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灌溉农田和雨养农田冬小麦叶面积指数的高光谱预测

Hyperspectral prediction of leaf area index of winter wheat in irrigated and rainfed fields.

作者信息

Li Guangxin, Wang Chao, Feng Meichen, Yang Wude, Li Fangzhou, Feng Ruiyun

机构信息

College of Agronomy, Shanxi Agricultural University, Taigu, China.

Institute of Crop Science, Shanxi Academy of Agricultural Sciences, Taiyuan, China.

出版信息

PLoS One. 2017 Aug 17;12(8):e0183338. doi: 10.1371/journal.pone.0183338. eCollection 2017.

Abstract

The growth status of winter wheat in irrigated field and rainfed field are obviously different and the field types may have an effect on the predictive accuracy of hyperspectral model. The objectives of the present study were to understand the difference of spectral sensitive wavelengths for leaf area index (LAI) in two field types and realize its hyperspectral prediction. In study, a total of 31 and 28 sample sites in irrigated fields and rainfed fields respectively were selected from Wenxi County, and the LAI and canopy spectra were also collected at the main grow stage of winter wheat. The method of successive projections algorithm (SPA) was applied by selecting the important wavelengths, and the multiple linear regression (MLR) and partial least squares regression (PLSR) were used to construct the predictive model based on the important wavelengths and full wavelengths, respectively. Moreover, the parameters of variable importance project (VIP) and B-coefficient derived from PLSR analysis were implemented to validate the evaluated wavelengths using the SPA method. The sensitive wavelengths of LAI for irrigated field and rainfed field were 404, 407, 413, 417, 450, 677, 715, 735, 816, 1127 and 404, 406, 432, 501, 540, 679, 727, 779, 1120, 1290 nm, respectively, and these wavelengths proved to be highly correlated with LAI. Compared with the model performance based on the SPA-MLR and PLSR methods, the method of SPA-MLR was proved to be better (rainfed field: R2 = 0.736, RMSE = 1.169, RPD = 1.6245; irrigated field: R2 = 0.716, RMSE = 1.059, RPD = 1.538). Moreover, the predictive model of LAI in rainfed fields had a better accuracy than the model in irrigated fields. The results from this study indicated that it was necessary to classify the field type while monitoring the winter wheat using the remote sensing technology. This study also demonstrated that the multivariate method of SPA-MLR could accurately evaluate the sensitive wavelengths and construct the predictive model of LAI.

摘要

灌溉田和雨养田冬小麦的生长状况明显不同,田块类型可能会对高光谱模型的预测精度产生影响。本研究的目的是了解两种田块类型中叶面积指数(LAI)光谱敏感波长的差异,并实现其高光谱预测。研究中,分别从闻喜县选取了灌溉田31个采样点和雨养田28个采样点,并在冬小麦主要生长阶段采集了LAI和冠层光谱。采用连续投影算法(SPA)选取重要波长,分别基于重要波长和全波长,使用多元线性回归(MLR)和偏最小二乘回归(PLSR)构建预测模型。此外,利用PLSR分析得到的变量重要性投影(VIP)参数和B系数,采用SPA方法对评估波长进行验证。灌溉田和雨养田LAI的敏感波长分别为404、407、413、417、450、677、715、735、816、1127和404、406、432、501、540、679、727、779、1120、1290 nm,这些波长与LAI高度相关。与基于SPA-MLR和PLSR方法的模型性能相比,SPA-MLR方法被证明更好(雨养田:R2 = 0.736,RMSE = 1.169,RPD = 1.6245;灌溉田:R2 = 0.716,RMSE = 1.059,RPD = 1.538)。此外,雨养田LAI的预测模型精度高于灌溉田模型。本研究结果表明,利用遥感技术监测冬小麦时,有必要对田块类型进行分类。本研究还表明,SPA-MLR多元方法能够准确评估敏感波长并构建LAI预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2033/5560714/be9f097929e9/pone.0183338.g001.jpg

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