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致密砂岩储层含气测井特征及定量评价
引用本文:潘保芝,蒋必辞,刘文斌,房春慧,张瑞.致密砂岩储层含气测井特征及定量评价[J].吉林大学学报(地球科学版),2016,46(3):930-937.
作者姓名:潘保芝  蒋必辞  刘文斌  房春慧  张瑞
作者单位:1. 吉林大学地球探测科学与技术学院, 长春 130026; 2. 中国煤炭科工集团西安研究院有限公司, 西安 710077
基金项目:国家自然科学基金项目(41174096),国家“十二五”重大科技专项(2011ZX05040-002) Supported by the National Nature Science Foundation (41174096) and the 12th Five-Year Major Projects(2011ZX05040-002)
摘    要:致密砂岩储层孔隙度低、渗透率低、非均质性强,气层所对应的测井响应特征较为复杂,气层识别和评价难度较大、多解性突出。传统上,利用常规测井曲线进行含气性评价多是定性评价,在利用智能识别法评价含气性时,也是利用分类模型进行定性评价;而利用常规测井资料定量评价含气性比较困难。本文首先以岩心、地质、试气资料和常规测井曲线为基础,利用交会图法进行致密砂岩含气特征分析,建立含气性定性评价指标;然后,利用广义回归神经网络(GRNN)预测含气量和含水量,构造含气性和含水性指示曲线,定量评价致密砂岩的含气性;最后,定性评价和定量评价综合使用,以评价致密砂岩含气性,并在苏里格地区盒8段进行应用,取得了较好的应用效果。

关 键 词:致密砂岩  含气性定量评价  曲线重构  GRNN  指标法  苏里格地区  
收稿时间:2015-09-09

Gas-Bearing Logging Features and Quantitative Evaluation for Tight Sandstone Reservoirs
Pan Baozhi,Jiang Bici,Liu Wenbin,Fang Chunhui,Zhang Rui.Gas-Bearing Logging Features and Quantitative Evaluation for Tight Sandstone Reservoirs[J].Journal of Jilin Unviersity:Earth Science Edition,2016,46(3):930-937.
Authors:Pan Baozhi  Jiang Bici  Liu Wenbin  Fang Chunhui  Zhang Rui
Institution:1. College of GeoExploration Science and Technology, Jilin University, Changchun 130026, China;
2. Xi'an Research Institute of China Coal Technology and Engineering Group Corp, Xi'an 710077, China
Abstract:Tight sandstone reservoirs always show the characteristics, such as, low porosity, low permeability, and strong heterogeneity.The logging response characteristics corresponding to gas-bearing reservoir is very complex, so that the identification and evaluation of gas are difficult and it always shows multiple solution. Conventional well log is used for qualitative evaluating the gas-bearing characteristics.However, the classification model in intelligent recognition method still belongs to qualitative evaluation, which makes the traditional well log difficult to quantitatively evaluate gas.We use the core, geology, gas testing and conventional logging data to analyze the gas characteristics by cross-plot method and build two indexes, which can be used for qualitatively evaluating the gas containing. The workflow includes the generalized regression neural network (GRNN)that reconstructs gas and water indication curve to quantitatively evaluate the gas containing. Finally, we used the index method and GRNN curve reconstruction method to evaluate the tight sandstone gas in the Sulige area.The results show the good application effects.
Keywords:tight sandstone  gas-bearing quantitativeevaluation  curve reconstruction  GRNN  index method  Sulige area
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