2 research outputs found
A Simulation Study of Functional Electrical Stimulation for An Upper Limb Rehabilitation Robot using Iterative Learning Control (ILC) and Linear models
A proportional iterative learning control (P-ILC) for linear models of an
existing hybrid stroke rehabilitation scheme is implemented for elbow
extension/flexion during a rehabilitative task. Owing to transient error growth
problem of P-ILC, a learning derivative constraint controller was included to
ensure that the controlled system does not exceed a predefined velocity limit
at every trial. To achieve this, linear transfer function models of the robot
end-effector interaction with a stroke subject (plant) and muscle response to
stimulation controllers were developed. A straight-line point-point trajectory
of 0 - 0.3 m range served as the reference task space trajectory for the plant,
feedforward, and feedback stimulation controllers. At each trial, a SAT-based
bounded error derivative ILC algorithm served as the learning constraint
controller. Three control configurations were developed and simulated. The
system performance was evaluated using the root means square error (RMSE) and
normalized RMSE. At different ILC gains over 16 iterations, a displacement
error of 0.0060 m was obtained when control configurations were combined.Comment: 15 pages, 16 Figure
Adaptive ankle impedance control for bipedal robotic upright balance
Upright balance control is a fundamental skill of bipedal robots for various tasks that are usually performed by human beings. Conventional robotic control is often realized by developing accurate dynamic models using a series of fixed torque-ankle states, but their success is subject to accurate physical and kinematic models. This can be particularly challenging when external disturbing forces present, but this is common in unstructured robotic working environments, leading to ineffective robotic control. To address such limitation, this paper presents an adaptive ankle impedance control method with the support of the advances of adaptive fuzzy inference systems, by which the desired ankle torques are generated in real time to adaptively meet the dynamic control requirement. In particular, the control method is initialised with specific external disturbing forces first representing a general situation, which then evolves whilst performing in a real-world working environment by acting on the feedback from the control system. This is implemented by initialising a rule base for a typical situation, and then allowing the rule base to evolve to specific robotic working environments. This closed loop feedback and action mechanism timely and effectively configures the control system to meet the dynamic control requirements. The proposed control method was applied to a bipedal robot on a moving vehicle for system validation and evaluation, with robotic loads ranging from 0 to 1.65 kg and external disturbances in terms of vehicle acceleration ranging from 0.5 to 1.5 m/s, leading to robotic swing angles up to 7.6º and anti-disturbance timespans up to 8.5 s. These experimental results demonstrate the power of the proposed upright balance control method in improving the robustness, and thus applicability, of bipedal robots