首页 | 本学科首页   官方微博 | 高级检索  
     

影响水力压裂效果的因素及人工神经网络评价
引用本文:孙东生,王红才,侯默,赵卫华,宋清新,刘振华,牛淑芳. 影响水力压裂效果的因素及人工神经网络评价[J]. 地质力学学报, 2006, 12(4): 485-491
作者姓名:孙东生  王红才  侯默  赵卫华  宋清新  刘振华  牛淑芳
作者单位:中国地质科学院地质力学研究所,北京,100081;中国地质科学院地质力学研究所,北京,100081;胜利油田滨南采油厂,山东,滨州,256606;武警沈阳指挥学院,辽宁,沈阳,110113;胜利油田滨南采油厂,山东,滨州,256606
基金项目:胜利油田滨南采油厂项目
摘    要:水力压裂是低渗透油气田提高开采效益的主要技术手段之一,但是影响水力压裂效果的因素较多,如地质特征、储层物性和地层能量等。为了达到理想的压裂效果,就要综合考虑各个影响因素之间的相互关系,找出影响压裂效果的主要因素。本文利用人工神经网络方法建立了数学评估模型并对已有的大量生产数据进行了网络训练和方法验证。结果证明所建立的压裂井潜能评估模型稳定性好,预测精度较高,对油田水力压裂的选井评层及产能预测具有一定的指导意义。 

关 键 词:水力压裂  影响因素  人工神经网络  压裂潜能评估
文章编号:1006-6616(2006)04-0485-07
收稿时间:2006-05-10
修稿时间:2006-05-10

FACTORS INFLUENCING THE EFFECTS OF HYDROFRACTURING IN A LOW-PERMEABILITY OILFIELD AND POTENTIAL EVALUATION USING ARTIFICIAL NEURAL NETWORK
SUN Dong-sheng,WANG Hong-cai,HOU Mo,ZHAO Wei-hu,SONG Qing-xin,LIU Zhen-hu,NIU Shu-fang. FACTORS INFLUENCING THE EFFECTS OF HYDROFRACTURING IN A LOW-PERMEABILITY OILFIELD AND POTENTIAL EVALUATION USING ARTIFICIAL NEURAL NETWORK[J]. Journal of Geomechanics, 2006, 12(4): 485-491
Authors:SUN Dong-sheng  WANG Hong-cai  HOU Mo  ZHAO Wei-hu  SONG Qing-xin  LIU Zhen-hu  NIU Shu-fang
Affiliation:1. Institute of Geomechanics, Chinese Academy of Geological Science, Beijing 100081, China;2. Binnan Oil Production Plant, Shengli Oilfield, Binzhou 256606, Binzhou 256606, Shandong, China;3. Shenyang Command College of the Chinese Armed Police Forces, Shenyang 110113, Liaoning, China
Abstract:Hydrofracturing is one of the main technical means for improving the recovery efficiency in low-permeability oil/gas fields. However, there are many factors that influence the hydrofractufing effects, including geological characteristics, physical properties of reservoirs and energy of strata. In order to obtain ideal hydrofracturing results, it is necessary to give a comprehensive consideration of the relationships between various influence factors and find out the main factors that influence the hydrofractufing effects. The authors constructed a mathematic evaluation model by using the artificial neural network method and performed net training and method check and verification of a wealth of available production data. The results prove that the constructed potential evaluation model using hydrofracturing wells has good stability and a high precision of prediction. It has certain guiding significance for choosing wells and evaluating layers for hydrofracturing and forecasting of the production capacity.
Keywords:hydrofracturing   influence factor   artificial neural network   potential evaluation
本文献已被 CNKI 维普 万方数据 等数据库收录!
点击此处可从《地质力学学报》浏览原始摘要信息
点击此处可从《地质力学学报》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号