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Borehole electrical resistivity modeling using neural networks

机译:使用神经网络的井眼电阻率建模

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摘要

A neural network approach has been applied to model downhole resistivity tools, i.e., to generate a synthetic tool response for a given earth resistivity model. The microlaterolog (MLL), shallow dual laterolog (DLLs), and deep dual laterolog (DLLd) tools are modeled using neural networks to demonstrate this approach. Efforts have been made to select various neural network parameters, including the type of neural network, the length of input data for training, the number of hidden nodes, and the number of training samples. A modular neural network (MNN) has been selected because it can facilitate the training and prediction of tool responses in formations with large resistivity variations. The input data for training are taken to be the model formation resistivity values sampled over a depth window. The window length is chosen based on the tool lengths. Three different window lengths are used for experiments: 6.1, 9.1, and 30.5 m. We found the longer window lengths generally have higher modeling accuracy for the three different types of logging tools. The number of hidden nodes needed to yield satisfactory training and prediction data varies from 8 to 25, depending on the type of tool and the window length. Up to 30 000 training samples have been collected to train the MNN. Our modeling examples show that the trained MNN can achieve about 90% accuracy for the MLL log response and about 83% accuracy for the DLLs and DLLd responses. The modeling errors can be described roughly with a Gaussian distribution.
机译:神经网络方法已被用于对井下电阻率工具进行建模,即为给定的地球电阻率模型生成综合工具响应。使用神经网络对微latelog(MLL),浅层双重记录(DLL)和深层双重记录(DLLd)工具进行建模,以证明这种方法。已经努力选择各种神经网络参数,包括神经网络的类型,用于训练的输入数据的长度,隐藏节点的数量以及训练样本的数量。选择了模块化神经网络(MNN),因为它可以方便地训练和预测具有大电阻率变化的地层中的工具响应。用于训练的输入数据被视为在深度窗口上采样的模型地层电阻率值。窗口长度是根据工具长度选择的。实验使用了三种不同的窗口长度:6.1、9.1和30.5 m。我们发现,对于三种不同类型的测井工具,较长的窗口长度通常具有较高的建模精度。产生令人满意的训练和预测数据所需的隐藏节点数从8到25不等,具体取决于工具的类型和窗口长度。已经收集了多达30 000个训练样本来训练MNN。我们的建模示例表明,训练有素的MNN可以达到MLL日志响应的大约90%的准确度以及DLL和DLLd响应的大约83%的准确度。建模误差可以用高斯分布粗略地描述。

著录项

  • 来源
    《Geophysics》 |2002年第6期|p.1790-1797|共8页
  • 作者单位

    ChevronTexaco Exploration and Production Technology Company, 4800 Furnace Place, Bellaire, Texas 77401;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 地球物理学;
  • 关键词

  • 入库时间 2022-08-18 00:19:53

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