Online Parameter-State Estimation with Uncertainty Quantification via Variational Inference

Analysis

This paper addresses the critical problem of online joint estimation of parameters and states in dynamical systems, crucial for applications like digital twins. It proposes a computationally efficient variational inference framework to approximate the intractable joint posterior distribution, enabling uncertainty quantification. The method's effectiveness is demonstrated through numerical experiments, showing its accuracy, robustness, and scalability compared to existing methods.
Reference / Citation
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"The paper presents an online variational inference framework to compute its approximation at each time step."
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ArXivDec 31, 2025 18:52
* Cited for critical analysis under Article 32.