Digital Mapping of Soil Classes Using Ensemble of Models in Isfahan Region, Iran

被引:39
|
作者
Taghizadeh-Mehrjardi, Ruhollah [1 ,2 ]
Minasny, Budiman [3 ]
Toomanian, Norair [4 ]
Zeraatpisheh, Mojtaba [5 ,6 ]
Amirian-Chakan, Alireza [7 ]
Triantafilis, John [8 ]
机构
[1] Eberhard Karls Univ Tubingen, Inst Geog, Soil Sci & Geomorphol, D-72070 Tubingen, Germany
[2] Ardakan Univ, Fac Agr & Nat Resources, Ardakan 8951656767, Iran
[3] Univ Sydney, Sch Life & Environm Sci, Sydney, NSW 2006, Australia
[4] AREEO, Soil & Water Res Dept, Isfahan Agr & Nat Resources Res & Educ Ctr, Esfahan 81785199, Iran
[5] Henan Univ, Coll Environm & Planning, Key Lab Geospatial Technol Middle & Lower Yellow, Kaifeng 475004, Peoples R China
[6] Agr Sci & Nat Resources Univ Khuzestan, Dept Soil Sci, Ahvaz 6341773637, Iran
[7] Lorestan Univ, Dept Soil Sci, Khorramabad 6815144316, Iran
[8] Univ New South Wales, Fac Sci, Sch Biol Earth & Environm Sci, Soil Sci Cent, Sydney, NSW 2052, Australia
关键词
spatial modeling; data mining; model averaging; soil classification; LOGISTIC-REGRESSION; ECOSYSTEM SERVICES; BAYESIAN NETWORKS; MAPS; CLASSIFICATION; PREDICTION; ARIDISOLS; TEXTURE;
D O I
10.3390/soilsystems3020037
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
Digital soil maps can be used to depict the ability of soil to fulfill certain functions. Digital maps offer reliable information that can be used in spatial planning programs. Several broad types of data mining approaches through Digital Soil Mapping (DSM) have been tested. The usual approach is to select a model that produces the best validation statistics. However, instead of choosing the best model, it is possible to combine all models realizing their strengths and weaknesses. We applied seven different techniques for the prediction of soil classes based on 194 sites located in Isfahan region. The mapping exercise aims to produce a soil class map that can be used for better understanding and management of soil resources. The models used in this study include Multinomial Logistic Regression (MnLR), Artificial Neural Networks (ANN), Support Vector Machine (SVM), Decision Tree (DT), Random Forest (RF), Bayesian Networks (BN), and Sparse Multinomial Logistic Regression (SMnLR). Two ensemble models based on majority votes (Ensemble.1) and MnLR (Ensemble.2) were implemented for integrating the optimal aspects of the individual techniques. The overall accuracy (OA), Cohen's kappa coefficient index (kappa) and the area under the curve (AUC) were calculated based on 10-fold-cross validation with 100 repeats at four soil taxonomic levels. The Ensemble.2 model was able to achieve larger OA, kappa coefficient and AUC compared to the best performing individual model (i.e., RF). Results of the ensemble model showed a decreasing trend in OA from Order (0.90) to Subgroup (0.53). This was also the case for the kappa statistic, which was the largest for the Order (0.66) and smallest for the Subgroup (0.43). Same decrease was observed for AUC from Order (0.81) to Subgroup (0.67). The improvement in kappa was substantial (43 to 60%) at all soil taxonomic levels, except the Order level. We conclude that the application of the ensemble model using the MnLR was optimal, as it provided a highly accurate prediction for all soil taxonomic levels over and above the individual models. It also used information from all models, and thus this method can be recommended for improved soil class modelling. Soil maps created by this DSM approach showed soils that are prone to degradation and need to be carefully managed and conserved to avoid further land degradation.
引用
收藏
页码:1 / 21
页数:21
相关论文
共 50 条
  • [11] Digital mapping of soil organic carbon using ensemble learning model in Mollisols of Hyrcanian forests, northern Iran
    Tajik, Samaneh
    Ayoubi, Shamsollah
    Zeraatpisheh, Mojtaba
    GEODERMA REGIONAL, 2020, 20
  • [12] Digital mapping of soil texture classes for efficient land management in the Piedmont plain of Iran
    Keshavarzi, Ali
    Sanchez del Arbol, Miguel Angel
    Kaya, Fuat
    Gyasi-Agyei, Yeboah
    Rodrigo-Comino, Jesus
    SOIL USE AND MANAGEMENT, 2022, 38 (04) : 1705 - 1735
  • [13] Assessment of different digital soil mapping methods for prediction of soil classes in the Shahrekord plain, Central Iran
    Esfandiarpour-Boroujeni, I
    Shahini-Shamsabadi, M.
    Shirani, H.
    Mosleh, Z.
    Bagheri-Bodaghabadi, M.
    Salehi, M. H.
    CATENA, 2020, 193
  • [14] Using an ensemble learning approach in digital soil mapping of soil pH for the Thompson-Okanagan region of British Columbia
    Zhang, Jin
    Schmidt, Margaret G.
    Heung, Brandon
    Bulmer, Chuck E.
    Knudby, Anders
    CANADIAN JOURNAL OF SOIL SCIENCE, 2022,
  • [15] Digital mapping of soil classes using spatial extrapolation with imbalanced data
    Neyestani, Mehrnaz
    Sarmadian, Fereydoon
    Jafari, Azam
    Keshavarzi, Ali
    Sharififar, Amin
    GEODERMA REGIONAL, 2021, 26
  • [16] Digital mapping of cation exchange capacity using genetic programming and soil depth functions in Baneh region, Iran
    Taghizadeh-Mehrjardi, Ruhollah
    ARCHIVES OF AGRONOMY AND SOIL SCIENCE, 2016, 62 (01) : 109 - 126
  • [17] Digital mapping of soil properties using multiple machine learning in a semi-arid region, central Iran
    Zeraatpisheh, Mojtaba
    Ayoubi, Shamsollah
    Jafari, Azam
    Tajik, Samaneh
    Finke, Peter
    GEODERMA, 2019, 338 : 445 - 452
  • [18] Digital mapping of soil organic carbon density in China using an ensemble model
    Sun, Yi
    Ma, Jin
    Zhao, Wenhao
    Qu, Yajing
    Gou, Zilun
    Chen, Haiyan
    Tian, Yuxin
    Wu, Fengchang
    ENVIRONMENTAL RESEARCH, 2023, 231
  • [19] Digital mapping of soil texture classes using Random Forest classification algorithm
    Dharumarajan, Subramanian
    Hegde, Rajendra
    SOIL USE AND MANAGEMENT, 2022, 38 (01) : 135 - 149
  • [20] Digital mapping of soil organic carbon at multiple depths using different data mining techniques in Baneh region, Iran
    Taghizadeh-Mehrjardi, R.
    Nabiollahi, K.
    Kerry, R.
    GEODERMA, 2016, 266 : 98 - 110