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首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >Linearized and nonlinear parameter variance estimation for two-dimensional electromagnetic induction inversion
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Linearized and nonlinear parameter variance estimation for two-dimensional electromagnetic induction inversion

机译:二维电磁感应反演的线性化和非线性参数方差估计

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摘要

Linearized and nonlinear techniques are presented for determining estimates of parameter uncertainty within a two-dimensional iterative Born scheme. The scheme employs low frequency (<100 kHz) magnetic dipole sources in one well, and uses measurements of the vertical magnetic field in a second well to invert for the electrical conductivity distribution between the two boreholes. For computational efficiency a localized nonlinear approximation is employed to compute the sensitivity matrix. Parameter variance estimates are determined using an iterative Monte Carlo technique that assumes the data contain measurement noise, and that constraint assumptions imposed on the model are in error. The a posteriori model covariance matrix is determined statistically for the linearized technique by reunning the last iteration of the nonlinear inversion N times, each time adding random errors to the data and constraints. The nonlinear approach involves rerunning the full inversion N times. Two oil field examples from California indicate that the linearized approach produces the same general pattern in the uncertainty estimates as the nonlinear estimation process. However, the linearized estimates are smaller in magnitude and show less spatial variation compared to the full nonlinear estimates, and the deviation between the two techniques increases as the contrast between the maximum and minimum conductivities within the inversion domain becomes greater.
机译:提出了线性和非线性技术,用于确定二维迭代Born方案中参数不确定性的估计。该方案在一个井中使用低频(<100 kHz)磁偶极子源,并在第二个井中使用垂直磁场的测量值来求反,以求得两个井眼之间的电导率分布。为了提高计算效率,采用局部非线性近似来计算灵敏度矩阵。使用迭代蒙特卡洛技术确定参数方差估计,该方法假定数据包含测量噪声,并且强加给模型的约束假设有误。通过重新运行非线性反演的最后一次迭代N次,每次将随机误差添加到数据和约束条件中,对于线性化技术,统计确定后验模型协方差矩阵。非线性方法涉及将整个反演重新运行N次。来自加利福尼亚州的两个油田实例表明,线性化方法在不确定性估计中产生与非线性估计过程相同的一般模式。但是,与完全非线性估计相比,线性估计的幅度较小,并且空间变化较小,并且两种技术之间的偏差会随着反演域内最大电导率和最小电导率之间的对比度变大而增加。

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