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Reliability measures for statistical prediction of geophysical and geological parameters in geophysical prospecting

机译:地球物理勘探中地球物理和地质参数统计预测的可靠性措施

摘要

A method for assessing reliability of a prediction model constructed from N training data attribute vectors and N associated observed values of a specified parameter. Each training data attribute vector includes seismic attributes obtained from seismic data traces located at or near a well and each associated observed value is obtained from well log or core data from the well. A predicted value of the specified parameter is determined for each of the N training data attribute vectors, from the training data attribute vectors and the prediction model. A residual is determined for each of the N training data attribute vectors, as the difference between the associated observed value and the predicted value of the specified parameter for the training data attribute vector. An attribute vector for the designated location is determined. The predicted value of the specified parameter at the designated location is determined, from the attribute vector for the designated location and the prediction model. N basic probability distributions are determined from the N training data attribute vectors, the N associated observed values, the N residuals, and the predicted value. N basic probability assignments are determined for each of three hypotheses that the predicted value is reliable, unreliable, and unpredictable, respectively, from the N basic probability distributions. A reliability value, an unreliability value, and an unpredictability value for the predicted value are determined as combinations of the N basic probability assignments for each of the three hypotheses.
机译:一种评估预测模型可靠性的方法,该预测模型由N个训练数据属性向量和N个指定参数的关联观察值构成。每个训练数据属性向量包括从位于井眼处或附近的地震数据迹线获得的地震属性,并且每个相关的观测值是从井的测井曲线或岩心数据获得的。从训练数据属性向量和预测模型为N个训练数据属性向量中的每一个确定指定参数的预测值。为N个训练数据属性向量中的每一个确定一个残差,作为关联的观察值和训练数据属性向量的指定参数的预测值之间的差。确定指定位置的属性向量。根据指定位置的属性矢量和预测模型,确定指定位置的指定参数的预测值。从N个训练数据属性向量,N个相关观察值,N个残差和预测值确定N个基本概率分布。对于三个假设,分别从N个基本概率分布中确定了预测值可靠,不可靠和不可预测的三个假设,分别确定了N个基本概率分配。确定预测值的可靠性值,不可靠性值和不可预测性值作为三个假设中每一个的N个基本概率分配的组合。

著录项

  • 公开/公告号US2001044698A1

    专利类型

  • 公开/公告日2001-11-22

    原文格式PDF

  • 申请/专利权人 KIM CHUL-SUNG;

    申请/专利号US20000729576

  • 发明设计人 CHUL-SUNG KIM;

    申请日2000-12-04

  • 分类号G01V1/40;

  • 国家 US

  • 入库时间 2022-08-22 00:50:44

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