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Using time-series Sentinel-1 data for soil prediction on invaded coastal wetlands

机译:使用时间序列Sentinel-1数据进行入侵沿海湿地的土壤预测

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Coastal soils are particularly sensitive to nonnative species invasion. In this context, spatially explicit soil information is essential for improving the knowledge of the role of soil in changing environments, supporting coastal sustainable management. Synthetic-aperture radar (SAR) data provides an attractive opportunity to monitor soil because the acquisition of images is independent of weather and daylight. However, SAR has not been commonly used for soil prediction. In this study, we firstly investigated the temporal variation of vegetation canopy and the soil-vegetation relationship using Sentinel-1 data in an invaded coastal wetland. And then we built 3D models to predict soil properties at multiple depths. A total of 16 Sentinel-1 images were acquired in a growing season. A series of soil physicochemical properties were examined including soil bulk density, texture, organic/inorganic carbon, pH, salinity, total nitrogen, and C/N ratio, relating to three depth layers in the top 1-m depth. Our results showed that time-series Sentinel-1 data can capture temporal characteristics of vegetation, and VH/VV was more sensitive to the vegetation growth than VH and VV. The soil-vegetation relationship captured by time-series SAR data was beneficial to predict soil properties, especially for soil chemical properties. The models provided permissible prediction accuracy, with an average RPD of 0.99. We concluded that the prior understanding of the temporal variation of SAR data is essential for developing practical soil prediction strategy. Our results highlight that SAR has the potential to predict a diverse set of soil properties in coastal wetlands with dense vegetation cover.
机译:沿海土壤对外来物种入侵特别敏感。在这种情况下,空间明确的土壤信息对于增进对土壤在不断变化的环境中的作用的认识,支持沿海可持续管理至关重要。合成孔径雷达(SAR)数据为监视土壤提供了诱人的机会,因为图像的获取与天气和日光无关。但是,SAR尚未普遍用于土壤预测。在这项研究中,我们首先使用Sentinel-1数据研究了入侵沿海湿地中植被冠层的时间变化和土壤-植被关系。然后,我们建立了3D模型来预测多个深度的土壤特性。在生长季节中总共获取了16张Sentinel-1图像。研究了一系列土壤理化性质,包括土壤堆积密度,质地,有机/无机碳,pH,盐度,总氮和碳氮比,涉及到顶部1米深处的三个深度层。我们的结果表明,时间序列Sentinel-1数据可以捕获植被的时间特征,并且VH / VV比VH和VV对植被的生长更敏感。时间序列SAR数据捕获的土壤-植被关系有利于预测土壤性质,尤其是土壤化学性质。这些模型提供了允许的预测精度,平均RPD为0.99。我们得出的结论是,对SAR数据的时间变化的事先了解对于开发实用的土壤预测策略至关重要。我们的结果表明,SAR有潜力预测植被密集的沿海湿地的各种土壤特性。

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