN Bin-yuan, MA Jian-zhen, JIA Biao   

  1. School of Agriculture, Ningxia University, Yinchuan 750021, China
  • Received:2021-08-09 Online:2022-04-20 Published:2022-04-18

摘要: 于2018和2019年在宁夏平吉堡农场进行滴灌水肥一体化氮肥梯度试验,以天赐19为试验材料,设6个氮素水平,即 0 (N0)、90(N1)、180(N2)、270(N3)、360(N4)和450(N5)kg·hm−2,在玉米拔节期(V6)、小喇叭口期(V10)、大喇叭口期(V12)、吐丝期(R1)和乳熟期(R3)利用无人机搭载数码相机获取玉米冠层图像,利用Matlab编写代码开发的数字图像识别系统提取玉米冠层图像红光值R、绿光值G、蓝光值B,研究基于此计算的10个冠层图像参数指标与氮素营养指标间的相关性,筛选出稳定性好且敏感度高的图像色彩参数,构建玉米氮素营养诊断指标与图像参数间关系模型并进行验证,以探究利用无人机图像进行宁夏引黄灌区滴灌玉米拔节-乳熟期氮素营养动态估测的可行性。结果表明:冠层图像参数指标绿光与红光比值(G/R)、绿光标准化值(NGI)、红绿蓝植被指数(RGBVI)与植株氮含量和叶片氮含量相关性高且变异系数小,可作为氮素营养诊断的潜在最佳色彩参数;将最佳色彩参数与植株氮含量和叶片氮含量分别进行回归模型构建,幂函数模型可以更好地预估玉米氮素营养状况;利用2019年相同氮素试验进行模型验证,发现NGI与植株氮浓度和叶片氮浓度实测值与估测值的R2分别为0.738和0.689,检验指标RMSE为2.594和3.014,nRMSE为13.125%和13.347%,预测精度和准确性高于G/R和RGBVI。故选择NGI作为滴灌玉米拔节−乳熟期氮素营养动态诊断的最优参数,参数NGI与植株氮浓度的关系模型(NP=4.967×106NGI14.26)R2为0.707,与叶片氮浓度的关系模型(NL=1.707×106NGI12.88)R2为0.654。说明应用无人机图像技术可以较好地对宁夏引黄灌区玉米拔节−乳熟期氮素营养状况进行动态估测,构建的氮素营养诊断模型可为宁夏引黄灌区滴灌玉米氮肥精准配施提供理论依据。

关键词: 滴灌, 玉米, 图像参数, 植株氮含量, 叶片氮含量, 诊断模型

Abstract: The experiment on nitrogen fertilizer gradient of maize under drip irrigation in Ningxia Pingjibao farm was conducted from 2018 and 2019. The variety of Tianci 19 was used as an experimental material, six nitrogen level treatments were set, which was 0(N0), 90(N1), 180(N2), 270(N3), 360(N4) and 450(N5)kg(N)·ha−1, respectively. P and K fertilizers was conventional fertilization treatment, which was 138kg·ha−1 and 120kg·ha−1. Using drip irrigation water and fertilizer integration technology, fertilizer was applied along with water. The proportion of fertilizer application in each growth stage was 10% in seedling stage, 45% in six leaves stage, 20% in silking stage and 25% in filling stage. Maize canopy images were obtained by UAV equipped with digital camera in the maize six leaves stage(V6), ten leaves stage(V10), twelve leaves stage(V12), silking stage(R1) and milk stage(R3), and used Matlab code developed by digital image recognition system to extract the corn canopy image the red light value R, green light value G and blue light value B. The correlation between 10 canopy image parameters and nitrogen nutrition indexes based on this calculation was studied, and the image color parameters with good stability and high sensitivity were screened out. The relationship model between diagnostic indices of maize nitrogen nutrition and image parameters was constructed and verified. In order to explore the feasibility of using UAV image to estimate the dynamic nitrogen nutrition of maize under drip irrigation in Ningxia Yellow River Irrigation area during the period of joining and milk ripening. The results showed that the ratio of green light to red light (G/R), standardized value of green light (NGI), and red-green-blue vegetation index (RGBVI) were highly correlated with plant nitrogen content and leaf nitrogen content and had small coefficient of variation, which could be used as the potential optimal color parameters for nitrogen nutrition diagnosis. The regression model of optimal color parameters with nitrogen content in plant and leaf was constructed, and the power function model could better predict nitrogen status of maize. The same nitrogen experiment in 2019 was used to verify the model. It was found that the R2 of measured and estimated value of NGI and plant nitrogen concentration and leaf nitrogen concentration were 0.738 and 0.689, respectively. The test indexes RMSE were 2.594 and 3.014, and nRMSE were 13.125% and 13.347%. The prediction accuracy and accuracy are higher than G/R and RGBVI. Therefore, NGI can be selected as the optimal parameter for dynamic diagnosis of nitrogen nutrition in drip irrigation maize at the stage of V6-R3 stage, and the correlation model between parameter NGI and plant nitrogen concentration (NP=4.967×106NGI14.26) R2 was 0.707. The R2 of the model (NL=1.707×106NGI12.88) was 0.654. The results showed that the application of UAV image technology could dynamically estimate the nitrogen nutrition status of maize during the period of V6-R3 stage in Ningxia Yellow River Irrigation area, and the nitrogen nutrition diagnostic model constructed could provide a theoretical basis for the precise allocation of nitrogen fertilizer for drip irrigation maize in Ningxia Yellow River irrigation area.

Key words: Drip irrigation, Maize, Image parameters, Plant nitrogen content, Leaf nitrogen content, Dynamic diagnosis