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基于XGBoost-Shapley的玉米不同生育期LAI遙感估算
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國家重點(diǎn)研發(fā)計(jì)劃項(xiàng)目(2020YFD1100601)


Remote Sensing Estimation of Maize Leaf Area Index at Different Growth Periods Based on XGBoost-Shapley Algorithm
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    摘要:

    針對當(dāng)前快速準(zhǔn)確獲取葉面積指數(shù)(Leaf area index,LAI)時(shí)大部分遙感預(yù)測方法將光譜信息作為模型主要特征,忽略時(shí)序變化特征的問題,利用無人機(jī)搭載五通道多光譜相機(jī)獲取研究區(qū)玉米不同生育期的影像數(shù)據(jù),基于該數(shù)據(jù)計(jì)算玉米相應(yīng)生育期植被指數(shù),然后采用植被指數(shù)建立各生育期子模型,采用Shapley理論計(jì)算子模型均方根誤差對全生育期模型均方根誤差的貢獻(xiàn)度,從而確定各子模型權(quán)重,根據(jù)權(quán)重組合形成具有LAI時(shí)序變化特征的估算模型,分別基于支持向量回歸(SVR)、多層感知機(jī)(MLP)、隨機(jī)森林(RF)和極限梯度提升樹(XGBoost)算法構(gòu)建組合估算模型。結(jié)果表明:采用Shapley理論構(gòu)建的組合LAI估算模型估算效果優(yōu)于直接構(gòu)建的全生育期LAI估算模型。相較于SVR-Shapley、MLP-Shapley以及RF-Shapley模型,XGBoost-Shapley模型的估算效果最佳(R2為0.97,RMSE為0.021,RPD為6.9)。將最優(yōu)模型XGBoost-Shapley應(yīng)用于研究區(qū)LAI預(yù)測,預(yù)測結(jié)果符合不同生育期玉米長勢。本研究為大田玉米長勢遙感監(jiān)測提供了新的思路和方法。

    Abstract:

    In view of the problem that most remote sensing prediction methods take spectral information as the main feature of the model and ignore the temporal variation characteristics when obtaining leaf area index (LAI) quickly and accurately, the UAV was equipped with a five channel multispectral camera to obtain the multispectral images of different growth periods of maize in the study area. The vegetation indices of maize in corresponding growth period were calculated based on the images. Then the sub models of each growth period were established by using the vegetation indices. The contribution of the root mean square error (RMSE) of each sub model to the RMSE of the whole growth period model was calculated based on Shapley theory. The weight of each sub model was given based on its contribution. The combination estimation model was built with LAI timeseries variation characteristics according to the weight. And different combination models were built based on support vector regression (SVR) algorithm, multilayer perceptron (MLP), random forest (RF) algorithm and XGBoost algorithm for comparison. The results showed that the estimation effect of the combined LAI estimation model based on Shapley theory was better than that of the whole growth period LAI estimation model. Compared with other LAI estimation models (SVR-Shapley, MLP-Shapley and RF-Shapley), the XGBoost-Shapley model had the best estimation effect (R2 was 0.97, RMSE was 0.021, RPD was 6.9). Thus the XGBoost-Shapley model was applied to LAI prediction in the study area. The research results showed that the LAI change rate in different growth periods were different, and the prediction results accorded with the growth trend of maize in different growth periods. The research result can provide a method for remote sensing monitoring of field maize growth.

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張宏鳴,侯貴河,孫志同,楊歡瑜,韓柯城,韓文霆.基于XGBoost-Shapley的玉米不同生育期LAI遙感估算[J].農(nóng)業(yè)機(jī)械學(xué)報(bào),2022,53(7):208-216,225. ZHANG Hongming, HOU Guihe, SUN Zhitong, YANG Huanyu, HAN Kecheng, HAN Wenting. Remote Sensing Estimation of Maize Leaf Area Index at Different Growth Periods Based on XGBoost-Shapley Algorithm[J]. Transactions of the Chinese Society for Agricultural Machinery,2022,53(7):208-216,225.

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  • 收稿日期:2022-01-02
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  • 在線發(fā)布日期: 2022-07-10
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