Volume 21 , Issue 2 , PP: 353-368, 2026 | Cite this article as | XML | Html | PDF | Full Length Article
May Kamil Al-Azzawi 1 * , Saad Hameed Abid 2
Doi: https://doi.org/10.54216/FPA.210222
Health reconnaissance frameworks are currently a more significant issue and examination subject. A few applications, like military, home consideration, medical clinic, athletic preparation, and the crisis control framework, have been laid out for wellbeing observation research. Competitors' lives require a lot of activity and exercise for wellness and wellbeing. The capacity to screen the imperative indications of the competitor that mirror the physical and physiological state of the individual, particularly during an apprenticeship, is fundamental both for the competitor and for the mentor to keep away from overtraining, wounds, and sickness or to change the power and time as per the information estimated — wearable checking gadgets associated with remote correspondence advances. In the model, utilizing remote innovations implies that devices utilized by competitors discuss information with other remote hubs progressively and make a small correspondence organization. The utilization of remote sensor correspondence and the need to impart between sensors has prompted the formation of wireless sensor networks (WSN) and wireless body area networks (WBANs). This paper presented a wireless sensor network-based athlete health monitoring (WSN-AHM) method and concentrated on their growth phases. Since it is a remote and versatile wellbeing reconnaissance arrangement, it can give medical care specialist organizations a valuable remote checking device to diminish the expense of their administrations. WSNs and their correspondence advancements and principles can be utilized in these reconnaissance applications, accentuating wearing exercises through the entire and relative show of realities on well-known correspondence conventions.
Wireless Body Area Networks , Athlete , Health , Wireless communication , Wearable Sensors
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