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Soil TPH Concentration Estimation Using Vegetation Indices in an Oil Polluted Area of Eastern China

机译:基于植被指数的中国东部油污区土壤TPH浓度估算

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摘要

Assessing oil pollution using traditional field-based methods over large areas is difficult and expensive. Remote sensing technologies with good spatial and temporal coverage might provide an alternative for monitoring oil pollution by recording the spectral signals of plants growing in polluted soils. Total petroleum hydrocarbon concentrations of soils and the hyperspectral canopy reflectance were measured in wetlands dominated by reeds (Phragmites australis) around oil wells that have been producing oil for approximately 10 years in the Yellow River Delta, eastern China to evaluate the potential of vegetation indices and red edge parameters to estimate soil oil pollution. The detrimental effect of oil pollution on reed communities was confirmed by the evidence that the aboveground biomass decreased from 1076.5 g m−2 to 5.3 g m−2 with increasing total petroleum hydrocarbon concentrations ranging from 9.45 mg kg−1 to 652 mg kg−1. The modified chlorophyll absorption ratio index (MCARI) best estimated soil TPH concentration among 20 vegetation indices. The linear model involving MCARI had the highest coefficient of determination (R 2 = 0.73) and accuracy of prediction (RMSE = 104.2 mg kg−1). For other vegetation indices and red edge parameters, the R2 and RMSE values ranged from 0.64 to 0.71 and from 120.2 mg kg−1 to 106.8 mg kg−1 respectively. The traditional broadband normalized difference vegetation index (NDVI), one of the broadband multispectral vegetation indices (BMVIs), produced a prediction (R 2 = 0.70 and RMSE = 110.1 mg kg−1) similar to that of MCARI. These results corroborated the potential of remote sensing for assessing soil oil pollution in large areas. Traditional BMVIs are still of great value in monitoring soil oil pollution when hyperspectral data are unavailable.
机译:在大面积上使用传统的基于现场的方法来评估石油污染既困难又昂贵。具有良好的时空覆盖范围的遥感技术可能会通过记录在污染土壤中生长的植物的光谱信号,提供一种监测油污染的替代方法。在中国东部黄河三角洲已生产石油约10年的油井周围,以芦苇(芦苇)为主的湿地中,测量了土壤中的总石油烃浓度和高光谱冠层反射率,以评估植被指数和红边参数可估算土壤油污染。石油污染对芦苇群落的不利影响得到了以下证据的证实:随着总石油烃浓度范围的增加,地上生物量从1076.5 gm -2 降至5.3 gm -2 从9.45 mg kg -1 到652 mg kg -1 。改良的叶绿素吸收比指数(MCARI)在20种植被指数中能最好地估算土壤TPH浓度。涉及MCARI的线性模型具有最高的确定系数(R 2 = 0.73)和预测精度(RMSE = 104.2 mg kg -1 )。对于其他植被指数和红边参数,R 2 和RMSE值的范围为0.64至0.71,范围为120.2 mg kg -1 至106.8 mg kg -1 。传统的宽带归一化植被指数(NDVI)是宽带多光谱植被指数(BMVI)之一,产生了预测(R 2 = 0.70和RMSE = 110.1 mg kg −1 )类似于MCARI。这些结果证实了遥感技术在大面积评估土壤油污染方面的潜力。当无法获得高光谱数据时,传统的BMVI在监测土壤油污染方面仍然具有重要价值。

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