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基于归一化植被指数数据和自动化机器学习预测葡萄含糖量与品质属性。

Predicting Grape Sugar Content under Quality Attributes Using Normalized Difference Vegetation Index Data and Automated Machine Learning.

机构信息

Laboratory of Agricultural Machinery, Department of Natural Resources Management and Agricultural Engineering, Agricultural University of Athens, 75 Iera Odos Str., 11855 Athens, Greece.

出版信息

Sensors (Basel). 2022 Apr 23;22(9):3249. doi: 10.3390/s22093249.

Abstract

Wine grapes need frequent monitoring to achieve high yields and quality. Non-destructive methods, such as proximal and remote sensing, are commonly used to estimate crop yield and quality characteristics, and spectral vegetation indices (VIs) are often used to present site-specific information. Analysis of laboratory samples is the most popular method for determining the quality characteristics of grapes, although it is time-consuming and expensive. In recent years, several machine learning-based methods have been developed to predict crop quality. Although these techniques require the extensive involvement of experts, automated machine learning (AutoML) offers the possibility to improve this task, saving time and resources. In this paper, we propose an innovative approach for robust prediction of grape quality attributes by combining open-source AutoML techniques and Normalized Difference Vegetation Index (NDVI) data for vineyards obtained from four different platforms-two proximal vehicle-mounted canopy reflectance sensors, orthomosaics from UAV images and Sentinel-2 remote sensing imagery-during the 2019 and 2020 growing seasons. We investigated AutoML, extending our earlier work on manually fine-tuned machine learning methods. Results of the two approaches using Ordinary Least Square (OLS), Theil-Sen and Huber regression models and tree-based methods were compared. Support Vector Machines (SVMs) and Automatic Relevance Determination (ARD) were included in the analysis and different combinations of sensors and data collected over two growing seasons were investigated. Results showed promising performance of Unmanned Aerial Vehicle (UAV) and Spectrosense+ GPS data in predicting grape sugars, especially in mid to late season with full canopy growth. Regression models with both manually fine-tuned ML (R² = 0.61) and AutoML (R² = 0.65) provided similar results, with the latter slightly improved for both 2019 and 2020. When combining multiple sensors and growth stages per year, the coefficient of determination R² improved even more averaging 0.66 for the best-fitting regressions. Also, when considering combinations of sensors and growth stages across both cropping seasons, UAV and Spectrosense+ GPS, as well as Véraison and Flowering, each had the highest average R² values. These performances are consistent with previous work on machine learning algorithms that were manually fine-tuned. These results suggest that AutoML has greater long-term performance potential. To increase the efficiency of crop quality prediction, a balance must be struck between manual expert work and AutoML.

摘要

酿酒葡萄需要频繁监测以实现高产和高质量。非破坏性方法,如近程和遥感,通常用于估计作物产量和质量特性,光谱植被指数(VIs)常用于呈现特定地点的信息。实验室样本分析是确定葡萄质量特性最常用的方法,尽管它耗时且昂贵。近年来,已经开发了几种基于机器学习的方法来预测作物质量。尽管这些技术需要专家的广泛参与,但自动化机器学习(AutoML)提供了改进此任务的可能性,节省了时间和资源。在本文中,我们提出了一种创新方法,通过结合开源 AutoML 技术和从四个不同平台(两辆近程车载冠层反射率传感器、无人机图像正射镶嵌图和 Sentinel-2 遥感图像)获得的归一化差异植被指数(NDVI)数据,稳健地预测葡萄质量属性,这些数据是在 2019 年和 2020 年生长季节获得的。我们研究了 AutoML,扩展了我们之前关于手动微调机器学习方法的工作。使用普通最小二乘法(OLS)、Theil-Sen 和 Huber 回归模型和基于树的方法比较了这两种方法的结果。支持向量机(SVMs)和自动相关性确定(ARD)也包括在分析中,并研究了两个生长季节采集的不同传感器和数据的组合。结果表明,在预测葡萄糖方面,无人机和 Spectrosense+GPS 数据具有很好的性能,尤其是在中到后期,冠层完全生长时。手动微调 ML(R²=0.61)和 AutoML(R²=0.65)的回归模型都提供了类似的结果,后者在 2019 年和 2020 年略有改进。当结合每年多个传感器和生长阶段时,甚至可以提高决定系数 R²,最佳拟合回归的平均值为 0.66。此外,当考虑整个两个种植季节的传感器和生长阶段的组合时,无人机和 Spectrosense+GPS 以及 Véraison 和 Flowering 各自具有最高的平均 R² 值。这些性能与之前关于手动微调机器学习算法的工作一致。这些结果表明 AutoML 具有更大的长期性能潜力。为了提高作物质量预测的效率,必须在手动专家工作和 AutoML 之间取得平衡。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7ff2/9102316/b0a1f9ea422b/sensors-22-03249-g001.jpg

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