干旱区地理 ›› 2023, Vol. 46 ›› Issue (7): 1121-1132.doi: 10.12118/j.issn.1000-6060.2022.503
李诗瑶1,2(),丛士翔1,王融融1,余海龙1(),黄菊莹3
收稿日期:
2022-10-08
修回日期:
2022-11-27
出版日期:
2023-07-25
发布日期:
2023-08-03
通讯作者:
余海龙(1979-),男,博士,教授,主要从事土壤地理、生态恢复工程等方面的研究. E-mail: 作者简介:
李诗瑶(1996-),女,博士研究生,主要从事数字农业与农业信息化工程研究. E-mail: 基金资助:
LI Shiyao1,2(),CONG Shixiang1,WANG Rongrong1,YU Hailong1(),HUANG Juying3
Received:
2022-10-08
Revised:
2022-11-27
Online:
2023-07-25
Published:
2023-08-03
摘要:
精准动态监测干旱胁迫下的玉米冠层叶绿素相对含量对提高我国玉米旱灾预警水平、实现田间精准灌溉具有重要的指示作用。以无人机多光谱影像为数据源,选用多种具有明确物理意义且与玉米冠层叶绿素相对含量SPAD(Soil and plant analyzer development)值相关性强的植被指数,利用多元逐步回归、支持向量机、BP神经网络(Back propagation neural network,BPNN)建立玉米冠层SPAD值的遥感监测模型并验证,选取最优估测模型提取各生育期不同程度干旱胁迫下的玉米冠层SPAD值,分析不同生育期玉米冠层SPAD值变化,探究不同干旱胁迫程度对玉米冠层SPAD值的影响。结果表明:不同生育期的玉米冠层叶绿素敏感的植被指数不同,且各生育期估测能力最优的反演模型不同。对比3种建模方法,BPNN模型的建模结果及验证结果最优,说明其估测能力及稳定性表现最好,可以作为基于无人机多光谱的玉米冠层SPAD值建模的优选方法。此外,干旱胁迫会降低玉米冠层SPAD值遥感监测模型的估测精度,对苗期的影响最为显著。轻度干旱对玉米冠层SPAD值影响不显著,可见玉米对干旱胁迫具有一定的适应性和抗逆性。因此,基于植被指数的BPNN模型可以更好地估算SPAD值,为基于无人机遥感的SPAD值监测提供一种新途径,为干旱胁迫下夏玉米冠层SPAD值的无损监测以及田间水分精准管理提供参考。
李诗瑶, 丛士翔, 王融融, 余海龙, 黄菊莹. 基于无人机多光谱遥感的干旱胁迫下玉米冠层SPAD值监测[J]. 干旱区地理, 2023, 46(7): 1121-1132.
LI Shiyao, CONG Shixiang, WANG Rongrong, YU Hailong, HUANG Juying. Monitoring of maize canopy SPAD value under drought stress based on UAV multi-spectral remote sensing[J]. Arid Land Geography, 2023, 46(7): 1121-1132.
表1
无人机及相机主要参数"
无人机参数 | 相机参数 | ||
---|---|---|---|
型号 | eBee | 型号 | Parrot Sequoia |
起飞重量/kg | 0.64 | 重量/g | 72(相机)+36(光照传感器) |
翼展/cm | 96 | 光谱波段 | 绿(550 nm+/-40 nm)、 红(660 nm+/-40 nm)、 红边(735 nm+/-10 nm)、 近红外(790 nm+/-40 nm)、 可见光 |
推力 | 电动推杆式螺旋桨,160 w直流电机 | ||
续航时间/min | 45 | ||
巡航速度/m·s-1 | 10~16 | ||
无线电范围/km | 3 | 成像解析度/pixels | 1280×960 |
最大覆盖率/km2 | 10 | 分辨率 | 多光谱1.2×106/RGB1600×104 |
表3
玉米冠层SPAD值与植被指数的相关系数"
植被指数 | 苗期 | 拔节期 | 抽雄期 | 完熟期 |
---|---|---|---|---|
NDVI | 0.375* | 0.554** | 0.685** | 0.597** |
DVI | 0.333* | 0.526** | 0.806** | 0.573** |
RVI | 0.369* | 0.423* | 0.698** | 0.573** |
OSAVI | 0.373* | 0.552** | 0.770** | 0.633** |
GNDVI | 0.210 | 0.621** | 0.757** | 0.400* |
GDVI | 0.185 | 0.506** | 0.814** | 0.479** |
GRVI | 0.194 | 0.549** | 0.767** | 0.427** |
GOSAVI | 0.214 | 0.614** | 0.812** | 0.448** |
RENDVI | 0.129 | 0.577** | 0.758** | 0.580** |
REDVI | 0.036 | 0.534** | 0.821** | 0.611** |
RERVI | 0.130 | 0.534** | 0.795** | 0.642** |
REOSAVI | 0.113 | 0.574** | 0.795** | 0.515** |
TVI | 0.370* | 0.530** | 0.801** | 0.616** |
表4
不同估测模型的SPAD值建模与验证结果"
生育期 | 模型 | 建模变量 | 建模集 | 验证集 | |||
---|---|---|---|---|---|---|---|
R2 | RMSE | R2 | RMSE | ||||
苗期 | MSR | NDVI、DVI、RVI、OSAVI、TVI | 0.615 | 4.657 | 0.755 | 3.611 | |
SVM | 0.624 | 4.443 | 0.697 | 3.194 | |||
BPNN | 0.802 | 3.632 | 0.796 | 3.534 | |||
拔节期 | MSR | NDVI、DVI、OSAVI、GNDVI、GDVI、GRVI、GOSAVI、RENDVI、REDVI、RERVI、REOSAVI、TVI | 0.644 | 4.835 | 0.699 | 4.285 | |
SVM | 0.658 | 4.005 | 0.648 | 4.530 | |||
BPNN | 0.677 | 3.985 | 0.639 | 4.113 | |||
抽雄期 | MSR | 全植被指数 | 0.735 | 4.115 | 0.725 | 4.448 | |
SVM | 0.634 | 4.178 | 0.778 | 4.682 | |||
BPNN | 0.678 | 4.580 | 0.821 | 4.178 | |||
完熟期 | MSR | NDVI、DVI、RVI、OSAVI、GDVI、GRVI、GOSAVI、RENDVI、REDVI、RERVI、REOSAVI、TVI | 0.619 | 4.642 | 0.616 | 3.574 | |
SVM | 0.701 | 3.515 | 0.642 | 3.391 | |||
BPNN | 0.821 | 3.093 | 0.703 | 4.600 |
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