Minglei Bai’s research while affiliated with The University of Hong Kong and other places

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (1)


TABLE 2 .
Fig. 5. Comparison between EMG models when filtering of a sample snippet of raw EMG. (a) raw EMG signal (in mV) of biceps brachii; (b) torque (in percentage maximum voluntary contraction (MVC) with flexion upward); (c) nonlinear Bayesian filter applied to the rectified EMG signal; (d) linear Butterworth filter applied to the rectified EMG signal with cutoff at 1 Hz.
Fig. 6. Performance metrics of able-bodied subjects. (A) Success Rate, (B) Break Rate, (C) Throughput. (*, p < 0.01; **, p < 0.001).
Fig. 7. The linear relationship between completion time (CT) and index of difficulty (ID) for able-bodied subjects. (A) Bayesian filtering (proportional feedback: y = 1.53x -3.11, R 2 = 0.874, p < 0.05; neuromorphic spindle: y = 1.19x -1.74, R 2 = 0.705, p < 0.05), and (B) Butterworth filtering (proportional feedback: y = 2.4x -6.33, R 2 = 0.665, p < 0.05; neuromorphic spindle: y = 1.23x -1.69, R 2 = 0.506, p = 0.113). The solid red lines indicate the proportional feedback and the solid green line indicate the neuromorphic feedback.
Fig. 8. Performance metrics of amputee subjects. (A) Success Rate, (B) Break Rate, (C) Throughput. (*, p < 0.01; **, p < 0.001).

+2

Enhancing Force Control of Prosthetic Controller for Hand Prosthesis by Mimicking Biological Properties
  • Article
  • Full-text available

September 2023

·

63 Reads

·

2 Citations

IEEE Journal of Translational Engineering in Health and Medicine

Qi Luo

·

Minglei Bai

·

Shuhan Chen

·

[...]

·

Ronghua Du

Prosthetic hands are frequently rejected due to frustrations in daily uses. By adopting principles of human neuromuscular control, it could potentially achieve human-like compliance in hand functions, thereby improving functionality in prosthetic hand. Previous studies have confirmed the feasibility of real-time emulation of neuromuscular reflex for prosthetic control. This study further to explore the effect of feedforward electromyograph (EMG) decoding and proprioception on the biomimetic controller. The biomimetic controller included a feedforward Bayesian model for decoding alpha motor commands from stump EMG, a muscle model, and a closed-loop component with a model of muscle spindle modified with spiking afferents. Real-time control was enabled by neuromorphic hardware to accelerate evaluation of biologically inspired models. This allows us to investigate which aspects in the controller could benefit from biological properties for improvements on force control performance. 3 able-bodied and 3 amputee subjects were recruited to conduct a “press-without-break” task, subjects were required to press a transducer till the pressure stabilized in an expected range without breaking the virtual object. We tested whether introducing more complex but biomimetic models could enhance the task performance. Data showed that when replacing proportional feedback with the neuromorphic spindle, success rates of amputees increased by 12.2% and failures due to breakage decreased by 26.3%. More prominently, success rates increased by 55.5% and failures decreased by 79.3% when replacing a linear model of EMG with the Bayesian model in the feedforward EMG processing. Results suggest that mimicking biological properties in feedback and feedforward control may improve the manipulation of objects by amputees using prosthetic hands.

Download

Citations (1)


... The fingers and hand were 3D printed from ABS plastic, and two microcontrollers were used to control the movement of the motors in the fingers and wrist [11]. Luo et al. [12] adapted principles of human neuromuscular control to develop a prosthetic hand that can mimic human-like compliance. In their study, they examined the effects of "feedforward EMG decoding and proprioception on the biomimetic controller" [12, p. 67] and explored its utility for guiding the future design of prosthetic hands. ...

Reference:

Board 14: Work in Progress: Exploring the Integration of Bio-Inspired Design Inventions in Biomedical Engineering
Enhancing Force Control of Prosthetic Controller for Hand Prosthesis by Mimicking Biological Properties

IEEE Journal of Translational Engineering in Health and Medicine