The ensemble Kalman filter is a well-known and celebrated data assimilation algorithm. It is of particular relevance as it used for high-dimensional problems, by updating an ensemble of particles through a sample mean and covariance matrices. In this chapter we present a relatively recent topic which is the application of the EnKF to inverse problems, known as ensemble Kalman Inversion (EKI). EKI is used for parameter estimation, which can be viewed as a black-box optimizer for PDE-constrained inverse problems. We present in this chapter a review of the discussed methodology, while presenting emerging and new areas of research, where numerical experiments are provided on numerous interesting models arising in geosciences and numerical weather prediction.
翻译:共通卡勒曼过滤器是一个众所周知和著名的数据同化算法,它通过样本平均值和共变矩阵更新粒子集合,对高维问题特别相关,因为它通过样本平均值和共变矩阵更新了粒子组合。本章我们介绍一个较近期的专题,即EnKF用于反向问题,称为共通卡尔曼转换(EKI),EKI用于参数估计,可被视为受PDE制约的反问题黑盒优化器。我们本章回顾讨论过的方法,同时介绍新的和新的研究领域,对地质科学和数字天气预测中产生的许多有趣的模型进行数字实验。