A Continuous-Time Ensemble Kalman–Bucy Smoother for Causal Inference and Model Discovery
Abstract. Data assimilation (DA) integrates observational information with model predictions to improve state estimation in complex systems. While filtering provides the basis for online forecasts by using only past and present observations, it can exhibit delays and biases when the underlying dynamics evolve rapidly or undergo regime transitions. Smoothing, which additionally incorporates future observations, provides a natural pipeline for hindcasting and reanalysis that yields an uncertainty reduction beyond the filter. This paper introduces an ensemble Kalman–Bucy smoother (EnKBS) for continuous-time DA of nonlinear dynamical systems, where the smoother's conditional distributions are reconstructed using ensemble moments. The result is a derivative-free framework that does not require explicit computation of tangent-linear or adjoint models, which converges to the exact smoother solution at the infinite-ensemble limit for a wide class of complex systems. Incorporating standard regularization techniques for high-dimensional systems, such as covariance localization and inflation, the skill of the EnKBS is demonstrated in various important scientific problems. By integrating future observations, which reveal the underlying causal mechanisms for retrospective state updates, the EnKBS is used for Bayesian-based inference of causal relationships and their temporal influence range in a dyadic trigger-feedback model and the development of a causality-driven iterative learning algorithm that identifies the structure and recovers the hidden parameters of a nonlinear reduced-order model mimicking midlatitude atmospheric circulation. Notably, both tasks remain effective with an ensemble size of O(10) under partial observations, suggesting that EnKBS can support the instantaneous discovery of high-dimensional complex systems over time.
Status: open (until 28 Jul 2026)
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RC1: 'Comment on egusphere-2026-2552', Anonymous Referee #1, 20 Jun 2026
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This paper introduces a new data assimilation method called enkbs, which improves the ability to estimate the hidden states of complex systems by using information from both the past and the future instead of relying only on current observations. The authors argue that traditional filtering methods often struggle when systems change rapidly or experience sudden eventssince they can only react after those change beaome visible. Their proposed smoother also works in continuous time, avoids expensive derivative calculations. Overall I found the proposed idea novel and the contribution is f clear value, here lists my questions/comments before I can recommend the publication of this manuscript.1. Since EnKBS mainly relies on ensemble means and covariances, it is unclear to me whether it can accurately capture non gaussian distribution. Could the authors add some discussion in the manuscript.2. Since inflation/localization techniques are crucial for stability, it would be useful to know whether the method remains reliable when inflation/local parameters are chosen differently.3. It would be beneficial if the authors could discuss if/how the proposed enkbs could be coupled with modern AI-enhanced data assimilation scheme4. How dependent is performance on ensemble size (e.g., compared to traditional enkf approaches)? The paper highlights success with ensembles of O(10)but under what conditions does performance sharply deteriorate?Minor points1. In the paper the authros alternate between ‘DA methods’, ‘filtering methods’, ‘smothing algorithms’. It would be better to maintain more consistent terminology2. The paper is overall well written but please check some minor issues, e.g., ‘’allows for broad application(s)”, ““mean and covariance equation(s)”,..ReplyCitation: https://doi.org/
10.5194/egusphere-2026-2552-RC1
Model code and software
MATLAB code for A Continuous-Time Ensemble Kalman-Bucy Smoother for Causal Inference and Model Discovery Zhang Jiang, Marios Andreou, Sebastian Reich, and Nan Chen https://github.com/jiangzh67/EnKBS
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