基于土壤样品近红外光谱响应的机器学习模型预测土壤性质

IF 1.4 Q4 SOIL SCIENCE Soil Science Annual Pub Date : 2019-12-01 DOI:10.2478/ssa-2019-0027
S. Gruszczyński
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引用次数: 8

摘要

在实验室条件下利用土壤样品的光谱响应是减少土壤分析时间和成本的基本方法之一。这种方法的问题在于确定土壤光谱响应的形状与土壤物理或化学性质之间的关系。欧盟ESDAC研究中心收集的LUCAS土壤数据库是分析土壤性质与近红外(NIR)光谱响应关系的良好材料。本文所描述的模型就是基于这些数据。采用逐步回归模型,以性质、性质的平方和性质的乘积为解释变量,分析了土壤性质配置对不同近红外光谱吸收水平的影响。分析全光谱范围内土壤性质值与吸光度值和吸光度导数的偏相关性,评价吸光度变换(吸光度向量的一阶导数)对土壤性质值与吸光度值关系显著性变化的影响。利用多层感知器(multilayer Perceptron, MLP)模型估计土壤吸光度与单一土壤特征之间的关系。基于原始值和一、二次吸光度导数的选择与转换算法进行了土壤属性建模,并对模型在数字土壤图构建中的适用性进行了评价。吸光度受pH值、质地、碳酸盐含量、有机碳、氮和CEC等有限的土壤特征影响;在本研究中,磷和钾含量的影响可以忽略不计。近红外方法可以适用于土壤变化有限的条件,特别是在专题土壤图的开发中。
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Prediction of soil properties with machine learning models based on the spectral response of soil samples in the near infrared range
Abstract One of the basic methods for soil analysis time and cost reduction is using soil sample spectral response in laboratory conditions. The problem with this method lies in determining the relationship between the shape of the soil spectral response and soil physical or chemical properties. The LUCAS soil database collected by the EU’s ESDAC research centre is good material to analyse the relationship between the soil properties and the near infrared (NIR) spectral response. The modelling described in the paper is based on these data. The analysis of the impact of soil properties configuration on absorbance levels in various NIR spectrum ranges was conducted using the stepwise regression models with the properties, properties squared and products of properties being explanatory variables. The analysis of partial correlation of soil properties values with absorbance values and absorbance derivative in the entire spectral range was conducted in order to evaluate the impact of the absorbance transformation (the first derivative of absorbance vector) on the change of significance of relationship with properties values. The Multi Layer Perceptron (MLP) models were used to estimate the absorbance relationship with single soil features. Soil property modelling based on the selection and transformation algorithm of raw values and first and second absorbance derivatives was also conducted along with the suitability evaluation of such models in building digital soil maps. The absorbance is affected by a limited number of tested soil features like pH, texture, content of carbonates, SOC, N, and CEC; P and K contents have, in case of this research, a negligible impact. The NIR methodology can be suitable in conditions of limited soil variation and particularly in development of thematic soil maps.
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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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