Multi-source machine learning and spaceborne remote sensing data accurately predict three-dimensional soil moisture in an in-service uranium disposal cell

被引:0
|
作者
Jarchow, Christopher J. [1 ]
Du, Jinyang [2 ]
Kimball, John S. [2 ]
Kuhlman, Alison [3 ]
Steckley, Deb [3 ]
机构
[1] RSI EnTech LLC, Grand Junction, CO 37830 USA
[2] Univ Montana, Numer Terradynam Simulat Grp, Missoula, MT USA
[3] US DOE, Off Legacy Management, Grand Junction, CO USA
关键词
Soil moisture; Machine learning; Synthetic aperture radar; Remote sensing; Disposal cells; Normalized difference vegetation index; WATER-BALANCE; RETRIEVAL; SCATTERING; MODEL;
D O I
10.1016/j.jenvman.2024.122254
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
One reason arid and semi-arid environments have been used to store waste is due to low groundwater recharge, presumably limiting the potential for meteoric water to mobilize and transport contaminants into groundwater. The U.S. Department of Energy Office of Legacy Management (LM) is evaluating selected uranium mill tailings disposal cell covers to be managed as evapotranspiration (ET) covers, where vegetation is used to naturally remove water from the cover profile via transpiration, further reducing deep percolation. An important parameter in monitoring the performance of ET covers is soil moisture (SM). If SM is too high, water may drain into tailings material, potentially transporting contaminants into groundwater; if SM is too low, radon flux may increase through the cover. However, monitoring SM via traditional instrumentation is invasive, expensive, and may fail to account for spatial heterogeneity, especially over vegetated disposal cells. Here we investigated the potential for non-invasive SM monitoring using radar remote sensing and other geospatial data to see if this approach could provide a practical, accurate, and spatially comprehensive tool to monitor SM. We used theoretical simulations to analyze the sensitivity of multi-frequency radar backscatter to SM at different depths of a field-scale (3 ha) drainage lysimeter embedded within an in-service LM disposal cell. We then evaluated a shallow and deep form of machine learning (ML) using Google Earth Engine to integrate multi-source observations and estimate the SM profile across six soil layers from depths of 0-2 m. The ML models were trained using in situ SM measurements from 2019 and validated using data from 2014 to 2018 and 2020-2021. Model predictors included backscatter observations from satellite synthetic aperture radar, vegetation, temperature products from optical infrared sensors, and accumulated, gridded rainfall data. The radar simulations confirmed that the lower frequencies (L- and P-band) and smaller incidence angles show better sensitivity to deeper soil layers and an overall larger SM dynamic range relative to the higher frequencies (C- and X-band). The ML models produced accurate SM estimates throughout the soil profile (r values from 0.75 to 0.94; RMSE = 0.003-0.017 cm3/cm3; bias = 0.00 cm3/cm3), with the simpler shallow-learning approach outperforming a selected deeplearning model. The ML models we developed provide an accurate, cost-effective tool for monitoring SM within ET covers that could be applied to other vegetated disposal cell covers, potentially including those with rock-armored covers.
引用
收藏
页数:12
相关论文
共 41 条
  • [31] The important role of reliable land surface model simulation in high-resolution multi-source soil moisture data fusion by machine learning
    Zeng, Junhan
    Yuan, Xing
    Ji, Peng
    Journal of Hydrology, 2024, 630
  • [32] Urban river water quality monitoring based on self-optimizing machine learning method using multi-source remote sensing data
    Chen, Peng
    Wang, Biao
    Wu, Yanlan
    Wang, Qijun
    Huang, Zuoji
    Wang, Chunlin
    ECOLOGICAL INDICATORS, 2023, 146
  • [33] Sensitive Feature Evaluation for Soil Moisture Retrieval Based on Multi-Source Remote Sensing Data with Few In-Situ Measurements: A Case Study of the Continental US
    Zhang, Ling
    Zhang, Zixuan
    Xue, Zhaohui
    Li, Hao
    WATER, 2021, 13 (15)
  • [34] Deep and machine learning prediction of forest above-ground biomass using multi-source remote sensing data in coniferous planted forests in Iran
    Ali, Hassan
    Mohammadi, Jahangir
    Jouibary, Shaban Shataee
    EUROPEAN JOURNAL OF FOREST RESEARCH, 2024, 143 (06) : 1731 - 1745
  • [35] Mapping Mangrove Above-Ground Carbon Using Multi-Source Remote Sensing Data and Machine Learning Approach in Loh Buaya, Komodo National Park, Indonesia
    Rijal, Seftiawan Samsu
    Pham, Tien Dat
    Noer'Aulia, Salma
    Putera, Muhammad Ikbal
    Saintilan, Neil
    FORESTS, 2023, 14 (01):
  • [36] Estimating and Downscaling ESA-CCI Soil Moisture Using Multi-Source Remote Sensing Images and Stacking-Based Ensemble Learning Algorithms in the Shandian River Basin, China
    Wang, Liguo
    Gao, Ya
    REMOTE SENSING, 2025, 17 (04)
  • [37] Analysis of spatial-temporal variations of grassland gross ecosystem product based on machine learning algorithm and multi-source remote sensing data: A case study of Xilinhot, China
    Wang, Haiwen
    Wu, Nitu
    Han, Guodong
    Li, Wu
    Batunacun
    Bao, Yuhai
    GLOBAL ECOLOGY AND CONSERVATION, 2024, 51
  • [38] Decision tree-based machine learning models for above-ground biomass estimation using multi-source remote sensing data and object-based image analysis
    Tamiminia, Haifa
    Salehi, Bahram
    Mahdianpari, Masoud
    Beier, Colin M.
    Johnson, Lucas
    Phoenix, Daniel B.
    Mahoney, Michael
    GEOCARTO INTERNATIONAL, 2022, 37 (26) : 12763 - 12791
  • [39] Integrating multi-source remote sensing and machine learning for root-zone soil moisture and yield prediction of winter oilseed rape ( Brassica napus L.): A new perspective from the temperature-vegetation index feature space
    Shi, Hongzhao
    Li, Zhijun
    Xiang, Youzhen
    Tang, Zijun
    Sun, Tao
    Du, Ruiqi
    Li, Wangyang
    Liu, Xiaochi
    Huang, Xiangyang
    Liu, Yulin
    Zhong, Naining
    Zhang, Fucang
    AGRICULTURAL WATER MANAGEMENT, 2024, 305
  • [40] A Decision Rule and Machine Learning-Based Hybrid Approach for Automated Land-Cover Type Local Climate Zones (LCZs) Mapping Using Multi-Source Remote Sensing Data
    Islam, Md Didarul
    Di, Liping
    Zhang, Chen
    Yang, Ruixin
    Qu, John J.
    Tong, Daniel
    Guo, Liying
    Lin, Li
    Pandey, Aran
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2024, 17 : 8271 - 8290