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Assessment of foliar dust using Hyperion and Landsat satellite imagery for mine environmental monitoring in an open cast iron ore mining areas

机译:使用Hyperion和Landsat卫星图像评估叶面粉尘,用于露天铁矿开采区的矿山环境监测

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The scope of this paper is to estimate foliar dust concentration using Hyperion (Narrow-bands data) and Landsat (Broad-bands data) images, with the aid of eight different vegetation indices (VIs) and fieldbased laboratory spectra. A PCE Instrument for measurement of dust accumulation on leaves and Spectroradiometer for spectral signatures, was also used to estimate foliar dust concentration. The result depicted a negative relationship between VIs (Hyperion and Landsat satellite imagery), and field based dust measurements. The Normalized Difference Vegetation Index (NDVI) shows an excellent negative correlation (R-2 = 0.89 for Hyperion and R-2 = 0.81 for Landsat) as it is not much affected by the variation in vegetation types and patterns. Amongst the eight VIs, NDVI was selected as an optimal VI (RMSE = 0.06 g/m(2) for Hyperion and 0.11 g/m(2) for Landsat) based on both, the field measurement and satellite data for estimation of foliar dust concentration. Furthermore, a positive relationship between the field-based measured dust concentration (g/m(2)) and satellite image (by VIs) based dust concentration (g/m(2)) was observed. Field-based measured foliar dust concentration taken for 20 samples was plotted against their estimated dust values using the NDVI (R = 0.90 for Hyperion and R = 0.81 for Landsat). Hyperion data is considered as the reliable one as it gave better results than the Landsat data. Finally, the Hyperion data based foliar dust map was analyzed by a High-resolution Google Earth image (Geo Eye) for different locations viz., mines, transport sites as well as forests and matched with the field-based measured dust concentration. The result shows that maximum foliar dust was concentrated near the ore transportation network, surrounding mining locations, tailing ponds, and mining dumps areas. For making the environmental management effective (in the mining and allied areas), Hyperspectral remote sensing aided by field-based methods, for estimating foliar dust concentration would be very helpful. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文的范围是借助Hyperion(窄带数据)和Landsat(宽带数据)图像,借助八种不同的植被指数(VI)和基于现场的实验室光谱,估计叶面尘埃浓度。还使用PCE仪器测量叶子上的灰尘积聚,并使用分光辐射仪测量光谱特征,以估计叶面灰尘浓度。结果表明VI(Hyperion和Landsat卫星图像)与基于场的尘埃测量之间存在负相关关系。归一化植被指数(NDVI)显示出极好的负相关性(Hyperion的R-2 = 0.89,Landsat的R-2 = 0.81),因为它不受植被类型和格局变化的影响很大。在八个VI中,基于现场测量和卫星数据估计叶面粉尘,NDVI被选为最佳VI(Hyperion的RMSE = 0.06 g / m(2),Landsat的0.11 g / m(2))浓度。此外,观测到的基于实地的粉尘浓度(g / m(2))与基于卫星图像的粉尘浓度(g / m(2))之间呈正相关。使用NDVI(Hyperion R = 0.90,Landsat R = 0.81)将20个样品的实地测得的叶粉尘浓度与其估计的粉尘值作图。 Hyperion数据被认为是可靠的数据,因为它比Landsat数据提供了更好的结果。最后,通过高分辨率Google Earth图像(Geo Eye)对Hyperion数据的叶面尘埃图进行了分析,分析了不同位置(例如矿山,运输地点以及森林)的位置,并与基于实地的粉尘浓度进行了匹配。结果表明,最大的叶面尘埃集中在矿石运输网络附近,采矿地点周围,尾矿池和采矿场附近。为了使环境管理有效(在采矿和相关地区),借助基于现场方法的高光谱遥感来估算叶面粉尘浓度将非常有帮助。 (C)2019 Elsevier Ltd.保留所有权利。

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