Polina Ryabkova
Publications:
|
Miklin A. A., Ryabkova P. M., Strokov D. I., Feofanov I. S., Feder B. M., Grigorov M. Y., Kulminskiy D. D.
Abstract
This article presents the results of a study exploring sensorimotor integration in upperlimb
prostheses through the development of a prototype noninvasive adaptive control system
for a bionic hand prosthesis. The study focuses on creating sensory feedback that replicates the
properties of biofeedback with a focus on signals from the fingertips, unlike most studies that focus
on recognizing patterns in electromyogramm (EMG) signals. The prototype integrates a twocomponent
sensor system into a bionic hand prosthesis model with five independent servomotors.
This system consists of a surface EMG sensor, which detects muscle activation intent, and thinfilm
resistive pressure sensors embedded in the fingertips. The algorithm processes normalized
EMG and pressure data in real time using a programmable microcontroller, implementing closedloop
grip force adjustment. Key developments include dynamic calibration using the RMS signal
envelope, multi-input PID controllers (tuned using the Ziegler – Nichols method) to minimize
overshoot, and low-latency force adaptation for objects with variable compliance. The study
also included numerical simulations using the Kelvin – Voigt contact model to simulate fingertip
contact with soft and rigid materials. A series of experiments using the proposed prototype
were conducted for comparison with the numerical simulations. The experimental results are
consistent with the numerical simulations, with a smoother increase in force observed when
interacting with the soft material. However, the experimental data differ from the model data
for a given force setpoint and also have a dead zone associated with the characteristics of the
force sensors used in the prototype. This research lays the foundation for accessible adaptive
prosthetics and has direct applications in robotic systems.
|
