A novel approach to full waveform inversion (FWI), based on a data driven reduced order model (ROM) of the wave equation operator is introduced. The unknown medium is probed with pulses and the time domain pressure waveform data is recorded on an active array of sensors. The ROM, a projection of the wave equation operator is constructed from the data via a nonlinear process and is used for efficient velocity estimation. While the conventional FWI via nonlinear least-squares data fitting is challenging without low frequency information, and prone to getting stuck in local minima (cycle skipping), minimization of ROM misfit is behaved much better, even for a poor initial guess. For low-dimensional parametrizations of the unknown velocity the ROM misfit function is close to convex. The proposed approach consistently outperforms conventional FWI in standard synthetic tests.
翻译:基于数据驱动的波方程式减序模型(ROM),对波方程式操作员的全波方形反转(FWI)采用了一种新颖的方法。未知介质用脉冲探测,时间域压力波形数据记录在活跃的传感器阵列中。ROM,对波方方程式操作员的预测是通过非线性程序从数据中构建的,用于高效的速度估计。传统FWI通过非线性最低方位数据安装具有挑战性,没有低频信息,而且容易被困在本地微型(循环跳转)中,即使最初的猜测不力,也能够很好地最大限度地减少ROM的错位。对于未知速度的低维参数而言,ROM的错位功能接近连接。在标准合成试验中,拟议的方法一贯优于常规FWI。