Adaptive neuro-fuzzy control approach for a single inverted pendulum system

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Abstract

The inverted pendulum is an under-actuated and nonlinear system, which is also unstable. It is a single-input double-output system, where only one output is directly actuated. This paper investigates a single intelligent control system using an adaptive neuro-fuzzy inference system (ANFIS) to stabilize the inverted pendulum system while tracking the desired position. The non-linear inverted pendulum system was modelled and built using MATLAB Simulink. An adaptive neuro-fuzzy logic controller was implemented and its performance was compared with a Sugeno-fuzzy inference system in both simulation and real experiment. The ANFIS controller could reach its desired new destination in 1.5 s and could stabilize the entire system in 2.2 s in the simulation, while in the experiment it took 1.7 s to reach stability. Results from the simulation and experiment showed that ANFIS had better performance compared to the Sugeno-fuzzy controller as it provided faster and smoother response and much less steady-state error.

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APA

Al-Mekhlafi, M. A. A., Wahid, H., & Aziz, A. A. (2018). Adaptive neuro-fuzzy control approach for a single inverted pendulum system. International Journal of Electrical and Computer Engineering, 8(5), 3657–3665. https://doi.org/10.11591/ijece.v8i5.pp3657-3665

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