AutoRehab Cycle Plus with Data Logging System

Authors

  • Jalil Lias Mr.
  • Rhafhathir Ismail
  • Wan Iman Hakim Fahrul
  • Nik Aiman Harith Mahmad Saidi
  • Rasydan Ruslan

Keywords:

Rehabilitation; Motor; Load Cell

Abstract

The AutoRehab Cycle Plus with a data-logging system is an innovative rehabilitation device for patients with limited lower-limb movement. It integrates load cells and data logging to record parameters such as leg pressure, cycling direction, duration, and frequency. Its motor-assisted mechanism enables passive pedaling, thereby supporting movement without voluntary effort. The recorded data are stored in Excel/CSV format for easy analysis and long-term tracking. By providing real-time feedback and objective metrics, the system allows therapists to accurately monitor patient progress. This data-driven approach enhances rehabilitation outcomes, offering a more efficient and patient-centered therapy solution for semi- paralyzed individuals.

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Published

2026-02-28