天然气地球化学

一种新的TOC含量拟合方法研究与应用

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  • 中国石油大学(北京)油气资源与探测国家重点实验室,北京 102249

收稿日期: 2009-03-19

  修回日期: 2009-06-09

  网络出版日期: 2009-12-10

Study and Application of a New Overlay Method of the TOC Content

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  • State Key Laboratory of Petroleum Resources and Prospecting, China University of Petroleum, Beijing 102249, China

Received date: 2009-03-19

  Revised date: 2009-06-09

  Online published: 2009-12-10

摘要

由于取样的限制,通常在烃源岩评价中往往只能获得十分有限的实测烃源岩的TOC含量数据。但随着我国多数盆地精细勘探的深入,需要更加精细的烃源岩评价,因此,人们对测井数据拟合烃源岩的TOC含量变化越来越重视。目前该技术最先进的是人工神经网络拟合方法,但多种神经网络在拟合高成熟度碳酸盐岩烃源岩地层的TOC含量时相关性均不够高。针对研究区内烃源岩的特点,尝试了一种用图版分类—模糊排队—BP神经网络联合拟合TOC含量的新方法。利用该方法对鄂尔多斯盆地马家沟组的测井资料和实测总有机碳资料进行数据处理,将结果与ΔlogR方法、模糊神经网络方法的结果相比较,证实该方法的结果与实测值有更好的相关性,为系统了解鄂尔多斯盆地下古生界烃源岩发育提供了一定的科学依据。

本文引用格式

郭龙,陈践发,苗忠英 . 一种新的TOC含量拟合方法研究与应用[J]. 天然气地球科学, 2009 , 20(6) : 951 -956 . DOI: 10.11764/j.issn.1672-1926.2009.06.951

Abstract

Because of the sampling limitation in the assessment of source rock, we could obtain very limited TOC content data from actually measuring the source rock. With the fine exploration for most basins in China, the finer assessment of source rock is needed. Much attention is paid to the logging data overlaying the TOC content's variation of the source rock. The most advanced overlay method of this technique is artificial neural network. But several neural networks do not make adequate high correlativity when they overlay the TOC content of the carbonate source rock with high degree of maturity. In view of the characteristics of the source rock in the region of interest, this paper attempts a new method to overlay the TOC content, which assembles the crossplot\|sorting, fuzzy-ranking and BP neural network. Using this way to process the logging data and the data of actually measured total organic carbon in Majiagou Formation of Ordos basin, and comparing the results with the results of the ΔlogR method and the fuzzy neural network, we demonstrated that the results of this method have more correlativity with the measured value, and it is helpful for systematically knowing the developing conditions about the Low Palaeozoic source rock in Ordos basin.

参考文献

[1]Beers R F.Radioactivity and organic content of some paleozoic shales[J].AAPG Bulletin,1945,29:1-22.
[2]Swanson V E.Oil Yield and Uranium Content of Black Shales[R].USGS Professional Paper 356-A,1960:1-44.
[3]Tixier M P,Curtis M R.Oil Shale Yield Predicted from Well Logs,In:Drilling and Production[C].7th World Petroleum Congregation,Mexico City,1967,Elsevier.
[4]Schmoker J W.Determination of organic content of appalachian devonian shales from formation-density logs[J].AAPG Bulletin,1979,63:1504-1537.
[5]Schmoker J W.Determination of organic-matter content of appalachian devonian shale from gamma-ray logs[J].AAPG Bulletin,1981,65:1285-1298.
[6]Schmoker J W,Hester  T C.Organic carbon in bakken formation,united states portion of eilliston basin[J].AAPG Bulletin,1983,67:2165-2174.
[7]Herron S L.A total organic carbon log for source rock evaluation[J].The Log Analyst,1987,28(6):520-527.
[8]Herron S L,Le Tendre L.Wireline source-rock evaluation in the paris basin[M]//Huc A Y.Deposition of Organic Facies.AAPG Studies in Geology,1990,30:57-71.
[9]Dellenbach J ,Espitalie J,Lebreton F.Source Rock Logging Trans[R].8th European SPWLA Symp.,1983,Paper D.
[10]Meyer B L,Nederlof M H.Identification of source rocks on wireline logs by density/resistivity and sonic transit time/resistivity cross-plots[J].AAPG Bulletin,1984,68:121-129.
[11]Mendelson J,Toksoz M N.Source Rock Characterization Using Multivariate Analysis of Log Data,In:Trans [R].SPWLA Ann.Logging Symp.,1985,26:UU1-UU21.
[12]Davis J C.Statistic and Data Analysis in Geology,2nd Edition[M].New York:John Wiley,1986:646.
[13]Passey Q R,Creaney S,Kulla J B,et al.A practical model for organic richness from porosity and resistivity logs[J].AAPG Bulletin,1990,74(12):1777-1794.
[14]Huang Zehui,Williamson M A.Artificial neural network modeling as an aid to source rock characterization[J].Marine and Petroleum Geology,1996,13(2):277-290.
[15]Rumelhart D E,McLelland J L.Parallel Distributed Processing:Exploration in the Microstructure of Cognition[M].Cambridge,MA:MIT Press,1986:3-44.
[16]王贵文,朱振宇,朱广宇.烃源岩测井识别与评价方法研究[J].石油勘探与开发,2002,29(4):50-52.
[17]Mohammad Reza Kamalia,Ahad Allah Mirshady.Total organic carbon content determined from well logs using ΔlogR and Neuro Fuzzy techniques[J].Journal of Petroleum Science and Engineering,2004,45:141-148.
[18]张水昌,梁狄刚,张大江.关于古生界烃源岩有机质丰度的评价标准[J].石油勘探与开发,2002,29(2):8-12.
[19]Fan R E,Chang K W,Hsieh C J,et al.LIBLINEAR:A library for large linear classification[J].Journal of Machine Learning Research,2008,9:1871-1874.
[20]Lim J S.Reservoir properties determination using fuzzy logic and neural networks[J].Journal of Petroleum Science and Engineering,2005,49:182-192.
[21]连承波,李汉林,渠芳,等.基于测井资料的B神经网络模型在孔隙度定量预测中的应用[J].天然气地球科学,2006,17(3):382-384.
[22]朱创业,张寿庭.鄂尔多斯盆地马家沟组碳酸盐岩有机质特征及烃源岩研究[J].成都理工学院学报,1999,26(3):217-220.
[23]王飞宇,何萍,程顶胜,等.下古生界高—过成熟烃源岩有机成熟度评价[J].天然气地球科学,1994, 5(6):1-14.
[24]李贤庆,侯读杰,胡国艺,等.鄂尔多斯盆地中部地区下古生界碳酸盐岩生烃潜力探讨[J].矿物岩石地球化学通报,2002,21(3):153-157.

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