Nonlinear State Estimation in Mobile Robots using a Fuzzy Observer
Authors: | Schmidt Rodrigo Carrasco, Pontificia Universidad Católica de Chile, Chile Cipriano Aldo, Pontificia Universidad Católica de Chile, Chile Carelli Ricardo, Universidad Nacional de San Juan, Argentina |
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Topic: | 4.3 Robotics |
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Session: | Positioning and Estimation |
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Keywords: | Fuzzy modelling, Kalman filters, Mobile robots, State estimation, Robotics. |
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Abstract
The performance of model based fault detection and identification systems can be improved by designing more accurate estimation methods. This work presents a novel implementation of a nonlinear Kalman filter based on the Takagi–Sugeno (TS) fuzzy structure, for a mobile robot. First, a TS model is derived from the robot kinematic equations, which is optimized through genetic algorithms to obtain an accurate model. Based on this model, several linear Kalman filters are combined using fuzzy logic, designing a nonlinear state estimator. Finally, the resulting fuzzy nonlinear observer is compared with the conventional extended Kalman filter, showing an improvement in performance and robustness.