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基于多光譜影像的苜蓿地不同生育期土壤含鹽量反演模型研究
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國家自然科學基金面上項目(52379042)、甘肅省重點研發(fā)計劃項目(23YFFA0019)和甘肅省東西協(xié)作專項(23CXNA0025)


Inversion Model of Soil Salinity at Different Fertility Stages in Alfalfa Fields Based on Multi-spectral Imagery
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    摘要:

    為探究苜蓿地不同生育期不同深度的土壤含鹽量快速反演模型,采集苜蓿地分枝期,、現蕾期,、初花期深度0~15cm、15~30cm,、30~50cm土壤含鹽量,,基于無人機多光譜影像數據,提取采樣點光譜反射率,,在此基礎上引入紅邊波段代替紅波段與近紅外波段計算光譜指數,,采用皮爾遜相關系數法(Pearson correlation corfficient,PCCs)、灰色關聯(lián)度(Gray relational analysis, GRA)分析法進行指數篩選,,構建54個基于極端梯度提升(Extreme gradient boosting,,XGBoost)算法、反向傳播神經網絡(Back propagation neural network,,BPNN)和隨機森林(Random forest,,RF)的機器學習模型,,確定苜蓿地不同生育期不同深度土層的土壤含鹽量最佳反演模型,。結果表明:XGBoost模型反演效果整體優(yōu)于BPNN模型和RF模型,反演結果能真實反映不同生育期苜蓿地的土壤含鹽量,。從不同生育期反演來看,,分枝期和初花期XGBoost模型反演效果優(yōu)于其他模型,驗證集決定系數(R2p)分別為0.835,、0.709,,均方根誤差(RMSE)分別為0.042%、0.047%,,平均絕對誤差(MAE)分別為0.046%,、0.037%;現蕾期RF模型反演效果優(yōu)于其他模型,,R2p為0.717,,RMSE為0.034%,MAE為0.042%,。從不同深度反演來看,,0~15cm土層XGBoost模型反演效果優(yōu)于其他模型,R2p為0.835,,RMSE為0.053%,,MAE為0.043%;15~30cm和30~50cm土層XGBoost和RF模型均優(yōu)于BPNN模型,,R2p分別為0.717,、0.739,RMSE分別為0.034%、0.038%,,MAE分別為0.042%,、0.031%。分枝期為最佳反演生育期,,0~15cm深度為最佳含鹽量反演深度,,且PCCs變量篩選方法與XGBoost機器學習算法的耦合模型精度最佳,建模集和驗證集的R2分別為0.856,、0.835,,R2p/R2c為0.975,具有良好的魯棒性,。研究結果可為土壤含鹽量的快速精確反演提供理論依據,。

    Abstract:

    Soil salinization has always been an important factor restricting the sustainable development of agriculture in Northwest China. In order to explore the rapid inversion model of soil salinity at different depths in different growth stages of alfalfa land, soil salinity at the depths of 0~15cm,15~30cm and 30~50cm in the branching stage, budding stage and early flowering stage of alfalfa land was collected. Based on the multispectral image data of UAV, the spectral reflectance of sampling points was extracted. On this basis, the red band was introduced instead of the red band and the near-infrared band to calculate the spectral index. Pearson correlation corfficient (PCCs) and gray relational analysis (GRA) were used for index screening. A total of 54 machine learning models based on extreme gradient boosting (XGBoost) algorithm, back propagation neural network (BPNN) and random forest (RF) were constructed to determine the optimal inversion model of soil layers at different depths in different growth stages of alfalfa land. The results showed that the inversion effect of XGBoost model was better than that of BPNN model and RF model, and the inversion results could truly reflect the soil salt content of alfalfa field at different growth stages. According to the inversion of different growth stages, the inversion effect of XGBoost model in branching stage and early flowering stage was better than that of other models. The determination coefficient of validation set (R2p) was 0.835 and 0.709, respectively, the root mean square error (RMSE) was 0.042% and 0.047%, respectively, and the mean absolute error (MAE) was 0.046% and 0.037%, respectively. The inversion effect of RF model was better than that of other models, with R2p of 0.717, RMSE of 0.034% and MAE of 0.042%. From the perspective of different depths inversion, the inversion effect of XGBoost model in 0~15cm soil layer was better than that of other models. The R2p was 0.835, the RMSE was 0.053%, and MAE was 0.043%. The XGBoost and RF models were superior to the BPNN model in 15~30cm and 30~50cm soil layers, with R2p of 0.717 and 0.739, RMSE of 0.034% and 0.038%, and MAE of 0.042% and 0.031%, respectively.The branching period was the best inversion growth period, and the depth of 0~15cm was the best salinity inversion depth, and the coupling model of PCCs variable screening method and XGBoost machine learning algorithm had the best accuracy. The R2 of the modeling set and the verification set were 0.856 and 0.835, respectively, and R2p/R2c was 0.975, which had good robustness. The research results can provide a theoretical basis for rapid and accurate inversion of soil salinity.

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趙文舉,李釗釗,馬芳芳,段威成,馬宏.基于多光譜影像的苜蓿地不同生育期土壤含鹽量反演模型研究[J].農業(yè)機械學報,2024,55(12):418-429. ZHAO Wenju, LI Zhaozhao, MA Fangfang, DUAN Weicheng, MA Hong. Inversion Model of Soil Salinity at Different Fertility Stages in Alfalfa Fields Based on Multi-spectral Imagery[J]. Transactions of the Chinese Society for Agricultural Machinery,2024,55(12):418-429.

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  • 收稿日期:2024-01-17
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  • 在線發(fā)布日期: 2024-12-10
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