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Seismic inversion based on L1-norm misfit function and total variation regularization

机译:基于L1范数失配函数和总变化正则化的地震反演

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摘要

To solve the inverse problemswhen outliers exist in the seismic data and discontinuities such as layer boundaries need to be clearly delineated and merge the low frequency information to the inverted parameters. Methods: L1-norm misfit function, total variation regularization, a priori information constraints, method of Lagrange multipliers, and iteratively re-weighted least squares. Results and conclusions: Integrating the L1-norm misfit function, total variation regularization and a priori information constraints via the method of Lagrangemultipliers, we create the objective function of seismic inversion to solve the inverse problems that outliers exist in the seismic data and discontinuities such as layer boundaries need to be clearly delineated. In addition, the priori information constraints ensure the inverted parameters have low frequency components. Practice: The proposed inversion method is successfully tested on noisy synthetic seismic data with outliers and real seismic data. Implications: If there are a small number of outliers in the seismic data, we need to do the seismic inversion in a way that minimizes their effect on the estimated parameters. However, the L2-norm misfit function is highly susceptible to even small numbers of inconsistent seismic observations. As an alternative to L2-norm, one can consider the solution that minimizes the L1-norm misfit function (L1MF) which will be more outlier-resistant, or robust, than the L2-norm solution. Of course, there are some alternative techniques to find the favorable regularization parameters. A set of good regularization parameters is the key of the seismic inversion process.
机译:为了解决反问题,当地震数据中存在离群值并且需要清晰地描绘不连续性(例如层边界)并将低频信息合并到反演参数时。方法:L1-范数不匹配函数,总变化正则化,先验信息约束,拉格朗日乘数方法和迭代地重新加权最小二乘。结果与结论:通过拉格朗日乘子法对L1-范数失配函数,总变化正则化和先验信息约束进行积分,我们建立了地震反演的目标函数,以解决地震数据中存在离群值和不连续性等反问题。层边界需要清楚地划定。另外,先验信息约束确保反转参数具有低频分量。实践:所提出的反演方法已在含异常值和真实地震数据的嘈杂合成地震数据上成功进行了测试。含义:如果地震数据中有少量异常值,则需要以最小化其对估计参数的影响的方式进行地震反演。但是,L2范数失配函数极易受到少量不一致地震观测的影响。作为L2范数的替代方法,可以考虑使L1范数失配函数(L1MF)最小化的解决方案,该函数比L2范数解决方案具有更高的抗异常性或鲁棒性。当然,有一些替代技术可以找到合适的正则化参数。一组好的正则化参数是地震反演过程的关键。

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