OANDP-L
  • Login
No Result
View All Result
The O&P EDGE
  • PECOS
  • Magazine
    • Subscription
    • Current Issue
    • Issue Archive
    • News Archive
    • Product & Service Directory
    • Advertising Information
    • EDGE Flipbooks
  • O&P Jobs
    • Find a Job
    • Post a Job
  • EDGE Advantage
    • EA Homepage
    • EA Data
  • O&P Facilities
  • Resources
    • Product & Service Directory
    • Calendar
    • Contact
    • About Us
    • O&P Library
    • The Guide
    • Custom Publications
    • Advertising Information
    • EDGE Direct
    • Amplitude Media Group
  • PECOS
  • Magazine
    • Subscription
    • Current Issue
    • Issue Archive
    • News Archive
    • Product & Service Directory
    • Advertising Information
    • EDGE Flipbooks
  • O&P Jobs
    • Find a Job
    • Post a Job
  • EDGE Advantage
    • EA Homepage
    • EA Data
  • O&P Facilities
  • Resources
    • Product & Service Directory
    • Calendar
    • Contact
    • About Us
    • O&P Library
    • The Guide
    • Custom Publications
    • Advertising Information
    • EDGE Direct
    • Amplitude Media Group
No Result
View All Result
The O&P EDGE Magazine
No Result
View All Result
Home News

Reinforcement Learning Expedites Tuning of Prostheses

by The O&P EDGE
January 21, 2019
in News
0
SHARES
25
VIEWS
Share on FacebookShare on Twitter

Researchers from North Carolina State University (NC State), the University of North Carolina (UNC), and Arizona State University (ASU) have developed an intelligent system for tuning powered prosthetic knees, allowing patients to walk comfortably with the device in about ten minutes. The system is the first to rely solely on reinforcement learning to tune the robotic prosthesis, according to the research team. The new tuning system adjusts 12 different control parameters to address prosthesis dynamics, such as joint stiffness, throughout the gait cycle.

A paper about the development, “Online Reinforcement Learning Control for the Personalization of a Robotic Knee Prosthesis,” was published January 16 in IEEE Transactions on Cybernetics.

“We begin by giving a patient a powered prosthetic knee with a randomly selected set of parameters,” says Helen Huang, PhD, co-author of the paper on the work and a professor in the Joint Department of Biomedical Engineering at NC State and UNC. “We then have the patient begin walking under controlled circumstances.

“Data on the device and the patient’s gait are collected via a suite of sensors in the device,” she says. “A computer model adapts parameters on the device and compares the patient’s gait to the profile of a normal walking gait in real time. The model can tell which parameter settings improve performance and which settings impair performance. Using reinforcement learning, the computational model can quickly identify the set of parameters that allows the patient to walk normally. Existing approaches, relying on trained clinicians, can take half a day.”

While the work is currently done in a controlled, clinical setting, one goal is to develop a wireless version of the system, which would allow users to continue fine-tuning the powered prosthesis parameters in real-world environments.

“This work was done for scenarios in which a patient is walking on a level surface, but in principle, we could also develop reinforcement learning controllers for situations such as ascending or descending stairs,” says Jennie Si, PhD, co-author of the paper and a professor of electrical, computer and energy engineering at ASU.

“I have worked on reinforcement learning from the dynamic system control perspective, which takes into account sensor noise, interference from the environment, and the demand of system safety and stability,” Si says. “We are thrilled to find out that our reinforcement learning control algorithm actually did learn to make the prosthetic device work as part of a human body in such an exciting applications setting.”

The researchers note that other questions will need to be addressed before the algorithm is available for widespread use.

“For example, the prosthesis tuning goal in this study is to meet normative knee motion in walking,” Huang says. “We did not consider other gait performance (such as gait symmetry) or the user’s preference. For another example, our tuning method can be used to fine-tune the device outside of the clinics and labs to make the system adaptive over time with the user’s need. However, we need to ensure the safety in real-world use since errors in control might lead to stumbling and falls. Additional testing is needed to show safety.”

