Fuzzy Adaptive Control for a 4-DOF Hand Rehabilitation Robot
Paul Tucan, Oana-Maria Vanta, Călin Vaida, M Ciupe, Dragos Sebeni, Adrian Pîslă, Simona Stiole, David Mihai Lupu, Zoltán Zsigmond Major, Bogdan Gherman, Vasile Bulbucan, Ionut Zima, José Machado, Doina Pîslă
- Year
- 2025
- Citations
- 3
- Access
- Open access
Abstract
This paper presents the development of a fuzzy-PID control able to adapt to several robot–patient interaction modes by monitoring patient evolution during the rehabilitation procedure. This control system is designed to provide targeted rehabilitation therapy through three interaction modes: passive; active–assistive; and resistive. By integrating a fuzzy inference system into the classical PID architecture, the FPID controller dynamically adjusts control gains in response to tracking error and patient effort. The simulation results indicate that, in passive mode, the FPID controller achieves a 32% lower RMSE, reduced overshoot, and a faster settling time compared to the conventional PID. In the active–assistive mode, the FPID demonstrates enhanced responsiveness and reduced error lag when tracking a sinusoidal reference, while in resistive mode, it more effectively compensates for imposed load disturbances. A rehabilitation scenario simulating repeated motion cycles on a healthy subject further confirms that the FPID controller consistently produces a lower overall RMSE and variability.
Keywords
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