JACIII Vol.23 No.1 pp. 146-152
doi: 10.20965/jaciii.2019.p0146


Design and Implementation of Monitoring System for Extracurricular Physical Exercise Based on Energy Consumption Measurement

Xisen Cheng*, Liming Zhu**, and Zhimin Zhao***

*College of Arts and Science, Jianghan University
No.8 Sanjiaohu Rd., Caidian, Wuhan, Hubei 430014, China

**School of Physical Education, Jianghan University
No.8 Sanjiaohu Rd., Caidian, Wuhan, Hubei 430014, China

***College of Electrical and Mechanical Engineering, Pingdingshan University
Weilai Rd., Xincheng District, Pingdingshan, Henan 467000, China

May 28, 2018
July 10, 2018
January 20, 2019
extracurricular physical exercise, energy consumption measurement, exercise monitoring

Although the present attendance management system, adopted by universities, determines students’ physical presence. It does not determine whether they perform physical activities. It is important to monitor students’ extracurricular physical exercise scientifically and effectively to solve the actual effect of extracurricular physical exercise attendance and exercise. Calorie management is one solution to this problem. Additionally, an extracurricular physical exercise monitoring and management system is developed to record the energy consumption of students during their physical activities. To realize the demand for the management of calories and the monitoring and analysis of the energy consumption of students through the two development of the energy consumption instrument. This plan has certain significance for solving the actual effect of extracurricular physical training.

Cite this article as:
Xisen Cheng, Liming Zhu, and Zhimin Zhao, “Design and Implementation of Monitoring System for Extracurricular Physical Exercise Based on Energy Consumption Measurement,” J. Adv. Comput. Intell. Intell. Inform., Vol.23, No.1, pp. 146-152, 2019.
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Last updated on Jan. 15, 2021