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中国农学通报 ›› 2020, Vol. 36 ›› Issue (20): 119-126.doi: 10.11924/j.issn.1000-6850.casb20190400050

所属专题: 农业工程 小麦

• 工程·机械·水利·装备 • 上一篇    下一篇

基于无人机多光谱遥感的冬小麦叶绿素含量反演及监测

奚雪, 赵庚星()   

  1. 山东农业大学资源与环境学院,山东泰安 271081
  • 收稿日期:2019-04-26 修回日期:2019-06-27 出版日期:2020-07-15 发布日期:2020-07-20
  • 通讯作者: 赵庚星
  • 作者简介:奚雪,女,1995年出生,河北张家口人,硕士研究生,研究方向:遥感应用与制图工程。通信地址:271081 山东省泰安市泰山区岱宗大街61号 山东农业大学资源与环境学院,Tel:0538-8243939,E-mail:1349637259@qq.com。
  • 基金资助:
    “十二五”国家科技支撑计划项目课题“小麦玉米轮作区农田养分精确管理与精准施肥技术”(2015BAD23B0202);国家自然科学基金“黄三角濒海区土壤盐渍化的尺度特征、变异机制及预测预警”(41877003);“双一流”奖补资金“主要农作物田间自动监测与精准管理”(SYL2017XTTD02)

Chlorophyll Content in Winter Wheat: Inversion and Monitoring Based on UAV multi-spectral Remote Sensing

Xi Xue, Zhao Gengxing()   

  1. Department of Resource and Environment, Shandong Agricultural University, Taian Shandong 271081
  • Received:2019-04-26 Revised:2019-06-27 Online:2020-07-15 Published:2020-07-20
  • Contact: Zhao Gengxing

摘要:

旨在实现冬小麦各生育期叶绿素含量的准确估测,探究其时空变化规律。利用无人机获取冬小麦越冬期、返青期、拔节期、孕穗期和灌浆期的高分辨率多光谱图像,同时采集地面SPAD数据。选取三类光谱参数建立反演模型,优选出各生育期的最佳预测模型,并定量监测试验区冬小麦叶绿素含量时间变化和空间分布。结果表明:原始波段模型和波段倒数对数模型分别为越冬期及其他生育期叶绿素含量预测的最佳模型,拟合精度R2>0.59;时空分布上,灌浆期前试验区冬小麦叶绿素含量呈南北高、中部低特点,灌浆期则呈北高南低的趋势,叶绿素含量从越冬期到拔节期逐步增加,拔节期到孕穗期开始降低,孕穗期到灌浆期则大幅度降低。本研究建立的倒数对数预测模型,精度较高,且适用于返青到灌浆的4个生育期,对于试验区冬小麦叶绿素含量有较好的时空监测效果。

关键词: 冬小麦, 叶绿素含量反演, 预测模型, 时空变化, 无人机

Abstract:

The aim is to accurately estimate the chlorophyll content of winter wheat at different growth stages, and to explore its temporal and spatial change. The multispectral image with high resolution of winter wheat at overwintering stage, returning green stage, jointing stage, booting stage and filling stage were photographed by unmanned aerial vehicle (UAV), and SPAD ground data were collected at the same time. Three kinds of spectral parameters were selected to establish the inversion model, the best prediction model for each growth stage was screened out, and the temporal and spatial changes of chlorophyll content in winter wheat in the experimental area were quantitatively monitored. The results showed that the original wave band model and the reciprocal logarithmic wave band model were the best models for predicting chlorophyll content in overwintering stage and other growth stages, respectively, the inversion accuracy R2 were all greater than 0.59. In terms of temporal and spatial changes, before the filling stage, the chlorophyll content of winter wheat in the experimental area exhibited the high in the north and south, and the low in middle. During the filling stage, the chlorophyll content exhibited the high in the north and the low in the south. The chlorophyll content in winter wheat increased gradually from overwintering stage to jointing stage, decreased from jointing stage to booting stage, and decreased significantly from booting stage to filling stage. The wave band reciprocal logarithm model established in this study has higher prediction accuracy, it is suitable for the four growth stages from returning green stage to filling stage, and it has a good temporal and spatial monitoring effect on the chlorophyll content of winter wheat in the experimental area.

Key words: winter wheat, chlorophyll content inversion, predictive model, temporal and spatial change, unmanned aerial vehicle

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