Hyperspectral reflectance and machine learning for multi-site monitoring of cotton growth

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-13 DOI:10.1016/j.atech.2024.100536
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Abstract

Hyperspectral measurements can help with rapid decision-making and collecting data across multiple locations. However, there are multiple data processing methods (Savisky-Golay [SG], first derivative [FD], and normalization) and analyses (partial least squares regression [PLS], weighted k-nearest neighbor [KKNN], support vector machine [SVM], and random forest [RF]) that can be used to determine the best relationship between physical measurements and hyperspectral data. In the current study, FD was the best method for data processing and SVM was the best model for predicting average cotton (Gossypium spp. Malvaceae) height and nodes. However, the combination of FD and RF were best at predicting cotton leaf area index, canopy cover, and chlorophyll content across the growing season. Additionally, results from models developed by both SVM and RF were closely related to pseudo-CHIME satellite wavebands, where in-situ hyperspectral data were matched to the spectral resolutions of a future hyperspectral satellite. The information and results presented will aid producers and other members of the cotton industry to make rapid and meaningful decisions that could result in greater yield and sustainable intensification.

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高光谱反射和机器学习用于棉花生长的多点监测
高光谱测量有助于快速决策和收集多个地点的数据。然而,有多种数据处理方法(萨维斯基-戈莱[SG]、一元导数[FD]和归一化)和分析方法(偏最小二乘回归[PLS]、加权 k 近邻[KKNN]、支持向量机[SVM]和随机森林[RF])可用于确定物理测量和高光谱数据之间的最佳关系。在目前的研究中,FD 是数据处理的最佳方法,SVM 是预测棉花(棉属)平均高度和节数的最佳模型。然而,FD 和 RF 组合在预测棉花整个生长季节的叶面积指数、冠层覆盖率和叶绿素含量方面效果最佳。此外,SVM 和 RF 模型的结果与伪 CHIME 卫星波段密切相关,其中现场高光谱数据与未来高光谱卫星的光谱分辨率相匹配。所提供的信息和结果将帮助生产者和棉花产业的其他成员迅速做出有意义的决策,从而提高产量和实现可持续集约化。
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