Enhancing the accuracy of digital soil mapping using the surface and subsurface soil characteristics as continuous diagnostic layers

Author:

Osat Maryam1,Heidari Ahmad2,Fatehi Shahrokh3

Affiliation:

1. Horticulture Crop Research Department, Kurdistan agricultural and natural resources research and education center, AREEO, Sanandaj, Iran

2. University of Tehran

3. Soil and Water Research Department, Kermanshah agricultural and natural resources research and education center, AREEO, Kermanshah, Iran.

Abstract

Abstract Digital soil mapping relies on relating soils to a particular set of covariates, which capture inherent soil spatial variation. In digital mapping of soil classes, the most commonly used covariates are topographic attributes, RS attributes, and maps, including geology, geomorphology, and land use, in contrast, the subsurface soil characteristics are usually ignored. Therefore, we investigate the possibility of using soil diagnostic characteristics as covariates in a mountainous landscape as the main aim of this study. Conventional covariates (CC) and a combination of soil covariates with conventional covariates (SCC) were used as covariates, and random forest (RF), Multinomial Logistic Regression (LR), and C5.0 Decision Trees (C5) were used as different machine learning algorithms in digital mapping of soil family classes. Based on the results, the RF model with the SCC dataset had the best performance (KC = 0.85, OA = 90). In all three models, adding soil covariates to the sets of covariates increased the model performance. Soil covariates, slope, and aspect, were selected as the principal auxiliary variables in describing the distribution of soil family classes.

Publisher

Research Square Platform LLC

Reference51 articles.

1. Mapping the soils of an Argentine Pampas region using structural equation modelling;Angelini ME;Geoderma.,2016

2. Digital mapping of soil classes in Algeria- A comparison of methods;Assami T;Geoderma Regional,2019

3. Soil Classification and mapping in the Alps: The current state and future challenges;Baruck J;Geoderma.,2016

4. Comparison of soil maps with different scales and details belonging to the Same area;Basayigit L;Soil & water res,2008

5. Beulah, R., Punithavalli, 2019. Performance analysis of decision tree algorithm C5.0 using heavy metal contamination in agricultural soil at Coimbatore. International Journal of Scientific & engineering Research, 10.

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