TR2024-177
Asynchronous Variational-Bayes Kalman Filtering
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- "Asynchronous Variational-Bayes Kalman Filtering", IEEE Conference on Decision and Control (CDC), December 2024. ,
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Research Areas:
Abstract:
We consider the joint state and measurement- noise parameter estimation problem for nonlinear state-space models with asynchronous, variable-rate, and independent measurement sources. We approach the problem using variational Bayes Kalman filters (VB-KFs). By leveraging that the measurements from different sources are independent, we develop an asynchronous VB-KF (AVB-KF), which processes measurements from different sources sequentially and at a variable rate. Hence, in the measurement update step, we only update the noise parameters of measurements that have been processed at a particular time step. This results in faster computations, especially as the measurement dimension and the number of sensors grow. We validate the approach on a realistic application of autonomous mobile-robot platooning, where we perform fusion of multiple sensor modalities with time-varying noise characteristics. The results indicate more than a factor of two improvements measured as a time-averaged absolute error compared to a nonadaptive implementation.
Related News & Events
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NEWS MERL researchers present 7 papers at CDC 2024 Date: December 16, 2024 - December 19, 2024
Where: Milan, Italy
MERL Contacts: Ankush Chakrabarty; Vedang M. Deshpande; Stefano Di Cairano; James Queeney; Abraham P. Vinod; Avishai Weiss; Gordon Wichern
Research Areas: Artificial Intelligence, Control, Dynamical Systems, Machine Learning, Multi-Physical Modeling, Optimization, RoboticsBrief- MERL researchers presented 7 papers at the recently concluded Conference on Decision and Control (CDC) 2024 in Milan, Italy. The papers covered a wide range of topics including safety shielding for stochastic model predictive control, reinforcement learning using expert observations, physics-constrained meta learning for positioning, variational-Bayes Kalman filtering, Bayesian measurement masks for GNSS positioning, divert-feasible lunar landing, and centering and stochastic control using constrained zonotopes.
As a sponsor of the conference, MERL maintained a booth for open discussions with researchers and students, and hosted a special session to discuss highlights of MERL research and work philosophy.
In addition, Ankush Chakrabarty (Principal Research Scientist, Multiphysical Systems Team) was an invited speaker in the pre-conference Workshop on "Learning Dynamics From Data" where he gave a talk on few-shot meta-learning for black-box identification using data from similar systems.
- MERL researchers presented 7 papers at the recently concluded Conference on Decision and Control (CDC) 2024 in Milan, Italy. The papers covered a wide range of topics including safety shielding for stochastic model predictive control, reinforcement learning using expert observations, physics-constrained meta learning for positioning, variational-Bayes Kalman filtering, Bayesian measurement masks for GNSS positioning, divert-feasible lunar landing, and centering and stochastic control using constrained zonotopes.