Sun Tao, Li Zhijun, Wang Zhangkai, Liu Yuchen, Zhu Zhiheng, Zhao Yizheng, Xie Weihao, Cui Shihao, Chen Guofu, Yang Wanli, Zhang Zhitao, Zhang Fucang
Key Laboratory of Agricultural Soil and Water Engineering in Arid and Semiarid Areas of Ministry of Education, Northwest A&F University, Xianyang 712100, China.
Institute of Water-Saving Agriculture in Arid Areas of China, Northwest A&F University, Xianyang 712100, China.
Plants (Basel). 2024 Jan 4;13(1):140. doi: 10.3390/plants13010140.
Nitrogen is a fundamental component for building amino acids and proteins, playing a crucial role in the growth and development of plants. Leaf nitrogen concentration (LNC) serves as a key indicator for assessing plant growth and development. Monitoring LNC provides insights into the absorption and utilization of nitrogen from the soil, offering valuable information for rational nutrient management. This, in turn, contributes to optimizing nutrient supply, enhancing crop yields, and minimizing adverse environmental impacts. Efficient and non-destructive estimation of crop LNC is of paramount importance for on-field crop management. Spectral technology, with its advantages of repeatability and high-throughput observations, provides a feasible method for obtaining LNC data. This study explores the responsiveness of spectral parameters to soybean LNC at different vertical scales, aiming to refine nitrogen management in soybeans. This research collected hyperspectral reflectance data and LNC data from different leaf layers of soybeans. Three types of spectral parameters, nitrogen-sensitive empirical spectral indices, randomly combined dual-band spectral indices, and "three-edge" parameters, were calculated. Four optimal spectral index selection strategies were constructed based on the correlation coefficients between the spectral parameters and LNC for each leaf layer. These strategies included empirical spectral index combinations (Combination 1), randomly combined dual-band spectral index combinations (Combination 2), "three-edge" parameter combinations (Combination 3), and a mixed combination (Combination 4). Subsequently, these four combinations were used as input variables to build LNC estimation models for soybeans at different vertical scales using partial least squares regression (PLSR), random forest (RF), and a backpropagation neural network (BPNN). The results demonstrated that the correlation coefficients between the LNC and spectral parameters reached the highest values in the upper soybean leaves, with most parameters showing significant correlations with the LNC ( < 0.05). Notably, the reciprocal difference index (VI6) exhibited the highest correlation with the upper-layer LNC at 0.732, with a wavelength combination of 841 nm and 842 nm. In constructing the LNC estimation models for soybeans at different leaf layers, the accuracy of the models gradually improved with the increasing height of the soybean plants. The upper layer exhibited the best estimation performance, with a validation set coefficient of determination (R) that was higher by 9.9% to 16.0% compared to other layers. RF demonstrated the highest accuracy in estimating the upper-layer LNC, with a validation set R2 higher by 6.2% to 8.8% compared to other models. The RMSE was lower by 2.1% to 7.0%, and the MRE was lower by 4.7% to 5.6% compared to other models. Among different input combinations, Combination 4 achieved the highest accuracy, with a validation set R higher by 2.3% to 13.7%. In conclusion, by employing Combination 4 as the input, the RF model achieved the optimal estimation results for the upper-layer LNC, with a validation set R of 0.856, RMSE of 0.551, and MRE of 10.405%. The findings of this study provide technical support for remote sensing monitoring of soybean LNCs at different spatial scales.
氮是构建氨基酸和蛋白质的基本成分,在植物的生长发育中起着至关重要的作用。叶片氮浓度(LNC)是评估植物生长发育的关键指标。监测LNC有助于了解植物从土壤中吸收和利用氮的情况,为合理的养分管理提供有价值的信息。这进而有助于优化养分供应、提高作物产量并减少对环境的不利影响。高效且无损地估算作物LNC对于田间作物管理至关重要。光谱技术具有可重复性和高通量观测的优势,为获取LNC数据提供了一种可行的方法。本研究探讨了光谱参数在不同垂直尺度下对大豆LNC的响应,旨在优化大豆的氮素管理。本研究收集了大豆不同叶层的高光谱反射率数据和LNC数据。计算了三种类型的光谱参数,即氮敏感经验光谱指数、随机组合的双波段光谱指数和“三边”参数。基于各叶层光谱参数与LNC之间的相关系数,构建了四种最优光谱指数选择策略。这些策略包括经验光谱指数组合(组合1)、随机组合的双波段光谱指数组合(组合2)、“三边”参数组合(组合3)和混合组合(组合4)。随后,将这四种组合用作输入变量,使用偏最小二乘回归(PLSR)、随机森林(RF)和反向传播神经网络(BPNN)构建不同垂直尺度下大豆的LNC估算模型。结果表明,LNC与光谱参数之间的相关系数在大豆上部叶片中达到最高值,大多数参数与LNC呈现显著相关性(<0.05)。值得注意的是,倒数差分指数(VI6)与上层LNC的相关性最高,为0.732,波长组合为841 nm和842 nm。在构建不同叶层大豆的LNC估算模型时,模型的准确性随着大豆植株高度的增加而逐渐提高。上层表现出最佳的估算性能,其验证集决定系数(R)比其他层高9.9%至16.0%。RF在估算上层LNC方面表现出最高的准确性,其验证集R2比其他模型高6.2%至8.8%。均方根误差(RMSE)比其他模型低2.1%至7.0%,平均相对误差(MRE)比其他模型低4.7%至5.6%。在不同的输入组合中,组合4的准确性最高,其验证集R比其他组合高2.3%至13.7%。总之,以组合4作为输入,RF模型对上层LNC取得了最优的估算结果,验证集R为0.856,RMSE为0.551,MRE为10.405%。本研究结果为不同空间尺度下大豆LNC的遥感监测提供了技术支持。