预测刺阿干树作物产量和叶面积指数的机器学习方法:从多源遥感数据中获取综合干旱指数的方法

Mohamed Mouafik, Mounir Fouad, Ahmed El Aboudi
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引用次数: 1

摘要

在这项研究中,我们探索了随机森林算法在降尺度 CHIRPS(气候灾害小组红外降水量与站点数据)降水量数据中预测阿尔加内林木特征的功效。非参数回归将 CHIRPS 原始数据与环境变量整合在一起,经过残差校正后,与地面雨量计观测数据保持一致的准确性得到了提高。此外,我们还探索了一系列机器学习算法的性能,包括 XGBoost、GBDT、RF、DT、SVR、LR 和 ANN,这些算法利用从多传感器卫星获得的基于条件指数的干旱指数(如 PCI、VCI、TCI 和 ETCI)来预测阿甘树的叶面积指数(LAI)和作物产量。结果表明,在使用干旱指数作为输入的情况下,XGBoost 在估算这些参数方面具有优势。基于 XGBoost 的作物产量 R2 值较高,达到 0.94,RMSE 值较低,为 6.25 千克/公顷。同样,基于 XGBoost 的 LAI 模型显示出最高的准确度,R2 值为 0.62,有效差异均方根值为 0.67。XGBoost 模型在预测刺芹的作物产量和 LAI 估算方面表现出色,其次是 GBDT、RF 和 ANN。此外,该研究还采用了综合干旱指数(CDI)来监测二十年来的农业和气象干旱情况,该指数综合了四个关键参数,即 PCI、VCI、TCI 和 ETCI,并通过与其他干旱指数的比较验证了其准确性。CDI 与 VHI、SPI 和作物产量呈正相关,其中与 VHI 的相关性特别强,且具有统计意义(r = 0.83)。因此,CDI 被推荐为评估和监测阿尔加内林分区干旱的有效方法和指数。研究结果表明,先进的机器学习模型具有提高降水数据分辨率和加强农业干旱监测的潜力,有助于改善土地和水文管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Methods for Predicting Argania spinosa Crop Yield and Leaf Area Index: A Combined Drought Index Approach from Multisource Remote Sensing Data
In this study, we explored the efficacy of random forest algorithms in downscaling CHIRPS (Climate Hazards Group InfraRed Precipitation with Station data) precipitation data to predict Argane stand traits. Nonparametric regression integrated original CHIRPS data with environmental variables, demonstrating enhanced accuracy aligned with ground rain gauge observations after residual correction. Furthermore, we explored the performance of range machine learning algorithms, encompassing XGBoost, GBDT, RF, DT, SVR, LR and ANN, in predicting the Leaf Area Index (LAI) and crop yield of Argane trees using condition index-based drought indices such as PCI, VCI, TCI and ETCI derived from multi-sensor satellites. The results demonstrated the superiority of XGBoost in estimating these parameters, with drought indices used as input. XGBoost-based crop yield achieved a higher R2 value of 0.94 and a lower RMSE of 6.25 kg/ha. Similarly, the XGBoost-based LAI model showed the highest level of accuracy, with an R2 of 0.62 and an RMSE of 0.67. The XGBoost model demonstrated superior performance in predicting the crop yield and LAI estimation of Argania sinosa, followed by GBDT, RF and ANN. Additionally, the study employed the Combined Drought Index (CDI) to monitor agricultural and meteorological drought over two decades, by combining four key parameters, PCI, VCI, TCI and ETCI, validating its accuracy through comparison with other drought indices. CDI exhibited positive correlations with VHI, SPI and crop yield, with a particularly strong and statistically significant correlation observed with VHI (r = 0.83). Therefore, CDI was recommended as an effective method and index for assessing and monitoring drought across Argane forest stands area. The findings demonstrated the potential of advanced machine learning models for improving precipitation data resolution and enhancing agricultural drought monitoring, contributing to better land and hydrological management.
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