Sidebar

  • Magazine
  • Events
  • Videos
  • Gallery
  • Blog
  • Gantry Home

Magazine menu

  • Home
  • News
    • China News
    • Religion
  • lifestyle
  • Tech
  • Financial
  • Military
  • Entertainment
  • Politics
  • Health
  • Sport
  • Environment
  • Opinion
  • Weather
  • Podcasts
  • Video
  • Ads
The Power of Truth®
Friday, May 09, 2025
Friday, May 09, 2025
  • Home
  • News
    • China News
    • Religion
  • lifestyle
  • Tech
  • Financial
  • Military
  • Entertainment
  • Politics
  • Health
  • Sport
  • Environment
  • Opinion
  • Weather
  • Podcasts
  • Video
  • Ads
  1. You are here:  
  2. Health

Decoding the neural key to how humans efficiently walk at varied speeds

Details
Staff logo
22 January 2024
Health
  • Previous Article Mechanism linking anxiety to testosterone
  • Next Article Liquid laundry detergent packet exposure burden
We may not think about it while doing it, but our nervous system is directing our bones, joints, muscles, tendons, and more to move as efficiently as possible at varying speeds. Replicating this in robots is notoriously difficult. But now, researchers have created a model that makes this possible, thanks in large part to an innovative algorithm.
We may not think about it while doing it, but our nervous system is directing our bones, joints, muscles, tendons, and more to move as efficiently as possible at varying speeds. Replicating this in robots is notoriously difficult. But now, researchers have created a model that makes this possible, thanks in large part to an innovative algorithm.

Read more https://www.sciencedaily.com/releases/2024/01/240122144401.htm

  • Previous Article Mechanism linking anxiety to testosterone
  • Next Article Liquid laundry detergent packet exposure burden

HUNGRY FOR TRUTH?  FEED THE NEED.

The Power of Truth®
  • Cookies Policy
  • Privacy Policy
  • Terms of Use
  • Contact
Copyright © 2025 Joomla!. All Rights Reserved. Powered by The Power of Truth® - Designed by JoomlArt.com. Bootstrap is a front-end framework of Twitter, Inc. Code licensed under Apache License v2.0. Font Awesome font licensed under SIL OFL 1.1.