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A Two-Stage Bayesian optimisation for Automatic Tuning of an Unscented Kalman Filter for Vehicle Sideslip Angle Estimation

Alberto Bertipaglia, Barys Shyrokau, Mohsen Alirezaei, Riender Happee

20222022 IEEE Intelligent Vehicles Symposium (IV)17 citationsDOIOpen Access PDF

Abstract

This paper presents a novel methodology to auto-tune an Unscented Kalman Filter (UKF). It involves using a Two-Stage Bayesian Optimisation (TSBO), based on a t-Student Process to optimise the process noise parameters of a UKF for vehicle sideslip angle estimation. Our method minimises performance metrics, given by the average sum of the states’ and measurement’ estimation error for various vehicle manoeuvres covering a wide range of vehicle behaviour. The predefined cost function is minimised through a TSBO which aims to find a location in the feasible region that maximises the probability of improving the current best solution. Results on an experimental dataset show the capability to tune the UKF in 79.9% less time than using a genetic algorithm (GA) and the overall capacity to improve the estimation performance in an experimental test dataset of 9.9% to the current state-of-the-art GA.

Topics & Concepts

Kalman filterRange (aeronautics)Computer scienceBayesian probabilityControl theory (sociology)Unscented transformNoise (video)Process (computing)Extended Kalman filterEngineeringArtificial intelligenceEnsemble Kalman filterControl (management)Operating systemAerospace engineeringImage (mathematics)Vehicle Noise and Vibration ControlAutonomous Vehicle Technology and SafetyVehicle Dynamics and Control Systems
A Two-Stage Bayesian optimisation for Automatic Tuning of an Unscented Kalman Filter for Vehicle Sideslip Angle Estimation | Litcius