Predicting soil carbon stock in remote areas of the Central Amazon region using machine learning techniques

被引:4
|
作者
Ferreira, Ana Carolina S.
Pinheiro, Erika Flavia Machado [1 ]
Costa, Elias M.
Ceddia, Marcos Bacis [2 ,3 ]
机构
[1] Fed Rural Univ Rio Janeiro, Lab Water & Soils Agroecosystem, BR 465, Seropedica, Brazil
[2] Fed Rural Univ Rio Janeiro, Inst Agron, Dept Agro Technol & Sustainabil DATS, Lab Soil Organ Matter & Waste Treatment,Dynam Soil, Seropedica, Brazil
[3] Fed Rural Univ Rio Janeiro, Inst Agron, Soil Phys & Digital Soil Mapping, Dept Agro Technol & Sustainabil,DATS,Lab Water & S, BR 465, Seropedica, Brazil
关键词
Inceptisols; Multiple soil classes; Reference area; Gower index; Poorly accessible areas; ORGANIC-CARBON; SAMPLE INFORMATION; MATTER; SCALE;
D O I
10.1016/j.geodrs.2023.e00614
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
The use of covariates derived from remote sensors in combination with machine learning (ML) algorithms has been shown to be promising for mapping soil types and their attributes in large areas. This study explores the feasibility of using the existing knowledge of soil organic carbon stock (SOCS) derived from a relatively low density and irregular dataset to map a large area of 13.440 km2 located in a remote region under the Amazon Rainforest. The objectives of this study were to evaluate: 1-two different types of sampling approach (Reference Area -RA and Total Area-TA) to predict SOCS at depths of 30 and 100 cm; 2-two categories of covariate se-lection; 3-the transferability and the performance of three ML algorithms (regression tree-RT, random forest (RF) and support vector machine (SVM). The dataset consisted of 120 observations of SOCS30, SOCS100 and 21 covariates. Using the RA sampling approach, 96 data located within the RA were used for training the ML models and 24 data (outside the RA) for validation. In the TA approach, the performance of the total area model was evaluated using a 5-fold cross-validation procedure. The results show that the use of previous covariates selec-tion, combined with the RA approach, allows to develop more accurate models. The models developed to predict SOCS100 presented both higher accuracy and transferability than those developed to predict SOCS30. The SOCS30 map was only generated to Urucu Block and the best performance was achieved using RT algorithm (R2 = 0.32). The RF algorithm generated the most accurate maps of SOCS100 for the Urucu and Juru ' a Blocks (R2 = 0.70 and R2 = 0.51, respectively).
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Predicting Stock Price Bubbles in China Using Machine Learning
    Wang, Yunxi
    Yampaka, Tongjai
    International Journal of Advanced Computer Science and Applications, 2024, 15 (11): : 415 - 425
  • [32] Predicting and Mapping of Soil Organic Carbon Using Machine Learning Algorithms in Northern Iran
    Emadi, Mostafa
    Taghizadeh-Mehrjardi, Ruhollah
    Cherati, Ali
    Danesh, Majid
    Mosavi, Amir
    Scholten, Thomas
    REMOTE SENSING, 2020, 12 (14)
  • [33] Predicting performance of swimmers using machine learning techniques
    Guerra-Salcedo, Cesar M.
    Janek, Libor
    Perez-Ortega, Joaquin
    Pazos-Rangel, Rodolfo A.
    WMSCI 2005: 9th World Multi-Conference on Systemics, Cybernetics and Informatics, Vol 3, 2005, : 146 - 148
  • [34] Predicting Blood Donors Using Machine Learning Techniques
    Kauten, Christian
    Gupta, Ashish
    Qin, Xiao
    Richey, Glenn
    INFORMATION SYSTEMS FRONTIERS, 2022, 24 (05) : 1547 - 1562
  • [35] Predicting Driver Destination using Machine Learning Techniques
    Manasseh, Christian
    Sengupta, Raja
    2013 16TH INTERNATIONAL IEEE CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS - (ITSC), 2013, : 142 - 147
  • [36] Predicting bank insolvencies using machine learning techniques
    Petropoulos, Anastasios
    Siakoulis, Vasilis
    Stavroulakis, Evangelos
    Vlachogiannakis, Nikolaos E.
    INTERNATIONAL JOURNAL OF FORECASTING, 2020, 36 (03) : 1092 - 1113
  • [37] Predicting Employee Attrition Using Machine Learning Techniques
    Fallucchi, Francesca
    Coladangelo, Marco
    Giuliano, Romeo
    De Luca, Ernesto William
    COMPUTERS, 2020, 9 (04) : 1 - 17
  • [38] Predicting Blood Donors Using Machine Learning Techniques
    Christian Kauten
    Ashish Gupta
    Xiao Qin
    Glenn Richey
    Information Systems Frontiers, 2022, 24 : 1547 - 1562
  • [39] Predicting Students' Emotions Using Machine Learning Techniques
    Altrabsheh, Nabeela
    Cocea, Mihaela
    Fallahkhair, Sanaz
    ARTIFICIAL INTELLIGENCE IN EDUCATION, AIED 2015, 2015, 9112 : 537 - 540
  • [40] Predicting Software Anomalies using Machine Learning Techniques
    Alonso, Javier
    Belanche, Lluis
    Avresky, Dimiter R.
    2011 10TH IEEE INTERNATIONAL SYMPOSIUM ON NETWORK COMPUTING AND APPLICATIONS (NCA), 2011,