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An Improved 3D Joint Inversion Method of Potential Field Data Using Cross-Gradient Constraint and LSQR Method

机译:跨梯度约束和LSQR方法改进了潜在场数据的改进的3D联合反演方法

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摘要

The joint interpretation of two sets of geophysical data related to the same source is an appropriate method for decreasing non-uniqueness of the resulting models during inversion process. Among the available methods, a method based on using cross-gradient constraint combines two datasets is an efficient approach. This method, however, is time-consuming for 3D inversion and cannot provide an exact assessment of situation and extension of anomaly of interest. In this paper, the first attempt is to speed up the required calculation by substituting singular value decomposition by least-squares QR method to solve the large-scale kernel matrix of 3D inversion, more rapidly. Furthermore, to improve the accuracy of resulting models, a combination of depth-weighing matrix and compacted constraint, as automatic selection covariance of initial parameters, is used in the proposed inversion algorithm. This algorithm was developed in Matlab environment and first implemented on synthetic data. The 3D joint inversion of synthetic gravity and magnetic data shows a noticeable improvement in the results and increases the efficiency of algorithm for large-scale problems. Additionally, a real gravity and magnetic dataset of Jalalabad mine, in southeast of Iran was tested. The obtained results by the improved joint 3D inversion of cross-gradient along with compacted constraint showed a mineralised zone in depth interval of about 110-300m which is in good agreement with the available drilling data. This is also a further confirmation on the accuracy and progress of the improved inversion algorithm.
机译:与相同源相关两组地球物理数据的联合解释是在反转过程中降低所得模型的非唯一性的适当方法。在可用方法中,基于横梯度约束的方法组合了两个数据集是一种有效的方法。然而,这种方法对于3D反演是耗时的,并且不能提供对感兴趣异常的情况和扩展的精确评估。在本文中,第一次尝试是通过将奇异值分解通过最小二乘QR方法来加速所需的计算来解决3D反转的大规模核矩阵,更快。此外,为了提高所得模型的准确性,使用深度称重矩阵和压实约束的组合,作为初始参数的自动选择协方差,以所提出的反演算法使用。该算法是在MATLAB环境中开发的,首先在合成数据上实现。合成重力和磁数据的3D联合反转显示了结果的显着提高,提高了大规模问题的算法效率。此外,还测试了伊朗东南部墨西哥山羊矿的真正重力和磁性数据集。通过交叉梯度的改进的关节3D反转的所得结果以及压实的约束显示了矿化区,深度间隔约为110-300M,这与可用的钻井数据很好。这也进一步确认了改进的反演算法的准确性和进展。

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