用于试井解释模型识别的HT-BP神经网络系统的开发

W. Sung, I. Yoo, S. Ra, H. Park
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引用次数: 14

摘要

神经网络技术作为人工智能(AI)的一个分支,在工程的各个领域都是一种很好的模型分类器,特别是在石油工程试井解释模型(WTIM)识别中得到了广泛的应用。传统上,WTIM的识别是通过图形分析方法进行的,这需要经验丰富的专家。近年来,人们提出了一种带有BP学习算法的神经网络技术,它不同于人工智能技术如符号方法,它必须伴随着平滑、分割、符号变换等数据准备过程。本文利用霍夫变换(Hough transform, HT)技术开发了BP神经网络,克服了数据选择问题,使用单个神经网络代替序列网络。在图像处理和计算机视觉技术中,霍夫变换方法已被证明是形状检测的有力工具。在此基础上,根据实际试井数据,分两步进行了一系列作业。首先,利用新开发的人工智能模型ANNIS (Artificial intelligence Neural Network Identification System)对WTIM进行识别。其次,采用改进的Levenberg-Marquartmore»方法建立试井模型,获取储层特征;结果表明,对于存在噪声点、缺失点和多余点的数据,ANNIS模型是非常可靠的。结果表明,储层参数得到了很好的估计。«少
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Development of the HT-BP Neural Network System for the Identification of a Well-Test Interpretation Model
The neural network technique that is a field of artificial intelligence (AI) has proved to be a good model classifier in all areas of engineering and especially, it has gained a considerable acceptance in well test interpretation model (WTIM) identification of petroleum engineering. Conventionally, identification of the WTIM has been approached by graphical analysis method that requires an experienced expert. Recently, neural network technique equipped with back propagation (BP) learning algorithm was presented and it differs from the AI technique such as symbolic approach that must be accompanied with the data preparation procedures such as smoothing, segmenting, and symbolic transformation. In this paper, we developed BP neural network with Hough transform (HT) technique to overcome data selection problem and to use single neural network rather sequential nets. The Hough transform method was proved to be a powerful tool for the shape detection in image processing and computer vision technologies. Along these lines, a number of exercises were conducted with the actual well test data in two steps. First, the newly developed AI model, namely, ANNIS (Artificial intelligence Neural Network Identification System) was utilized to identify WTIM. Secondly, we obtained reservoir characteristics with the well test model equipped with modified Levenberg-Marquartmore » method. The results show that ANNIS was proved to be quite reliable model for the data having noisy, missing, and extraneous points. They also demonstrate that reservoir parameters were successfully estimated.« less
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