Mapping soil arsenic pollution at a brownfield site using satellite hyperspectral imagery and machine learning

被引:17
|
作者
Jia, Xiyue [1 ]
Hou, Deyi [1 ]
机构
[1] Tsinghua Univ, Sch Environm, Beijing 100084, Peoples R China
基金
中国国家自然科学基金;
关键词
Satellite hyperspectral imagery; Arsenic contamination; Soil pollution; Remote sensing; Machine learning; HEAVY-METAL CONTAMINATION; REFLECTANCE SPECTROSCOPY; RAPID ASSESSMENT; PREDICTION; REMEDIATION; BIOCHAR; FOREST; MODEL; RISK;
D O I
10.1016/j.scitotenv.2022.159387
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Heavy metal contamination is ubiquitous in brownfields. Traditional site investigation employs geostatistical interpolation methods (GIMs) to predict the distribution of soil pollutants after soil sampling and chemical analysis. However, the heterogeneity of soil pollution in brownfields makes the assumptions of GIMs no longer valid and further undermines the accuracy of soil investigation. In the present study, a satellite hyperspectral image processing and machine learning method was developed to map arsenic pollution at a brownfield site. To eliminate the noise caused by atmospheric factors and increase the efficiency of spectral data, 1.3 million spectral indexes (SIs) were constructed and 1171 of them were selected due to their high correlations with soil arsenic. Five machine learning methods, i.e., Random forest (RF), ExtraTrees, Adaptive Boosting, Extreme Gradient Trees, and Gradient Descent Boosting Trees (GDB) were built to predict soil arsenic. The RF method was found to render the best performance (r = 0.78), reducing 30 % of prediction errors compared with traditional GIMs. RF also maintained a relatively higher level of accuracy (r = 0.56) when the sampling grids increased to 100 m, which was higher than that of GIMs under a 50 m sampling grid (r = 0.42), revealing that the proposed method can provide more accurate results with fewer sampling points, namely less investigation cost. It was indicated that the second derivate was the most efficient preprocessing method to remove spectral noise and normalized difference (ND) was the most reliable spectral index construction strategy. Based on uncertainty analysis, the heterogeneity of soil arsenic distribution was considered the most influential factor causing prediction errors. This study demonstrates that machine learning based on satellite visible and near-infrared reflectance spectroscopy (VNIR) is a promising approach to map soil arsenic contamination at brownfield sites with high accuracy and low cost.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] VIRS based detection in combination with machine learning for mapping soil pollution
    Jia, Xiyue
    O'Connor, David
    Shi, Zhou
    Hou, Deyi
    [J]. ENVIRONMENTAL POLLUTION, 2021, 268
  • [22] Mapping agricultural tile drainage in the US Midwest using explainable random forest machine learning and satellite imagery
    Wan, Luwen
    Kendall, Anthony D.
    Rapp, Jeremy
    Hyndman, David W.
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2024, 950
  • [23] Flood Hazard and Risk Mapping by Applying an Explainable Machine Learning Framework Using Satellite Imagery and GIS Data
    Antzoulatos, Gerasimos
    Kouloglou, Ioannis-Omiros
    Bakratsas, Marios
    Moumtzidou, Anastasia
    Gialampoukidis, Ilias
    Karakostas, Anastasios
    Lombardo, Francesca
    Fiorin, Roberto
    Norbiato, Daniele
    Ferri, Michele
    Symeonidis, Andreas
    Vrochidis, Stefanos
    Kompatsiaris, Ioannis
    [J]. SUSTAINABILITY, 2022, 14 (06)
  • [24] Mapping Burn Extent of Large Wildland Fires from Satellite Imagery Using Machine Learning Trained from Localized Hyperspatial Imagery
    Hamilton, Dale
    Levandovsky, Enoch
    Hamilton, Nicholas
    [J]. REMOTE SENSING, 2020, 12 (24) : 1 - 19
  • [25] Transfer Learning for Soil Spectroscopy Based on Convolutional Neural Networks and Its Application in Soil Clay Content Mapping Using Hyperspectral Imagery
    Liu, Lanfa
    Ji, Min
    Buchroithner, Manfred
    [J]. SENSORS, 2018, 18 (09)
  • [26] Hyperion hyperspectral imagery analysis combined with machine learning classifiers for land use/cover mapping
    Petropoulos, George P.
    Arvanitis, Kostas
    Sigrimis, Nick
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2012, 39 (03) : 3800 - 3809
  • [27] Quantifying urban flood extent using satellite imagery and machine learning
    Composto, Rebecca W.
    Tulbure, Mirela G.
    Tiwari, Varun
    Gaines, Mollie D.
    Caineta, Julio
    [J]. NATURAL HAZARDS, 2024, : 175 - 199
  • [28] Automatic Target Detection from Satellite Imagery Using Machine Learning
    Tahir, Arsalan
    Munawar, Hafiz Suliman
    Akram, Junaid
    Adil, Muhammad
    Ali, Shehryar
    Kouzani, Abbas Z.
    Mahmud, M. A. Pervez
    [J]. SENSORS, 2022, 22 (03)
  • [29] Mapping nonnative plants using hyperspectral imagery
    Underwood, E
    Ustin, S
    DiPietro, D
    [J]. REMOTE SENSING OF ENVIRONMENT, 2003, 86 (02) : 150 - 161
  • [30] Urban building extraction using satellite imagery through Machine Learning
    Prakash, P. S.
    Soumya, K. D.
    Bharath, H. A.
    [J]. 2018 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI), 2018, : 1670 - 1675