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高光谱遥感评估玉米农田生态系统中杂草的竞争力。

Hyperspectral remote sensing to assess weed competitiveness in maize farmland ecosystems.

机构信息

College of Engineering, Northeast Agricultural University, Harbin 150030, China.

College of Engineering, Northeast Agricultural University, Harbin 150030, China; College of Engineering, Anhui Agricultural University, Anhui 230036, China.

出版信息

Sci Total Environ. 2022 Oct 20;844:157071. doi: 10.1016/j.scitotenv.2022.157071. Epub 2022 Jul 4.

Abstract

Weed competition causes serious economic losses to maize production. Timely and accurate assessment of pressure from competition is crucial for ecological weed management. In this work, we apply hyperspectral remote sensing (HRS) technology to conduct a competitive experiment in Harbin, China, in 2021, with 5-leaf maize as the study target. A weed competition assessment method that combines comprehensive competition indices (CCI) and deep learning is proposed. For the comprehensive competition assessment, the relationship between different weed competitive pressures (Levels 1-5) and changes in the structural and physiological information of maize was analyzed. The accumulative/transient competition indices CCI-A and CCI-T were designed for accurate quantification. The results showed that parameters such as plant height, stalk thickness and nutrient elements of maize decreased with increasing competition level. Parameters, such as stomatal conductance and transpiration rate, showed a fluctuating change of increasing and then decreasing with increasing competition level. Compared with the traditional relative competitive intensity (RCI), the standard deviation of CCI is 0.303 and 0.499. The dispersion effect of CCI is better and more suitable for quantifying the competition response. HRS images combined with 3D-CNN model were then applied to reveal the spectral response to different weed competition pressures (Levels 1-5) and to make early predictions of weed competition. The first-order derivative showed that the spectral reflectance exhibited significant differences at 520-525 nm peak, 570-655 nm trough, and near 700 nm red edge. For hyperspectral spatial-spectral features, the 3D-CNN model is proposed for prediction of competing indices CCI. In addition, the VIP method is used to select the characteristic wavelengths. The 3D-CNN model achieves a prediction accuracy of RMSE = 0.106 and 0.152 using 13 feature bands, which can accurately quantify the subtle changes in competition indices. Overall, this study shows that the combination of CCI and deep learning can provide a multivariate and comprehensive assessment of weed competition pressure.

摘要

杂草竞争对玉米生产造成严重的经济损失。及时准确地评估竞争压力对于生态杂草管理至关重要。在这项工作中,我们在中国哈尔滨进行了 2021 年的高光谱遥感(HRS)竞争实验,以 5 叶期玉米为研究对象。提出了一种结合综合竞争指数(CCI)和深度学习的杂草竞争评估方法。对于综合竞争评估,分析了不同杂草竞争压力(1-5 级)与玉米结构和生理信息变化之间的关系。设计了累积/瞬态竞争指数 CCI-A 和 CCI-T 进行准确量化。结果表明,随着竞争水平的增加,玉米的株高、茎粗和营养元素等参数降低。气孔导度和蒸腾速率等参数随着竞争水平的增加呈先增加后减少的波动变化。与传统的相对竞争强度(RCI)相比,CCI 的标准差为 0.303 和 0.499。CCI 的离散效果更好,更适合量化竞争响应。然后将 HRS 图像与 3D-CNN 模型结合,以揭示对不同杂草竞争压力(1-5 级)的光谱响应,并对杂草竞争进行早期预测。一阶导数表明,在 520-525nm 峰值、570-655nm 低谷和近 700nm 红边处,光谱反射率表现出显著差异。对于高光谱空间-光谱特征,提出了 3D-CNN 模型用于预测竞争指数 CCI。此外,使用 VIP 方法选择特征波长。3D-CNN 模型使用 13 个特征波段可实现 RMSE=0.106 和 0.152 的预测精度,可以准确量化竞争指数的细微变化。总的来说,这项研究表明,CCI 和深度学习的结合可以提供杂草竞争压力的多变量和综合评估。

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