Regional mapping of soil parent material by machine learning based on point data

被引:67
|
作者
Lacoste, Marine [1 ,2 ]
Lemercier, Blandine [1 ,2 ,3 ]
Walter, Christian [1 ,2 ,3 ]
机构
[1] INRA, UMR1069, F-35000 Rennes, France
[2] AGROCAMPUS OUEST, UMR1069, F-35000 Rennes, France
[3] Univ Europeenne Bretagne, Rennes, France
关键词
Soil parent material; Digital soil mapping; Regional scale; Boosted classification tree; Pedogenesis factor; CLASSIFICATION-TREE; SPATIAL PREDICTION; REGRESSION; LANDSCAPE; MAP; SUSCEPTIBILITY; VALIDATION; KNOWLEDGE; ACCURACY; EUROPE;
D O I
10.1016/j.geomorph.2011.06.026
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
A machine learning system (MART) has been used to predict soil parent material (SPM) at the regional scale with a 50-m resolution. The use of point-specific soil observations as training data was tested as a replacement for the soil maps introduced in previous studies, with the aim of generating a more even distribution of training data over the study area and reducing information uncertainty. The 27,020-km(2) study area (Brittany, northwestern France) contains mainly metamorphic, igneous and sedimentary substrates. However, superficial deposits (aeolian loam, colluvial and alluvial deposits) very often represent the actual SPM and are typically under-represented in existing geological maps. In order to calibrate the predictive model, a total of 4920 point soil descriptions were used as training data along with 17 environmental predictors (terrain attributes derived from a 50-m DEM, as well as emissions of K, Th and U obtained by means of airborne gamma-ray spectrometry, geological variables at the 1:250,000 scale and land use maps obtained by remote sensing). Model predictions were then compared: i) during SPM model creation to point data not used in model calibration (internal validation), ii) to the entire point dataset (point validation), and iii) to existing detailed soil maps (external validation). The internal, point and external validation accuracy rates were 56%, 81% and 54%, respectively. Aeolian loam was one of the three most closely predicted substrates. Poor prediction results were associated with uncommon materials and areas with high geological complexity, i.e. areas where existing maps used for external validation were also imprecise. The resultant predictive map turned out to be more accurate than existing geological maps and moreover indicated surface deposits whose spatial coverage is consistent with actual knowledge of the area. This method proves quite useful in predicting SPM within areas where conventional mapping techniques might be too costly or lengthy or where soil maps are insufficient for use as training data. In addition, this method allows producing repeatable and interpretable results, whose accuracy can be assessed objectively. (C) 2011 Elsevier B.V. All rights reserved.
引用
收藏
页码:90 / 99
页数:10
相关论文
共 50 条
  • [41] High-resolution broad-scale mapping of soil parent material using object-based image analysis (OBIA) of LiDAR elevation data
    Prince, Antoine
    Franssen, Jan
    Lapierre, Jean-Francois
    Maranger, Roxane
    CATENA, 2020, 188
  • [42] Multisource Heterogeneous Data Fusion Analysis of Regional Digital Construction Based on Machine Learning
    Jiang, Mengmeng
    Wu, Qiong
    Li, Xuetao
    JOURNAL OF SENSORS, 2022, 2022
  • [43] Improving regional climate simulations based on a hybrid data assimilation and machine learning method
    He, Xinlei
    Li, Yanping
    Liu, Shaomin
    Xu, Tongren
    Chen, Fei
    Li, Zhenhua
    Zhang, Zhe
    Liu, Rui
    Song, Lisheng
    Xu, Ziwei
    Peng, Zhixing
    Zheng, Chen
    HYDROLOGY AND EARTH SYSTEM SCIENCES, 2023, 27 (07) : 1583 - 1606
  • [44] Multisource Heterogeneous Data Fusion Analysis of Regional Digital Construction Based on Machine Learning
    Jiang, Mengmeng
    Wu, Qiong
    Li, Xuetao
    Journal of Sensors, 2022, 2022
  • [45] High-Resolution Mapping of Soil Moisture by AMSR2 Data Disaggregation Based on Sentinel-1 and Machine Learning
    Santi, Emanuele
    Baroni, Fabrizio
    Fontanelli, Giacomo
    Palchetti, Enrico
    Paloscia, Simonetta
    Pettinato, Simone
    Pilia, Simone
    Ramat, Giuliano
    Santurri, Leonardo
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2024, 17 : 15077 - 15088
  • [46] Landslide Susceptibility Mapping: Machine and Ensemble Learning Based on Remote Sensing Big Data
    Kalantar, Bahareh
    Ueda, Naonori
    Saeidi, Vahideh
    Ahmadi, Kourosh
    Halin, Alfian Abdul
    Shabani, Farzin
    REMOTE SENSING, 2020, 12 (11)
  • [47] Wildfire Severity Mapping Using Sentinel Satellite Data Based on Machine Learning Approaches
    Sim, Seongmun
    Kim, Woohyeok
    Lee, Jaese
    Kang, Yoojin
    Im, Jungho
    Kwon, Chunguen
    Kim, Sungyong
    KOREAN JOURNAL OF REMOTE SENSING, 2020, 36 (05) : 1109 - 1123
  • [48] Large-scale mapping of soil particle size distribution using legacy data and machine learning-based pedotransfer functions
    Institute for Soil Sciences, HUN-REN Centre for Agricultural Research, Herman Ottó út 15, Budapest
    1022, Hungary
    不详
    1022, Hungary
    不详
    8749, Hungary
    Geoderma, 2025, 454
  • [49] MACHINE LEARNING-BASED APPROACH FOR LANDSLIDE SUSCEPTIBILITY MAPPING USING MULTIMODAL DATA
    Ma, Xianping
    Pun, Man-On
    Liu, Ming
    Wang, Yang
    IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2023, : 5174 - 5177
  • [50] Digital Mapping and Scenario Prediction of Soil Salinity in Coastal Lands Based on Multi-Source Data Combined with Machine Learning Algorithms
    Zhou, Mengge
    Li, Yonghua
    REMOTE SENSING, 2024, 16 (14)