Publication

Technical Note: A Novel Servo-Driven Dual-Roller Handrim Wheelchair Ergometer

De Klerk, R., Vegter, R. J. K., Veeger, H. E. J. & Van der Woude, L. H. V., Apr-2020, In : IEEE Transactions on Neural Systems and Rehabilitation Engineering. 28, 4, p. 953-960 8 p.

Research output: Contribution to journalArticleAcademicpeer-review

The measurement of handrim wheelchair propulsion characteristics and performance in the field is complicated due to the non-stationary nature of wheelchair driving. In contrast, the laboratory provides a constrained and standardisable environment to conduct measurements and experiments. Apart from wheelchair treadmills, dynamometers or ergometers for handrim wheelchairs are often custom-made, one-of-a-kind, expensive, and sparsely documented in the research literature. To facilitate standardised and comparable lab-based measurements in research, as well as in clinical settings and adapted sports, a new wheelchair ergometer was developed. The ergometer with instrumented dual rollers allows for the performance analysis of individuals in their personal handrim wheelchair and facilitates capacity assessment, training and skill acquisition in rehabilitation or adapted sports. The ergometer contains two servomotors, one for each rear wheel roller, that allow for the simulation of translational inertia and resistive forces as encountered during wheelchair propulsion based on force input and a simple mechanical model of wheelchair propulsion. A load cell configuration for left and right roller enables the measurement of effective user-generated torque and force on the handrim and the concomitant timing patterns. Preliminary results are discussed.

Original languageEnglish
Pages (from-to)953-960
Number of pages8
JournalIEEE Transactions on Neural Systems and Rehabilitation Engineering
Volume28
Issue number4
Early online date11-Feb-2020
Publication statusPublished - Apr-2020

    Keywords

  • Dynamometer, ergometry, biomechanics, power output, wheelchair training, PROPULSION, BIOMECHANICS, TREADMILL, SPRINT, MODEL, PAIN

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