Journal of Jilin University(Earth Science Edition) ›› 2016, Vol. 46 ›› Issue (5): 1589-1597.doi: 10.13278/j.cnki.jjuese.201605307

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Application of Hyperion Hyperspectral Image for Studying on the Distribution of Oil Sands

You Jinfeng1,2, Xing Lixin1, Pan Jun1, Shan Xuanlong3, Fan Ruixue1, Cao Hui4   

  1. 1. College of GeoExploration Science and Technology, Jilin University, Changchun 130026, China;
    2. Aviation University of Air Force, Changchun 130022, China;
    3. College of Earth Sciences, Jilin University, Changchun 130061, China;
    4. No.1 Gold Geological Party of CAPF, Mudanjiang 157021, Heilongjiang, China
  • Received:2016-01-13 Online:2016-09-26 Published:2016-09-26
  • Supported by:

    Supported by the National Science and Technology Major Project of the Ministry of Science and Technology of China (2011ZX05028-002);Science and Technology Project of Petro China Company Limited (2013E-050102) and China Geological Survey Program (1212010761502)

Abstract:

The research was mainly based on the principles of hydrocarbon microseepage and spectral response of oil sands composition characteristics. The spectral information related to oil sands distribution was extracted and identified from the hyperspectral image to predict the favorable reservoir for oil sands. Based on the analysis of ground characteristics of hydrocarbon microseepage caused by oil sands, the anomalous feature from low plantation coverage was primarily in mineralization anomaly, the main identification features of medium and high vegetation covering areas were vegetation anomalies. Normalized difference vegetation index (NDVI) was used to represent the different vegetation coverage degree. When NDVI is [0.0,0.4), SAM (spectral angle method) was used to extract mineralization anomaly information. When NDVI are [0.4,0.7] and (0.7,1.0], the vegetation anomaly information were taken by using LIC(lichenthaler index) and CTR(carter indices)respectively. Meanwhile, in order to ensure the extraction of mineralization and vegetation abnormal information caused by the leakage of hydrocarbons from oil sands, the spectral reflectance of oil sands was encouraged to be the endmember to get oil sands spatial information by using SAM. Finally, spatial superimposed analysis was applied to integrate oil sands composition spatial information with mineralization and vegetation exception information for delineating the prospective areas of oil sands distribution. The results showed that a combination of field measurement hyperspectral data and hyperspectral image could predict the distribution of oil sands reservoir. So hyperspectral image plays an important role in prediction of the oil sands bearing reservoir prospective areas, it could also provide some useful information for researching into recoverable reserves evaluation of oil sands by using remote sensing technology.

Key words: oil sands, hyperion image data, hydrocarbon microseepage, oil content, short wave infrared

CLC Number: 

  • P627

[1] 王向成,田庆久,管仲. 基于Hyperion影像的涩北气田油气信息提取[J]. 国土资源遥感,2007,19(1):36-40. Wang Xiangcheng,Tian Qingjiu,Guan Zhong. The Extraction of Oil and Gas Information by Using Hyperion Imagery in the Sebei Gas Field[J]. Remote Sensing for Land & Resources,2007,19(1):36-40.

[2] 沈渊婷,倪国强,徐大琦,等. 利用Hyperion短波红外高光谱数据勘探天然气的研究[J]. 红外与毫米波学报,2008,27(3):210-213. Shen Yuanting,Ni Guoqiang,Xu Daqi,et al. Study on Gas Exploration by Hyperion Hyperspectral Remote Sensing Data[J]. Journal of Infrared Millimeter Waves,2008,27(3):210-213.

[3] 单玄龙,车长波,李剑,等.国内外油砂资源研究现状[J].世界地质,2007,26(4):459-464. Shan Xuanlong,Che Changbo,Li Jian,et al. Present Status of Oil Sand Resources at Home and Abroad[J]. Global Geology,2007,26(4):459-464.

[4] 贾承造,刘希俭,雷群,等.油砂资源状况与储量评估方法[M].北京:石油工业出版社,2007. Jia Chengzao,Liu Xijian,Lei Qun,et al. Oil Sands Resources and Evaluation Methods of Reserves[M]. Beijing:Petroleum Industry Press,2007.

