利用机器学习和可见光-近红外光谱技术开发土壤肥力指数

IF 3.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL STUDIES
Land Pub Date : 2023-12-12 DOI:10.3390/land12122155
Xiaolin Jia, Yi Fang, Bifeng Hu, Baobao Yu, Yin Zhou
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引用次数: 0

摘要

准确评估土壤肥力对于监测环境动态、提高农业生产力以及实现可持续土地管理和利用至关重要。土壤固有的复杂性和时空异质性给土壤肥力评估带来了巨大挑战。因此,本研究致力于开发一种快速、经济、精确的方法,通过应用可见光-近红外光谱(VNIR)来评估土壤肥力。为此,我们利用土地利用和覆盖区框架调查(LUCAS)数据集,并采用了多种预测模型,包括偏最小二乘回归、支持向量机(SVM)、随机森林和卷积神经网络,来估算各种土壤特性和整体土壤肥力。结果表明,SVM 模型的预测精度最高,尤其是对粘土含量(决定系数 (R2) = 0.79,性能与四分位数间范围之比 (RPIQ) = 3.04)、pH 值(R2 = 0.84,RPIQ = 4.54)、全氮(N)(R2 = 0.80,RPIQ = 2.40)和阳离子交换容量(CEC)(R2 = 0.83,RPIQ = 3.16)的预测。在因子分析的基础上开发了土壤肥力指数(SFI),综合了九种基本土壤特性:粘土含量、粉土含量、含沙量、pH 值、碳酸盐含量、氮、可溶性磷、可溶性钾和阳离子交换容量。我们比较了用于估算 SFI 的直接预测模型和间接预测模型,发现这两种模型都具有很高的准确性(R2 平均值 = 0.80,RPIQ 平均值 = 2.21)。此外,SFI 被分为五个等级,为精准农业提供了启示。卡帕系数为 0.63,表明近红外光谱和化学分析的 SFI 评估结果相对一致。这项研究为实时监测土壤肥力以优化农业实践提供了理论基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Soil Fertility Index Using Machine Learning and Visible-Near-Infrared Spectroscopy
An accurate assessment of soil fertility is crucial for monitoring environmental dynamics, improving agricultural productivity, and achieving sustainable land management and utilization. The inherent complexity and spatiotemporal heterogeneity of soils result in significant challenges in soil fertility assessment. Therefore, this study focused on developing a rapid, economical, and precise approach to evaluate soil fertility through the application of visible-near-infrared spectroscopy (VNIR). To achieve this, we utilized the Land Use and Cover Area Frame Survey (LUCAS) dataset and employed a variety of prediction models, including partial least squares regression, support vector machines (SVMs), random forest, and convolutional neural networks, to estimate various soil properties and overall soil fertility. The results showed that the SVM model had the highest prediction accuracy, particularly for clay content (coefficient of determination (R2) = 0.79, ratio of performance to interquartile range (RPIQ) = 3.04), pH (R2 = 0.84, RPIQ = 4.54), total nitrogen (N) (R2 = 0.80, RPIQ = 2.40), and cation exchange capacity (CEC) (R2 = 0.83, RPIQ = 3.16). A soil fertility index (SFI) was developed based on factor analysis, integrating nine essential soil properties: clay content, silt content, sand content, pH, carbonate content, N, soluble phosphorus, soluble potassium, and CEC. We compared direct and indirect prediction models for estimating SFI and found that both models showed high accuracy (mean value of R2 = 0.80, mean value of RPIQ = 2.21). Additionally, SFI was classified into five classes to provide insights for precision agriculture. The kappa coefficient was 0.63, which indicated that the SFI evaluation results between VNIR and chemical analysis were relatively consistent. This study provides a theoretical foundation of real-time soil fertility monitoring for the optimization of agricultural practices.
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来源期刊
Land
Land ENVIRONMENTAL STUDIES-Nature and Landscape Conservation
CiteScore
4.90
自引率
23.10%
发文量
1927
期刊介绍: Land is an international and cross-disciplinary, peer-reviewed, open access journal of land system science, landscape, soil–sediment–water systems, urban study, land–climate interactions, water–energy–land–food (WELF) nexus, biodiversity research and health nexus, land modelling and data processing, ecosystem services, and multifunctionality and sustainability etc., published monthly online by MDPI. The International Association for Landscape Ecology (IALE), European Land-use Institute (ELI), and Landscape Institute (LI) are affiliated with Land, and their members receive a discount on the article processing charge.
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