Adaptive PSO-LS-Wavelet H¡Ä control for Two-Wheeled Self-Balancing Scooter Askar Azizi, Hamid Nourisola*, Amin Sadeghi-Emamgholi, and Fahime Naderisafa
International Journal of Control, Automation, and Systems, vol. 15, no. 5, pp.2126-2137, 2017
Abstract : "The current study is concerned with adaptive Particle Swarm Optimization Least Square Wavelet H¡Ä for
a two-wheel self-balancing scooter that provides a platform in order to balance itself and transport the driver in
accordance to its natural lean. In order to keep the rider close to the upright position over smooth and non-smooth
surfaces, providing a stable control system is the main challenge for the aforementioned vehicle. For this purpose,
H¡Ä is combined with adaptive algorithm, Least Square Support Vector Machine (LS-SVM) and Particle Swarm
Optimization (PSO) to construct the adaptive control. The most important feature of the proposed control strategy
is its inherent robustness and ability to handle the nonlinear behavior of the system. Simulations results indicated
that the introduced motion control architecture is capable of providing appropriate control actions to achieve both
position control and trajectory tracking satisfactorily."
Keyword :
Adaptive H¡Ä, least square wavelet, particle swarm optimization, two-wheeled self-balancing scooter.
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