skf
On-line learning of dynamic systems: sparse regression meets Kalman filtering
Pillonetto, Gianluigi, Yazdani, Akram, Aravkin, Aleksandr
Learning governing equations from data is central to understanding the behavior of physical systems across diverse scientific disciplines, including physics, biology, and engineering. The Sindy algorithm has proven effective in leveraging sparsity to identify concise models of nonlinear dynamical systems. In this paper, we extend sparsity-driven approaches to real-time learning by integrating a cornerstone algorithm from control theory -- the Kalman filter (KF). The resulting Sindy Kalman Filter (SKF) unifies both frameworks by treating unknown system parameters as state variables, enabling real-time inference of complex, time-varying nonlinear models unattainable by either method alone. Furthermore, SKF enhances KF parameter identification strategies, particularly via look-ahead error, significantly simplifying the estimation of sparsity levels, variance parameters, and switching instants. We validate SKF on a chaotic Lorenz system with drifting or switching parameters and demonstrate its effectiveness in the real-time identification of a sparse nonlinear aircraft model built from real flight data.
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A switching Kalman filter approach to online mitigation and correction of sensor corruption for inertial navigation
Mustaev, Artem, Galioto, Nicholas, Boler, Matt, Jakeman, John D., Safta, Cosmin, Gorodetsky, Alex
This paper introduces a novel approach to detect and address faulty or corrupted external sensors in the context of inertial navigation by leveraging a switching Kalman Filter combined with parameter augmentation. Instead of discarding the corrupted data, the proposed method retains and processes it, running multiple observation models simultaneously and evaluating their likelihoods to accurately identify the true state of the system. We demonstrate the effectiveness of this approach to both identify the moment that a sensor becomes faulty and to correct for the resulting sensor behavior to maintain accurate estimates. We demonstrate our approach on an application of balloon navigation in the atmosphere and shuttle reentry. The results show that our method can accurately recover the true system state even in the presence of significant sensor bias, thereby improving the robustness and reliability of state estimation systems under challenging conditions. We also provide a statistical analysis of problem settings to determine when and where our method is most accurate and where it fails.
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SKF Acquires Industrial Artificial Intelligence Company
SKF has acquired Presenso Ltd., a company that develops and deploys artificial intelligence (AI)-based software for improving machine performance. Presenso's AI capability enables production plants to find and act on anomalies that were previously undetectable, automatically and without the need to employ additional data scientists. Presenso's solution is used by industrial plants to increase production output and revenue by reducing the incidence of unplanned asset downtime. Presenso, located in Haifa, Israel, built its solution based on innovations in the field of Automated Machine Learning or AutoML. AutoML accelerates the rate of AI deployment, enabling plants to scale industrial analytics across a large asset base.
- Asia > Middle East > Israel > Haifa District > Haifa (0.28)
- Europe > Sweden > Vaestra Goetaland > Gothenburg (0.06)