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Machine learning-based detection of soil salinity in an arid desert region, Northwest China: A comparison between Landsat-8 OLI and Sentinel-2 MSI

机译:基于机器学习的干旱干旱地区土壤盐分的检测:Landsat-8 OLI和Sentinel-2 MSI的比较

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摘要

Accurate assessment of soil salinization is considered as one of the most important steps in combating global climate change, especially in arid and semi-arid regions. Multi-spectral remote sensing (RS) data including Landsat series provides the potential for frequent surveys for soil salinization at various scales and resolutions. Additionally, the recently launched Sentinel-2 satellite constellation has temporal revisiting frequency of 5 days, which has been proven to be an ideal approach to assess soil salinity. Yet studies on detailed comparison in soil salinity tracking between Landsat-8 OLI and Sentinel-2 MSI remain limited. For this purpose, we collected a total of 64 topsoil samples in an arid desert region, the Ebinur Lake Wetland National Nature Reserve (ELWNNR) to compare the monitoring accuracy between Landsat-8 OLI and Sentinel-2 MSI. In this study, the Cubist model was trained using RS-derived covariates (spectral bands, Tasseled Cap transformation-derived wetness (TCW), and satellite salinity indices) and laboratory measured electrical conductivity of 1:5 soil:water extract (EC). The results showed that the measured soil salinity had a significant correlation with surface soil moisture (Pearson's r = 0.75). The introduction of TCW generated satisfactory estimating performance. Compared with OLI dataset, the combination of MSI dataset and Cubist model yielded overall better model performance and accuracy measures (R~2 = 0.912, RMSE = 6.462 dS m~(-1) NRMSE = 9.226%, RPD = 3.400 and RPIQ = 6.824, respectively). The differences between Landsat-8 OLI and Sentinel-2 MSI were distinguishable. In conclusion, MSI image with finer spatial resolution performed better than OLI. Combining RS data sets and their derived TCW within a Cubist framework yielded accurate regional salinity map. The increased temporal revisiting frequency and spectral resolution of MSI data are expected to be positive enhancements to the acquisition of high-quality soil salinity information of desert soils.
机译:准确评估土壤盐渍化被认为是应对全球气候变化的最重要步骤之一,特别是在干旱和半干旱地区。包括Landsat系列在内的多光谱遥感(RS)数据提供了在不同规模和分辨率下频繁调查土壤盐渍化的潜力。此外,最近发射的Sentinel-2卫星星座具有5天的时间重访频率,这已被证明是评估土壤盐度的理想方法。然而,关于Landsat-8 OLI和Sentinel-2 MSI之间的土壤盐分追踪的详细比较的研究仍然有限。为此,我们在一个干旱的沙漠地区埃比努尔湖湿地国家自然保护区(ELWNNR)上总共收集了64个表土样品,以比较Landsat-8 OLI和Sentinel-2 MSI之间的监测精度。在这项研究中,使用RS衍生的协变量(光谱带,Tasseled Cap转换衍生的湿度(TCW)和卫星盐度指数)和实验室测得的1:5土壤:水提取物(EC)的电导率训练了Cubist模型。结果表明,测得的土壤盐分与表层土壤水分具有显着相关性(Pearson r = 0.75)。 TCW的引入产生了令人满意的估算性能。与OLI数据集相比,MSI数据集和Cubist模型的组合产生了总体上更好的模型性能和准确性指标(R〜2 = 0.912,RMSE = 6.462 dS m〜(-1)NRMSE = 9.226%,RPD = 3.400和RPIQ = 6.824 , 分别)。 Landsat-8 OLI和Sentinel-2 MSI之间的区别是可区分的。总之,具有更好空间分辨率的MSI图像的性能优于OLI。在立体派框架内将RS数据集及其派生的TCW结合起来,得出了准确的区域盐度图。 MSI数据的时间重访频率和频谱分辨率的提高有望对沙漠土壤高质量土壤盐分信息的获取产生积极的促进作用。

著录项

  • 来源
    《The Science of the Total Environment》 |2020年第10期|136092.1-136092.11|共11页
  • 作者单位

    Key Laboratory of Smart City and Environment Modelling of Higher Education Institute College of Resources and Environment Science Xinjiang University Urumqi 800046 China Key Laboratory of Oasis Ecology Xinjiang University Urumqi 830046 China Key Laboratory for Geo-Environmental Monitoring of Coastal Zone of the Ministry of Natural Resources Guangdong Key Laboratory of Urban Informatics Shenzhen Key Laboratory of Spatial Smart Sensing and Services Shenzhen University Shenzhen 518060 China;

    Key Laboratory of Smart City and Environment Modelling of Higher Education Institute College of Resources and Environment Science Xinjiang University Urumqi 800046 China Key Laboratory of Oasis Ecology Xinjiang University Urumqi 830046 China;

    School of Sociology and Population Studies Renmin University of China Beijing 100872 China Department of Earth and Environmental Studies Montclair State University Montclair NJ 07043 USA;

    Guangdong Key Laboratory of Integrated Agro-environmental Pollution Control and Management Guangdong Institute of Eco-environmental Science & Technology Guangzhou 510650 China;

    State Key Laboratory of Desert and Oasis Ecology Xinjiang Institute of Ecology and Geography Chinese Academy of Sciences Urumqi 830011 China;

    Department of Geography & Spatial Information Technology Ningbo University Ningbo 315211 China;

    Key Laboratory for Geo-Environmental Monitoring of Coastal Zone of the Ministry of Natural Resources Guangdong Key Laboratory of Urban Informatics Shenzhen Key Laboratory of Spatial Smart Sensing and Services Shenzhen University Shenzhen 518060 China;

    State Key Laboratory of Resources and Environmental Information System Institute of Geographic Sciences and Natural Resources Research. Chinese Academy of Sciences Beijing 100101 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Soil salinization; Sentinel-2 MSI; Landsat-8 OLI; Cubist; Remote sensing; Surface soil moisture;

    机译:土壤盐渍化;Sentinel-2 MSI;Landsat-8 OLI;立体派遥感;表层土壤水分;

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