Use of wearable chemical sensors in IoT: a systematic literature review
DOI:
https://doi.org/10.22456/2175-2745.130662Keywords:
bluetooth, chemical sensors, electrochemical sensors, wirelessAbstract
Health applications received more attention with the use of the Internet of Things - IoT, due to the use of sensors for remote monitoring, not only in hospital environments but also in domestic environments and in meditative and routine activities. Wearable chemical sensors have been proposed in the health area for the continuous monitoring of the individual's well-being, however, the challenges related to the convergence of these two areas still require a lot of research for the solutions to be effectively applied. This article aims to present the results of a systematic literature review (SLR) carried out to highlight applications that employ the use of wearable chemical sensors in IoT contexts. The results presented several challenges and open questions of a promising research field involving IoT and wearable chemical sensors. The review was performed on the same basis used to make the original SLR, in which the period from December 2021 to February 2023 was adopted as an interval. As a result, in addition to the 15 (fifteen) studies found in the previous SLR, 7 (seven) new articles were classified as relevant, totaling 22 (twenty-two) studies. Regarding the previous.
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Copyright (c) 2024 Carlos Eduardo do Egito Araujo, Lívia Flório Sgobbi, Renato Bulcão, Iwens Gervasio Sene Junior, Sergio T Carvalho

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