Characterizing regional soil mineral composition using spectroscopy and geostatistics

被引:30
|
作者
Mulder, V. L. [1 ,2 ]
de Bruin, S. [1 ]
Weyermann, J. [2 ]
Kokaly, R. F. [3 ]
Schaepman, M. E. [1 ,2 ]
机构
[1] Wageningen Univ, Lab Geoinformat Sci & Remote Sensing, NL-6700 AA Wageningen, Netherlands
[2] Univ Zurich, Remote Sensing Labs, CH-8057 Zurich, Switzerland
[3] US Geol Survey, Denver Fed Ctr, Denver, CO 80225 USA
关键词
Fixed Rank Kriging; Digital soil mapping; ASTER; Spectroscopy; Spectral feature comparison; Mineral identification; SPATIAL PREDICTION; USGS TETRACORDER; CARBON; VARIABLES; SCALES; MODEL; FIELD; AREA;
D O I
10.1016/j.rse.2013.08.018
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This work aims at improving the mapping of major mineral variability at regional scale using scale-dependent spatial variability observed in remote sensing data. Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) data and statistical methods were combined with laboratory-based mineral characterization of field samples to create maps of the distributions of clay, mica and carbonate minerals and their abundances. The Material Identification and Characterization Algorithm (MICA) was used to identify the spectrally-dominant minerals in field samples; these results were combined with ASTER data using multinomial logistic regression to map mineral distributions. X-ray diffraction (XRD) was used to quantify mineral composition in field samples. XRD results were combined with ASTER data using multiple linear regression to map mineral abundances. We tested whether smoothing of the ASTER data to match the scale of variability of the target sample would improve model correlations. Smoothing was done with Fixed Rank Kriging (FRK) to represent the medium and long-range spatial variability in the ASTER data. Stronger correlations resulted using the smoothed data compared to results obtained with the original data. Highest model accuracies came from using both medium and long-range scaled ASTER data as input to the statistical models. High correlation coefficients were obtained for the abundances of calcite and mica (R-2 = 0.71 and 0.70, respectively). Moderately-high correlation coefficients were found for smectite and kaolinite (R-2 = 0.57 and 0.45, respectively). Maps of mineral distributions, obtained by relating ASTER data to MICA analysis of field samples, were found to characterize major soil mineral variability (overall accuracies for mica, smectite and kaolinite were 76%, 89% and 86% respectively). The results of this study suggest that the distributions of minerals and their abundances derived using FRK-smoothed ASTER data more closely match the spatial variability of soil and environmental properties at regional scale. (C) 2013 Elsevier Inc. All rights reserved.
引用
收藏
页码:415 / 429
页数:15
相关论文
共 50 条
  • [1] Characterizing spatial variability of soil properties in salt affected coastal India using geostatistics and kriging
    Tripathi, Rahul
    Nayak, A. K.
    Shahid, Mohammad
    Raja, R.
    Panda, B. B.
    Mohanty, S.
    Kumar, Anjani
    Lal, B.
    Gautam, Priyanka
    Sahoo, R. N.
    ARABIAN JOURNAL OF GEOSCIENCES, 2015, 8 (12) : 10693 - 10703
  • [2] Characterizing spatial variability of soil properties in alluvial soils of India using geostatistics and geographical information system
    Reza, S. K.
    Nayak, D. C.
    Mukhopadhyay, S.
    Chattopadhyay, T.
    Singh, S. K.
    ARCHIVES OF AGRONOMY AND SOIL SCIENCE, 2017, 63 (11) : 1489 - 1498
  • [3] Prediction of soil properties by using geographically weighted regression at a regional scale
    Tan, Xing
    Guo, Peng-Tao
    Wu, Wei
    Li, Mao-Fen
    Liu, Hong-Bin
    SOIL RESEARCH, 2017, 55 (04) : 318 - 331
  • [4] Integration of mid-infrared spectroscopy and geostatistics in the assessment of soil spatial variability at landscape level
    Cobo, Juan Guillermo
    Dercon, Gerd
    Yekeye, Tsitsi
    Chapungu, Lazarus
    Kadzere, Chengetai
    Murwira, Amon
    Delve, Robert
    Cadisch, Georg
    GEODERMA, 2010, 158 (3-4) : 398 - 411
  • [5] Characterizing surface soil water with field portable diffuse reflectance spectroscopy
    Zhu, Yuanda
    Weindorf, David C.
    Chakraborty, Somsubhra
    Haggard, Beatrix
    Johnson, Stephanie
    Bakr, Noura
    JOURNAL OF HYDROLOGY, 2010, 391 (1-2) : 135 - 142
  • [6] Using geostatistics and machine learning models to analyze the influence of soil nutrients and terrain attributes on lead prediction in forest soils
    Ahado, Samuel Kudjo
    Agyeman, Prince Chapman
    Boruvka, Lubos
    Kanianska, Radoslava
    Nwaogu, Chukwudi
    MODELING EARTH SYSTEMS AND ENVIRONMENT, 2024, 10 (02) : 2099 - 2112
  • [7] Spatial Distribution of Soil Organic Matter Using Geostatistics: A Key Indicator to Assess Soil Degradation Status in Central Italy
    Marchetti, A.
    Piccini, C.
    Francaviglia, R.
    Mabit, L.
    PEDOSPHERE, 2012, 22 (02) : 230 - 242
  • [8] Accounting Spatial Variability of Soil Properties and Mapping Fertilizer Types Using Geostatistics in Southern Ethiopia
    Laekemariam, Fanuel
    Kibret, Kibebew
    Mamo, Tekalign
    Shiferaw, Hailu
    COMMUNICATIONS IN SOIL SCIENCE AND PLANT ANALYSIS, 2018, 49 (01) : 124 - 137
  • [9] Checks and Mass Balances for In Situ Quantification of Mineral Composition using Proximal Soil Sensors
    Jones, Edward J.
    Singh, Balwant
    McBratney, Alex B.
    SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 2019, 83 (04) : 1253 - 1262
  • [10] Investigation of the Effect of Soil Mineral Composition on Soil Organic Matter Stability
    Czirbus, Nora
    Nyilas, Tunde
    Raucsik, Bela
    Hetenyi, Magdolna
    SOIL AND WATER RESEARCH, 2016, 11 (03) : 147 - 154