石油学报 ›› 1996, Vol. 17 ›› Issue (4): 50-54.DOI: 10.7623/syxb199604007

• 地质勘探 • 上一篇    下一篇

应用人工神经网络识别碳酸盐岩相

吴新根, 葛家理   

  1. 石油大学 北京
  • 收稿日期:1994-01-06 修回日期:1994-08-09 出版日期:1996-10-25 发布日期:2013-07-08
  • 作者简介:吴新根,1991年毕业于北京航空航天大学计算机系.现为浙江大学生物医学工程研究所博士后研究生.通讯处:浙江省州杭市.邮政编码:310027
  • 基金资助:
    国家“863”高科技研究项目

AN APPLICATION OF ARTIFICIAL NEURAL NETWORKSTO RECOGNITION OF CARBONATE LITHOFACIES

Wu Xingen, Ge Jiali   

  1. Petroleum University, Beijing
  • Received:1994-01-06 Revised:1994-08-09 Online:1996-10-25 Published:2013-07-08

摘要: 采用典型的逆向传播学习神经网络,并根据学习样本较少的特点引入函数扩展模型,对输入各参量进行函数扩充,识别六种碳酸盐岩相,如潮坪、台坡等.神经网络经过样本学习后,能正确识别学习的样本,对测试的32组剖面样本也取得了85%的识别率.由于人工神经网络无需建立数学模型,学习过程通过自动调节神经元之间的连接权值完成,在选取有代表性的训练样本情况下,人工神经网络可以作为一种常用的模式判别方法.

关键词: 人工智能, 岩相, 海相, 碳酸盐相, 模式识别

Abstract: Artificial neural networks (ANNS)have been studied in recent years and applied to problems on pattern recognition in many fields.ANNs are a complex system consisting of a large number of simple processing units like human being's nerves by interacting with each other to be able to carry out highly nonlinear mapping.The backpropagation learning algorithm and the function-link model which needs only few training samples are introduced in this ANNs to recognize six kinds of carbonate lithofacies,such as tidal flat and platform ramp,etc.After learning,ANNs can correctly recognize and classify the trained samples and get up to 85% justification rate of the 32 tested samples.Since ANNs needn't establish mathematical model,instead,automatically adjust their connected weight values,ANNs can be popularly used as a common method for pattem recognition.

Key words: artificial neural ztetworks (ANNs), lithofacies, marane fades, carbonate lithofades, pattern recognition