Zahid Noman, Sodhro Ali Hassan, Kamboh Usman Rauf, Alkhayyat Ahmed, Wang Lei
Office of Research, Innovation and Commercialization (ORIC), The University of Faisalabad, Faisalabad, Punjab, Pakistan.
Department of Computer Science, Kristianstad University, Kristianstad SE-291 88, Sweden.
Math Biosci Eng. 2022 Feb 11;19(4):3953-3971. doi: 10.3934/mbe.2022182.
Artificial Intelligence (AI) driven adaptive techniques are viable to optimize the resources in the Internet of Things (IoT) enabled wearable healthcare devices. Due to the miniature size and ability of wireless data transfer, Body Sensor Networks (BSNs) have become the center of attention in current medical media technologies. For a long-term and reliable healthcare system, high energy efficiency, transmission reliability, and longer battery lifetime of wearable sensors devices are required. There is a dire need for empowering sensor-based wearable techniques in BSNs from every aspect i.e., data collection, healthcare monitoring, and diagnosis. The consideration of protocol layers, data routing, and energy optimization strategies improves the efficiency of healthcare delivery. Hence, this work presents some key contributions. Firstly, it proposes a novel avant-garde framework to simultaneously optimize the energy efficiency, battery lifetime, and reliability for smart and connected healthcare. Secondly, in this study, an Adaptive Transmission Data Rate (ATDR) mechanism is proposed, which works on the average constant energy consumption by varying the active time of the sensor node to optimize the energy over the dynamic wireless channel. Moreover, a Self-Adaptive Routing Algorithm (SARA) is developed to adopt a dynamic source routing mechanism with an energy-efficient and shortest possible path, unlike the conventional routing methods. Lastly, real-time datasets are adopted for intensive experimental setup for revealing pervasive and cost-effective healthcare through wearable devices. It is observed and analysed that proposed algorithms outperform in terms of high energy efficiency, better reliability, and longer battery lifetime of portable devices.
人工智能(AI)驱动的自适应技术对于优化物联网(IoT)支持的可穿戴医疗设备中的资源是可行的。由于其微型尺寸和无线数据传输能力,人体传感器网络(BSN)已成为当前医学媒体技术的关注焦点。对于长期可靠的医疗系统,可穿戴传感器设备需要高能量效率、传输可靠性和更长的电池寿命。迫切需要从各个方面增强基于传感器的可穿戴技术在BSN中的应用,即数据收集、医疗监测和诊断。对协议层、数据路由和能量优化策略的考虑提高了医疗服务的效率。因此,这项工作提出了一些关键贡献。首先,它提出了一个新颖的前沿框架,以同时优化智能互联医疗的能量效率、电池寿命和可靠性。其次,在本研究中,提出了一种自适应传输数据速率(ATDR)机制,该机制通过改变传感器节点的活跃时间来平均恒定能量消耗,以优化动态无线信道上的能量。此外,还开发了一种自适应路由算法(SARA),与传统路由方法不同,它采用具有节能且尽可能短路径的动态源路由机制。最后,采用实时数据集进行密集实验设置,以通过可穿戴设备实现普及且经济高效的医疗保健。观察和分析表明,所提出的算法在高能量效率、更好的可靠性和便携式设备更长的电池寿命方面表现出色。