Related posts:

  1. The Dawn of Powered Lower-limb Prostheses
  2. The Present and Future of Powered Knees
  3. Powered Prosthetic Feet: The Second Chapter
  4. Empowering Patients With Therapeutic Gait Training
Previous Post

OPAF Names Director of Education

Next Post

Hanger Announces 4Q, Full Year Earnings Conference Call

Next Post

Hanger Announces 4Q, Full Year Earnings Conference Call

 SUBSCRIBE FOR FREE

 

O&P JOBS

Eastern

Certified Prosthetist/ Clinic Manager

Eastern

Certified Orthotic Fitter / Certified Assistant or Pedorthist

Central

Texas available- CPO, CP, CPA, 

Linkedin X-twitter Facebook

Get unlimited access!

Join EDGE ADVANTAGE and unlock The O&P EDGE's vast library of archived content.
SUBSCRIBE TODAY
The O&P EDGE Magazine
 
Required 'Candidate' login to applying this job. Click here to logout And try again
 

Login to your account

  • Forgot Password?

Reset Password

  • Already have an account? Login

Enter the username or e-mail you used in your profile. A password reset link will be sent to you by email.

Close
No Result
View All Result
  • PECOS
  • MAGAZINE
    • SUBSCRIBE
    • CURRENT ISSUE
    • ISSUE ARCHIVE
    • NEWS ARCHIVE
    • PRODUCTS & SERVICES DIRECTORY
    • ADVERTISING INFORMATION
  • O&P JOBS
    • FIND A JOB
    • POST A JOB
  • EDGE ADVANTAGE
    • EA Homepage
    • EA Data
  • FACILITIES
  • RESOURCES
    • PRODUCTS & SERVICES DIRECTORY
    • CALENDAR
    • CONTACT
    • ABOUT US
    • O&P LIBRARY
    • THE GUIDE
    • CUSTOM PUBLICATIONS
    • ADVERTISING INFORMATION
    • EDGE DIRECT
    • AMPLITUDE
  • OANDP-L
  • LOGIN

© 2026 The O&P EDGE

Not enough quota to unlock this post
Unlock left : 0
Are you sure want to cancel subscription?
 

Account Activation

Before you can login, you must activate your account with the code sent to your email address. If you did not receive this email, please check your junk/spam folder. Click here to resend the activation email. If you entered an incorrect email address, you will need to re-register with the correct email address.

 

© 2026 The O&P EDGE

  • About
  • Advertise
  • Contact
  • EDGE Advantage
  • OANDP-L
  • Subscribe

CONTACT US

866-613-0257

info@opedge.com

201 E. 4th St.
Loveland, CO 80537

EDGE DIRECT

The most important industry news and events delivered directly to your inbox every week.

  • About
  • Advertise
  • Contact
  • EDGE Advantage
  • OANDP-L
  • Subscribe

© 2026 The O&P EDGE

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In
The O&P EDGE Magazine
 
Required 'Candidate' login to applying this job. Click here to logout And try again
 

Login to your account

  • Forgot Password?

Reset Password

  • Already have an account? Login

Enter the username or e-mail you used in your profile. A password reset link will be sent to you by email.

Close
No Result
View All Result
  • PECOS
  • MAGAZINE
    • SUBSCRIBE
    • CURRENT ISSUE
    • ISSUE ARCHIVE
    • NEWS ARCHIVE
    • PRODUCTS & SERVICES DIRECTORY
    • ADVERTISING INFORMATION
  • O&P JOBS
    • FIND A JOB
    • POST A JOB
  • EDGE ADVANTAGE
    • EA Homepage
    • EA Data
  • FACILITIES
  • RESOURCES
    • PRODUCTS & SERVICES DIRECTORY
    • CALENDAR
    • CONTACT
    • ABOUT US
    • O&P LIBRARY
    • THE GUIDE
    • CUSTOM PUBLICATIONS
    • ADVERTISING INFORMATION
    • EDGE DIRECT
    • AMPLITUDE
  • OANDP-L
  • LOGIN

© 2026 The O&P EDGE

Not enough quota to unlock this post
Unlock left : 0
Are you sure want to cancel subscription?
 

Account Activation

Before you can login, you must activate your account with the code sent to your email address. If you did not receive this email, please check your junk/spam folder. Click here to resend the activation email. If you entered an incorrect email address, you will need to re-register with the correct email address.