机器学习模型在不同土壤条件下预测土壤有机碳含量和容重的适用性

IF 1.4 Q4 SOIL SCIENCE
Fatemeh Hateffard, Gábor Szatmári, T. Novák
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引用次数: 1

摘要

对土壤性质的空间分布进行可靠的概述是土壤政策和决策的直接方法。土壤有机碳(SOC)含量、有机碳储量和容重(BD)直接影响土壤质量和肥力。因此,需要对这些关键的土壤参数进行准确的评估。为了做到这一点,我们使用机器学习算法(MLAs),包括多元线性回归(MLR)、随机森林(RF)、人工神经网络(ANN)和支持向量机(SVM),并在环境协变量的帮助下预测土壤有机碳含量、BD和SOC储量。这项研究是在两个不同的地区进行的,Látókép和Westsik(东匈牙利),都是实验研究领域,但从生理地理的角度来看不同。采用条件拉丁超立方体采样策略,在每个研究区收集30个表层土壤(0-10 cm)样品。基于土壤形成因子的表示,从数字高程模型(DEM)和卫星图像中提取环境协变量。我们通过将数据集随机分成训练(三分之二)和测试(三分之一)来验证结果,并计算均方根误差和r2。结果表明,RF对两种土壤性质的空间预测精度最高,r2约为80%。该研究强调了地形属性(包括平面和剖面曲率、高程和山谷深度)和卫星图像NDVI在呈现两个不同地区选定土壤属性的空间分布方面的重要性。比较这些方法有助于确定不同地理条件和不同尺度异质性下最精确的地图,可用于土壤质量的精确管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applicability of machine learning models for predicting soil organic carbon content and bulk density under different soil conditions
A reliable overview of the spatial distribution of soil properties is a straightforward approach in soil policies and decision-making. Soil organic carbon (SOC) content, SOC stock and bulk density (BD) directly affect soil quality and fertility. Therefore, an accurate assessment of these crucial soil parameters is required. To do this, we used machine learning algorithms (MLAs) including, multiple linear regression (MLR), random forest (RF), arti fi cial neural network (ANN), and support vector machine (SVM) with the help of environmental covariates to predict SOC content, BD, and SOC stock. The study was conducted in two different areas, Látókép and Westsik (East Hungary), both experimental research fi elds but different from physio geographic points of view. Thirty topsoils (0–10 cm) samples were collected for each study area using conditioned Latin Hypercube Sampling strategy. Environmental covariates were extracted from a digital elevation model (DEM) and satellite images based on the representation of soil forming factors. We validated the results by randomly splitting the dataset into a train (two-third) and test (one-third) and calculated the root mean square error and R 2 . Our results showed that RF provided the most accurate spatial prediction with R 2 of about 80% for each soil property in both study areas. This study highlighted the importance of terrain attributes (including plan and pro fi le curvature, elevation and valley depth) and NDVI derived from satellite images in presenting a spatial distribution of selected soil properties in two different areas. We conclude that comparing these methods can help to determine the most accurate maps under diverse geographical conditions and heterogeneities at different scales, which can be used in precision soil quality management.
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来源期刊
Soil Science Annual
Soil Science Annual SOIL SCIENCE-
CiteScore
2.50
自引率
6.70%
发文量
0
审稿时长
29 weeks
期刊介绍: Soil Science Annual journal is a continuation of the “Roczniki Gleboznawcze” – the journal of the Polish Society of Soil Science first published in 1950. Soil Science Annual is a quarterly devoted to a broad spectrum of issues relating to the soil environment. From 2012, the journal is published in the open access system by the Sciendo (De Gruyter).
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