Enhancing XGBoost’s accuracy in soil organic matter prediction through feature fusion

IF 1.9 4区 农林科学 Q2 AGRICULTURAL ENGINEERING
Shaofang He, Li Zhou, Hongxia Xie, Siqiao Tan
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Abstract

Soil organic matter (SOM) content serves as a crucial indicator for assessing soil fertility and quality, making accurate and efficient prediction methods paramount. The application of visible near-infrared reflectance (vis–NIR) spectroscopy has been pivotal in predicting SOM content. However, utilizing soil profile data obtained during soil sample collection can provide additional insights into organic matter, suggesting that their separate use may not be optimal. This study aimed to investigate whether the fusion of vis–NIR and soil profile properties could enhance the performance of the extreme gradient boosting (XGBoost) algorithm in predicting SOM content. The sample set was sourced from paddy soils in Changsha and Zhuzhou, China. Three different modeling approaches (XGBoost constructed by LASSO feature of vis–NIR spectroscopy (LF-XGBoost), profile feature (PF-XGBoost), and fusion feature (FF-XGBoost)) were compared and evaluated using randomly split sample sets, fivefold cross-validation (fivefold CV), coefficient of determination (R2), root mean square error (RMSE), and mean absolute error (MAE). Compared to LF-XGBoost and PF-XGBoost, the FF-XGBoost model demonstrated superior prediction capabilities for SOM content, indicating that the fusion feature improved SOM content prediction. In randomly segmented datasets, FF-XGBoost achieved an R2 of 0.897, RMSE of 3.746, and MAE of 2.935, with R2 improvements of 31 and 24%, respectively. In fivefold CV, FF-XGBoost achieved an R2CV of 0.806, RMSECV of 5.136, and MAECV of 1.913, with R2CV improvements of 11 and 51%, respectively. According to Shapley additive explanations model, variations in ‘Color_class’, ‘Profile_level’, and wavelength ‘767’ within the fusion feature had the most significant impact on FF-XGBoost’s output. Compared to other commonly used regression algorithms, FF-XGBoost demonstrated higher prediction accuracy. This study only focused on paddy soils in Changsha and Zhuzhou and employed well-established modeling methods. These results can serve as a catalyst for further research into new feature fusion techniques, advanced modeling methods, and the transferability of findings to other soil landscapes.

Abstract Image

通过特征融合提高 XGBoost 预测土壤有机质的准确性
土壤有机质(SOM)含量是评估土壤肥力和质量的重要指标,因此准确有效的预测方法至关重要。可见近红外反射光谱(vis-NIR)的应用在预测土壤有机质含量方面起到了关键作用。然而,利用土壤样本采集过程中获得的土壤剖面数据可以提供更多有关有机质的信息,这表明单独使用这两种方法可能并不理想。本研究旨在探讨可见近红外光谱与土壤剖面特性的融合是否能提高极梯度提升(XGBoost)算法在预测 SOM 含量方面的性能。样本集来自中国长沙和株洲的水稻土。使用随机拆分样本集、五倍交叉验证(五倍 CV)、判定系数(R2)、均方根误差(RMSE)和平均绝对误差(MAE)对三种不同的建模方法(利用可见近红外光谱的 LASSO 特征构建的 XGBoost(LF-XGBoost)、剖面特征(PF-XGBoost)和融合特征(FF-XGBoost))进行了比较和评估。与 LF-XGBoost 和 PF-XGBoost 相比,FF-XGBoost 模型对 SOM 内容的预测能力更强,这表明融合特征改善了 SOM 内容预测。在随机分割数据集中,FF-XGBoost 的 R2 为 0.897,RMSE 为 3.746,MAE 为 2.935,R2 分别提高了 31% 和 24%。在五倍 CV 中,FF-XGBoost 的 R2CV 为 0.806,RMSECV 为 5.136,MAECV 为 1.913,R2CV 分别提高了 11% 和 51%。根据 Shapley 加性解释模型,融合特征中 "Color_class"、"Profile_level "和波长 "767 "的变化对 FF-XGBoost 的输出影响最大。与其他常用回归算法相比,FF-XGBoost 的预测准确率更高。本研究仅针对长沙和株洲的水稻土,并采用了成熟的建模方法。这些结果将有助于进一步研究新的特征融合技术和先进的建模方法,并将研究结果应用于其他土壤地貌。
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来源期刊
Paddy and Water Environment
Paddy and Water Environment AGRICULTURAL ENGINEERING-AGRONOMY
CiteScore
4.70
自引率
4.50%
发文量
36
审稿时长
2 months
期刊介绍: The aim of Paddy and Water Environment is to advance the science and technology of water and environment related disciplines in paddy-farming. The scope includes the paddy-farming related scientific and technological aspects in agricultural engineering such as irrigation and drainage, soil and water conservation, land and water resources management, irrigation facilities and disaster management, paddy multi-functionality, agricultural policy, regional planning, bioenvironmental systems, and ecological conservation and restoration in paddy farming regions.
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