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Hyperspectral signature analysis of three plant species to long-term hydrocarbon and heavy metal exposure

机译:三种植物对长期碳氢化合物和重金属暴露的高光谱特征分析

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Recent studies aim to exploit vegetation hyperspectral signature as an indicator of pipeline leakages and natural oil seepages by detecting changes in reflectance induced by oil exposure. In order to assess the feasibility of the method at larger spatial scale, a study has been carried out in a greenhouse on two tropical {Cenchrus alopecuroides and Panicum virgatum) and a temperate (Rubus fruticosus) species. Plants were grown on contaminated soil during 130 days, with concentrations up to 4.5 and 36 g-kg_1 for heavy metals and C_10-C_40 hydrocarbons respectively. Reflectance data (350-2500 nm) were acquired under artificial light from 1 to 60 days. All species showed an increase of reflectance in the visible (VIS, 400-750 nm) and short-wave infrared (SWIR, 1300-2500 nm) under experimental contaminants exposure. However, the responses were contrasted in the near-infrared (NIR, 750-1300 nm). 47 normalized vegetation indices were compared between treatments, and the most sensitive to contamination were retained. Same indices showed significant differences between treatments at leaf and plant scales. Indices related to plant pigments, plant water content and red-edge reflectance were particularly sensitive to soil contamination. In order to validate the selection of indices, hyperspectral measurements were performed outdoor at plant scale at the end of the experiment (130 days). Leaf samples were also collected for pigment analysis. Index selected at day 60 were still sensitive to soil contamination after 130 days. Significant changes in plant pigment composition were also observed. This study demonstrates the interest of hyperspectral data for oil exploration and environmental diagnosis.
机译:最近的研究旨在通过检测由石油暴露引起的反射率变化,利用植被高光谱特征作为管道泄漏和天然石油渗漏的指标。为了在更大的空间尺度上评估该方法的可行性,已经在温室中对两种热带(C藜和紫罗兰)和温带(鲁氏ut)物种进行了研究。植物在受污染的土壤上生长130天,重金属和C_10-C_40碳氢化合物的浓度分别高达4.5和36 g-kg_1。在1至60天的人造光下获取反射率数据(350-2500 nm)。在暴露于实验性污染物的情况下,所有物种在可见光(VIS,400-750 nm)和短波红外光(SWIR,1300-2500 nm)中均显示出反射率增加。但是,在近红外(NIR,750-1300 nm)中,响应是相反的。在处理之间比较了47种标准化植被指数,并且保留了对污染最敏感的指数。相同的指数表明在叶片和植物尺度上处理之间存在显着差异。与植物色素,植物含水量和红边反射率有关的指标对土壤污染特别敏感。为了验证指标的选择,在实验结束时(130天)在工厂规模的室外进行了高光谱测量。还收集叶样品用于色素分析。 130天后第60天选择的指数仍然对土壤污染敏感。还观察到植物色素组成的显着变化。这项研究证明了高光谱数据对石油勘探和环境诊断的兴趣。

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