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International Journal of New Developments in Engineering and Society, 2022, 6(1); doi: 10.25236/IJNDES.2022.060108.

Research on Smart Fitness and Bodybuilding Based on Wireless Network Sensor Action Monitoring Device


Xiaolei Cheng1,2

Corresponding Author:
Xiaolei Cheng

1College of Profession Tennis, Wuhan City Polytechnic, Wuhan 430064 China

2Visiting Scholar of Wuhan University, Wuhan 430072 China


Fitness and bodybuilding has been developed in China for decades and is deeply loved by the masses. Under the background of the national fitness program and the general environment of the sports industry, China's fitness and bodybuilding has developed in the long-term in terms of scope and breadth, but the path model is single, and it is difficult to adapt to the development of the times. With the widespread popularity of 5G+IOT, wireless network sensor motion monitoring devices have been widely used in various fields of life, and the effect is very significant. This research focuses on the congestion control, energy efficiency optimization and node positioning of wireless sensor networks. Taking the physical distance between nodes as the starting point, the ID3 algorithm and the C4.5 algorithm are proposed in a targeted manner, and verified through theoretical analysis and software simulation effectiveness of the proposed algorithm.


fitness and bodybuilding, wireless sensor network, ID3 algorithm, C4.5 algorithm

Cite This Paper

Xiaolei Cheng. Research on Smart Fitness and Bodybuilding Based on Wireless Network Sensor Action Monitoring Device. International Journal of New Developments in Engineering and Society (2022) Vol.6, Issue 1: 44-50. https://doi.org/10.25236/IJNDES.2022.060108.


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