基于卫星近红外数据的溢油羽流测绘方法研究

C. Wu, Z. Chen, C. An, Kenneth Lee, B. Wang, M. Boufadel, Z. Asif, Kent Street Ottawa K C E Canada Oceans Canada
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引用次数: 2

摘要

. 大量石油泄漏引起的油羽在水中扩散的可靠信息对于制定适当的清理措施至关重要。卫星遥感技术在探测石油泄漏的覆盖范围更大和不需要昂贵的操作费用方面比其他方法有优势。在本研究中,采用基于近红外(NIR)卫星数据的油羽圈定方法来检查墨西哥湾近海BP深水地平线漏油事件和最近北部内陆水域诺里尔斯克漏油事件的溢油羽面积和大小。为了获得准确的结果,使用基于SNAP的DEM数据和归一化差水指数方法掩盖数据中的土地等噪声信号,而使用MODIS云掩蔽来去除云信号。Cox-Munk模型用于计算太阳闪烁度。使用500米分辨率的MODIS近红外数据,DP溢油案例的结果显示了4838.84 km 2厚的油羽和20635.53 km 2薄的浮油部分。随后,该技术被应用于最近的诺里尔斯克石油泄漏事故,使用更高分辨率的Sentinel-2近红外数据来测试检测内陆河流水系中泄漏羽流的方法。考虑到河流场地水浅、河流红土接近油色等复杂条件,相对于较大的近海区域,较小规模的河流溢油得到了10米高分辨率的结果。该方法适用于海洋或内陆深水水体中厚油羽的探测。
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Examining an Oil Spill Plume Mapping Method based on Satellite NIR Data
. Reliable information on the spreading of oil plume on water caused by massive oil spills is essential for making proper clean-up measures. Satellite remote sensing technology has advantages over other methods in terms of larger coverage and without ex-pensive operating costs to detect oil spills. In this study, an oil plume delineation method based on the Near-Infrared (NIR) satellite data is used to examine oil spill plume area and size for the BP Deepwater Horizon Oil Spill in the offshore water of Gulf of Mexico and for the recent Norilsk oil spill in a Northern inland water region. To get accurate results noise signals such as land from the data are masked out using SNAP based DEM data and Normalized Difference Water Index method, whereas cloud signals are removed using MODIS cloud masking. Cox-Munk model is used to compute the sun glint radiance. Results of DP oil spill case depicts a 4838.84 km 2 thicker oil plume along with the 20635.53 km 2 thinner portion of the oil slicks using MODIS NIR data at a 500-meter resolution. It is subsequently applied to the recent Norilsk Oil Spill using higher resolution Sentinel-2 NIR data to test the method for detecting spill plume in an inland river water system. Reasonable high-resolution results at 10 meter have been obtained for the smaller scale oil spill onto river water compared to larger offshore area, considering that the river site has complex conditions including shallow water and river reddish soil close to oil color. The developed method is suitable for detecting thick oil plume in ocean or deep inland water bodies.
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