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Monitoring of Nitrogen and Grain Protein Content in Winter Wheat Based on Sentinel-2A Data

机译:基于Sentinel-2A数据的冬小麦氮素和籽粒蛋白质含量监测

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Grain protein content (GPC) is an important indicator of wheat quality. Earlier estimation of wheat GPC based on remote sensing provided effective decision to adapt optimized strategies for grain harvest, which is of great significance for agricultural production. The objectives of this field study are: (i) To assess the ability of spectral vegetation indices (VIs) of Sentinel 2 data to detect the wheat nitrogen (N) attributes related to the grain quality of winter wheat production, and (ii) to examine the accuracy of wheat N status and GPC estimation models based on different VIs and wheat nitrogen parameters across Analytical Spectra Devices (ASD) and Unmanned Aerial Vehicle (UAV) hyper-spectral data-simulated sentinel data and the real Sentinel-2 data. In this study, four nitrogen parameters at the wheat anthesis stage, including plant nitrogen accumulation (PNA), plant nitrogen content (PNC), leaf nitrogen accumulation (LNA), and leaf nitrogen content (LNC), were evaluated for their relationship between spectral parameters and GPC. Then, a multivariate linear regression method was used to establish the wheat nitrogen and GPC estimation model through simulated Sentinel-2A VIs. The coefficients of determination ( R 2 ) of four nitrogen parameter models were all greater than 0.7. The minimum R 2 of the prediction model of wheat GPC constructed by four nitrogen parameters combined with VIs was 0.428 and the highest R 2 was 0.467. The normalized root mean square error (nRMSE) of the four nitrogen estimation models ranged from 26.333% to 29.530% when verified by the ground-measured data collected from the Beijing suburbs, and the corresponding nRMSE for the GPC-predicted models ranged from 17.457% to 52.518%. The accuracy of the estimated model was verified by UAV hyper-spectral data which had resized to different spatial resolution collected from the National Experimental Station for Precision Agriculture. The normalized root mean square error (nRMSE) of the four nitrogen estimation models ranged from 16.9% to 37.8%, and the corresponding nRMSE for the GPC-predicted models ranged from 12.3% to 13.2%. The relevant models were also verified by Sentinel-2A data collected in 2018 while the minimum nRMSE for GPC invert model based on PNA was 7.89% and the maximum nRMSE of the GPC model based on LNC was 12.46% in Renqiu district, Hebei province. The nRMSE for the wheat nitrogen estimation model ranged from 23.200% to 42.790% for LNC and PNC. These data demonstrate that freely available Sentinel-2 imagery can be used as an important data source for wheat nutrition and grain quality monitoring.
机译:谷物蛋白质含量(GPC)是小麦品质的重要指标。基于遥感的小麦GPC的早期估计为适应优化的谷物收成策略提供了有效的决策,这对农业生产具有重要意义。本田间研究的目标是:(i)评估Sentinel 2数据的光谱植被指数(VIs)来检测与冬小麦生产的谷物品质相关的小麦氮(N)属性的能力,以及(ii)在分析光谱设备(ASD)和无人飞行器(UAV)高光谱数据模拟的前哨数据和真实Sentinel-2数据的基础上,基于不同的VI和小麦氮参数,检查小麦N状态和GPC估计模型的准确性。在这项研究中,评估了小麦花期阶段的四个氮参数,包括植物氮累积量(PNA),植物氮含量(PNC),叶氮累积量(LNA)和叶氮含量(LNC)与光谱之间的关系。参数和GPC。然后,采用多元线性回归方法通过模拟的Sentinel-2A VI建立小麦氮和GPC估计模型。四个氮参数模型的测定系数(R 2)均大于0.7。由四个氮参数结合VI构建的小麦GPC预测模型的最小R 2为0.428,最高R 2为0.467。经北京郊区实测数据验证,四种氮素估算模型的均方根均方根误差(nRMSE)为26.333%至29.530%,GPC预测模型的相应nRMSE为17.457%至52.518%。无人机高光谱数据验证了估计模型的准确性,该数据已调整为从国家精确农业实验站收集的不同空间分辨率。四个氮估算模型的归一化均方根误差(nRMSE)在16.9%到37.8%之间,而GPC预测模型的相应nRMSE在12.3%到13.2%之间。相关模型也通过2018年收集的Sentinel-2A数据进行了验证,而河北省任丘地区基于PNA的GPC反演模型的最小nRMSE为7.89%,基于LNC的GPC模型的最大nRMSE为12.46%。 LNC和PNC的小麦氮素估算模型的nRMSE在23.200%到42.790%之间。这些数据表明,免费提供的Sentinel-2图像可用作小麦营养和谷物质量监测的重要数据源。

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