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Online Joint State Inference and Learning of Partially Unknown State-Space Models

Anton Kullberg, Isaac Skog, Gustaf Hendeby

2021IEEE Transactions on Signal Processing28 citationsDOIOpen Access PDF

Abstract

A computationally efficient method for online joint state inference and dynamical model learning is presented. The dynamical model combines an a priori known, physically derived, state-space model with a radial basis function expansion representing unknown system dynamics and inherits properties from both physical and data-driven modeling. The method uses an extended Kalman filter approach to jointly estimate the state of the system and learn the unknown system dynamics, via the parameters of the basis function expansion. The key contribution is a computational complexity reduction compared to a similar approach with globally supported basis functions. By using compactly supported radial basis functions and an approximate Kalman gain, the computational complexity is considerably reduced and is essentially determined by the support of the basis functions. The approximation works well when the system dynamics exhibit limited correlation between points well separated in the state-space domain. The method is exemplified via two intelligent vehicle applications where it is shown to: (i) have competitive system dynamics estimation performance compared to the globally supported basis function method, and (ii) be real-time applicable to problems with a large-scale state-space.

Topics & Concepts

Basis functionState spaceBasis (linear algebra)Kalman filterRadial basis functionInferenceA priori and a posterioriComputer scienceDynamical systems theoryMathematicsFunction (biology)State-space representationComputational complexity theoryMathematical optimizationAlgorithmArtificial intelligenceArtificial neural networkMathematical analysisEvolutionary biologyEpistemologyQuantum mechanicsBiologyStatisticsPhilosophyPhysicsGeometryTarget Tracking and Data Fusion in Sensor NetworksGaussian Processes and Bayesian InferenceControl Systems and Identification
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