利用机器学习算法从盐溶性离子预测土壤盐碱度和受盐影响的土壤类别

IF 2.9 Q2 SOIL SCIENCE
Demis Andrade Foronda, G. Colinet
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引用次数: 1

摘要

受盐影响的土壤与盐度(可溶性盐含量高)和/或碱度(钠过量)有关,这是农业土地退化的主要原因。本研究旨在评估三种机器学习(ML)算法在从可溶性盐离子预测土壤可交换钠百分比(ESP)、电导率(ECe)和受盐影响的土壤类别方面的性能。评估的ML模型为偏最小二乘(PLS)、支持向量机(SVM)和随机森林(RF)。从科恰班巴高谷(玻利维亚)采集了土壤样本。解释变量为主要可溶性离子(Na+、K+、Ca2+、Mg2+、HCO3−、Cl−、CO32−、SO42−)。要解释的变量包括土壤ECe和ESP,以及通过美国盐度实验室标准分类的分类变量。根据模型验证,SVM和RF回归在估计土壤ECe方面表现最好,RF模型在估计土壤ESP方面表现最好。RF算法在预测受盐影响的土壤类别方面表现更好。可溶性Na+是所有预测中最相关的变量,其次是Ca2+、Mg2+、Cl−和HCO3−。RF和SVM模型可用于根据可溶性离子预测土壤ECe和ESP,以及受盐影响的土壤类别。额外的解释特征和土壤样本可能会提高ML模型的性能。所获得的模型可能有助于研究区域受盐影响土壤的监测和管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Soil Salinity/Sodicity and Salt-Affected Soil Classes from Salt Soluble Ions Using Machine Learning Algorithms
Salt-affected soils are related to salinity (high content of soluble salts) and/or sodicity (excess of sodium), which are major leading causes of agricultural land degradation. This study aimed to evaluate the performances of three machine learning (ML) algorithms in predicting the soil exchangeable sodium percentage (ESP), electrical conductivity (ECe), and salt-affected soil classes, from soluble salt ions. The assessed ML models were Partial Least-Squares (PLS), Support Vector Machines (SVM), and Random Forests (RF). Soil samples were collected from the High Valley of Cochabamba (Bolivia). The explanatory variables were the major soluble ions (Na+, K+, Ca2+, Mg2+, HCO3−, Cl−, CO32−, SO42−). The variables to be explained comprised soil ECe and ESP, and a categorical variable classified through the US Salinity Lab criteria. According to the model validation, the SVM and RF regressions performed the best for estimating the soil ECe, as well as the RF model for the soil ESP. The RF algorithm was superior for predicting the salt-affected soil categories. Soluble Na+ was the most relevant variable for all the predictions, followed by Ca2+, Mg2+, Cl−, and HCO3−. The RF and, alternatively, the SVM models can be used to predict soil ECe and ESP, as well as the salt-affected soil classes, from soluble ions. Additional explanatory features and soil samples might improve the ML models’ performance. The obtained models may contribute to the monitoring and management of salt-affected soils in the study area.
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来源期刊
Soil Systems
Soil Systems Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
5.30
自引率
5.70%
发文量
80
审稿时长
11 weeks
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