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多属性概率神经网络技术在ML油田岩性油气藏预测中的应用

Application of multi-attribute probabilistic neural network inversion in lithologic reservoir hydrocarbon prediction

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【作者】 李密李少华王红宾曾胜勇郭士东

【Author】 Li Mi et al(The Puguang Branch Company,Zhongyuan Oilfield Branch Company,Sinopec,Dazhou,Sichuan 636155)

【机构】 中国石化中原油田普光分公司采气厂长江大学地球科学学院

【摘要】 在ML油田,由于地震资料品质差、井数据缺乏、开发程度低等原因,采用常规阻抗反演进行油气预测效果不理想,为此应用多属性概率神经网络技术进行油气预测。在研究区首先进行多属性分析,优选出振幅包络、泊松比等7种地震属性,建立起地震属性与油气之间的非线性关系;然后对已钻遇岩性油气藏砂体进行油气预测,将预测结果和实际测井数据进行对比说明预测结果真实可靠;最后对潜在的岩性油气藏目标砂体进行油气预测,得到目标砂体的油气分布概率以及厚度图,从而指导油田岩性油气藏的勘探与开发。

【Abstract】 Due to poor quality of seismic data,rare well log data and low degree of development in ML oilfield,the hydrocarbon prediction is not satisfactory by using conventional impedance inversion.The multi-attribute probabilistic neural network can take advantage of pre-stack and post-stack seismic data,and it is applied for seismic attribute technique to enhance the seismic data utilization ratio.Firstly,the multi-attribute analysis has been carried out to optimize the amplitude envelope,poisson’s ratio and some other seven attributes.And then,probabilistic neural network algorithm is used to establish the nonlinear relationship between seismic attributes and hydrocarbon,and after that the distribution of hydrocarbon at the drilled sand has been predicted.It has been proved the prediction results are reliable for comparing the forecast results and the actual logging data.Finally,the distribution of hydrocarbon for the target sand body has been predicted and the probability and the thickness of the oil distribution can be achieved so as to provide guidance for the exploration and the development of lithologic reservoirs.The teleconology has achieved good effects in study area,and it is also worthy of learning for exploration and exploitation to the similar lithologic reservoirs.

【基金】 国家科技重大专项(2011ZX05023-002-007)
  • 【文献出处】 石油地质与工程 ,Petroleum Geology and Engineering , 编辑部邮箱 ,2013年03期
  • 【分类号】P631.44;P618.13
  • 【被引频次】2
  • 【下载频次】83
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