Full waveform inversion (FWI) commonly stands for the state-of-the-art approach for imaging subsurface structures and physical parameters, however, its implementation usually faces great challenges, such as building a good initial model to escape from local minima, and evaluating the uncertainty of inversion results. In this paper, we propose the implicit full waveform inversion (IFWI) algorithm using continuously and implicitly defined deep neural representations. Compared to FWI, which is sensitive to the initial model, IFWI benefits from the increased degrees of freedom with deep learning optimization, thus allowing to start from a random initialization, which greatly reduces the risk of non-uniqueness and being trapped in local minima. Both theoretical and experimental analyses indicates that, given a random initial model, IFWI is able to converge to the global minimum and produce a high-resolution image of subsurface with fine structures. In addition, uncertainty analysis of IFWI can be easily performed by approximating Bayesian inference with various deep learning approaches, which is analyzed in this paper by adding dropout neurons. Furthermore, IFWI has a certain degree of robustness and strong generalization ability that are exemplified in the experiments of various 2D geological models. With proper setup, IFWI can also be well suited for multi-scale joint geophysical inversion.
翻译:全面波形反转法(FWI)通常代表成像次表层结构和物理参数的最先进方法(FWI),但是,其实施通常面临巨大挑战,例如建立良好的初始模型以摆脱本地迷你,并评估反向结果的不确定性。在本文件中,我们提议采用连续和隐含定义的深神经表征,进行隐含的全波形反转算法(IFWI)算法。与FWI相比,IFWI对初始模型十分敏感,它从深度优化学习的自由程度的提高中受益,从而从随机初始化开始,这大大降低了不统一的风险,并被困在本地迷你中。两种理论和实验分析都表明,根据随机初步模型,IFWIFI能够与全球最低值趋同,并产生高分辨率的表层下微结构图象。此外,对IFWIF的不确定性分析很容易通过采用各种深度的推理推理法进行,本文通过增加辍学神经来分析。此外,IWIFWIFIF具有某种一定程度的稳健和强大的普遍化能力,同时在IFFD2级上进行各种的模型。