论文标题
促进最小二乘反向时间迁移的时域稀疏性随源估计
Time-domain sparsity promoting least-squares reverse time migration with source estimation
论文作者
论文摘要
最小二乘反向时间迁移以其能力在最小二乘中拟合观察到的数据生成无伪影的真实幅度地下图像而闻名。但是,当应用于现实的成像问题时,这种方法面临着与许多波动方程式求解的过度拟合和过度计算成本有关的问题。源函数未知的事实使这种情况更加复杂。由随机优化和转化域稀疏促进的最新结果的激励,我们证明了反转的计算成本可以显着降低,同时避免成像伪像并恢复幅度。尽管强大,但这些新方法确实需要有关源时间函数的准确信息,这通常缺乏。没有这些信息,成像质量会迅速恶化。我们通过提出一种方法来解决此问题,该方法通过称为可变投影的技术即时估算源时间函数。除了引入可忽略不计的计算开销外,提出的方法还显示出在嘈杂的数据和涉及复杂设置(例如盐)的问题的成像问题上表现良好。无论哪种情况,提出的方法都会产生高分辨率的高振幅保真度图像,包括源时间函数的估计。此外,由于使用随机优化,我们以大约是涉及所有数据的常规反向时间迁移成本的一到两倍的成本来获得这些图像。
Least-squares reverse time migration is well-known for its capability to generate artifact-free true-amplitude subsurface images through fitting observed data in the least-squares sense. However, when applied to realistic imaging problems, this approach is faced with issues related to overfitting and excessive computational costs induced by many wave-equation solves. The fact that the source function is unknown complicates this situation even further. Motivated by recent results in stochastic optimization and transform-domain sparsity-promotion, we demonstrate that the computational costs of inversion can be reduced significantly while avoiding imaging artifacts and restoring amplitudes. While powerful, these new approaches do require accurate information on the source-time function, which is often lacking. Without this information, the imaging quality deteriorates rapidly. We address this issue by presenting an approach where the source-time function is estimated on the fly through a technique known as variable projection. Aside from introducing negligible computational overhead, the proposed method is shown to perform well on imaging problems with noisy data and problems that involve complex settings such as salt. In either case, the presented method produces high resolution high-amplitude fidelity images including an estimates for the source-time function. In addition, due to its use of stochastic optimization, we arrive at these images at roughly one to two times the cost of conventional reverse time migration involving all data.