[5] 袁珍. 鄂尔多斯盆地东南部上三叠统油气储层特征及其主控因素研究[D]. 西安:西北大学,2011. Yuan Zhen. Study on the Characteristics and Control Factors Analysis of Oil & Gas Reservoir of the Upper Triassic in Southeast Ordos Basin[D]. Xi'an:Northwest University,2011.

[6] 白云来,赵应成,徐东,等. 陕西铜川-黄陵地区油页岩地质特征及利用前景[J].现代地质,2010,24(1):158-165. Bai Yunlai,Zhao Yingcheng,Xu Dong,et al. Geological Characteristics and Developing:Prospecting Prospects of Oil Shale in Tongchuan-Huangling District,Shaanxi Province[J]. Geoscience,2010,24(1):158-165.

[7] 闫和平.宜君县油页岩资源远景预测[J].陕西煤炭,2012,31(3):19-21. Yan Heping. Potential Prediction of Oil Shale Resources in Yijun County[J]. Shaanxi Coal,2012,31(3):19-21.

[8] 张静.鄂尔多斯盆地南部铜川组油页岩成因及资源潜力研究[D]. 西安:长安大学,2010. Zhang Jing. Genesis and Resource Potential Study of Oil Shale in Tongchuan Formation of Southern Part of Ordos Basin[D]. Xi'an:Chang'an University,2010.

[9] 刘文韬.耀县志[M].北京:中国社会出版社,1997. Liu Wentao. Yaozhou Zhi[M].Beijing:China Society Press,1997.

[10] 乔振民,邢立新,李淼淼,等. Hyperion数据玉米叶绿素含量制图[J]. 遥感技术与应用,2012,27(2):275-281. Qiao Zhenmin,Xing Lixin,Li Miaomiao,et al. Mapping of Chlorophyll Content with Hyperion Data[J]. Remote Sensing Technology and Application,2012,27(2):275-281.

[11] Van der Meer F,Van Dijk P,Van Der Werff H,et al. Remote Sensing and Petroleum Seepage:A Review and Case Study[J]. Terra Nova,2002,14(1):1-17.

[12] Noomen M F. Hyperspectral Reflectance of Vegetation Affected by Underground Hydrocarbon Gas Seepage[D]. Wageningen:Wageningen UR,2007.

[13] Lichtenthaler H K,Lang M,Sowinska M,et al. Detection of Vegetation Stress Via a New High Resolution Fluorescence Imaging System[J]. Journal of plant physiology,1996,148(5):599-612.

[14] Cloutis E A.Spectral Reflectance Properties of Hydro-carbons:Remote-Sensing Implications[J]. Science,1989,245:165-168.

[15] Cloutis E A,Gaffey M J,Moslow T F. Characterization of Minerals in Oil Sands by Reflectance Spectroscopy[J]. Fuel,1995,74(6):874-879.

[16] 马艳萍.鄂尔多斯盆地东北部油气逸散特征及其地质效应[D].西安:西北大学,2007. Ma Yanping. Characteristics of Hydrocarbon Leakage in Northeastern Ordos Basin and Its Geological Effect[D]. Xi'an:Northwest University,2007.

[17] Parry W T,Chan M A,Beitler B. Chemical Bleaching Indicates Episodes of Fluid Flow in Deformation Bands in Sandstone[J]. AAPG Bulletin,2004,88(2):175-191.

[18] Kirkland D W,Denison R E,Rooney M A. Diagenetic Alteration of Permian Strata at Oil Fields of South Central Oklahoma,USA[J]. Marine and Petroleum Geology,1995,12(6):629-644.

[19] Carter G A,Miller R L. Early Detection of Plant Stress by Digital Imaging Within Narrow Stress-Sensitive Wavebands[J].Remote Sensing of Environment,1994,50(3):295-302.

[20] 孟昭平.铜川焦坪矿区油气显示及成因探讨[J].西安矿业学院学报,1989(2):51-56. Meng Zhaoping. Research on the Display and Genesis of Oil-Gas in Tongchuan Jiaoping Mine Area[J].Journal of Xi'an Mining Institute,1989(2):51-56.

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