基于深度学习的物联网可穿戴设备数学框架

Olfat M Mirza, Hana Mujlid, Hariprasath Manoharan, Shitharth Selvarajan, Gautam Srivastava, Muhammad Attique Khan
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引用次数: 5

摘要

为了避免出现可怕的情况,医疗部门必须开发各种方法,以便快速准确地识别偏远地区的感染。提出的工作的主要目标是创建一个可穿戴设备,使用物联网(IoT)来执行几个监测任务。为了减少通信损耗和检测前等待时间,提高检测质量,所设计的可穿戴设备还采用多目标框架进行操作。此外,建立了可穿戴物联网设备的设计方法,利用不同的数学方法来解决这些目标。因此,监控的参数值被保存在不同的物联网应用平台中。由于所提出的研究侧重于多目标框架,因此将状态设计和深度学习(DL)优化技术相结合,降低了可穿戴技术中检测的复杂性。具有物联网流程的可穿戴设备甚至已被纳入当前的方法。然而,一个解决方案不能使用数学方法和优化策略来复制。因此,开发的可穿戴设备可以应用于实时医疗应用,实现对个人的快速远程监控。此外,还对所提出的技术进行了实时测试,并利用物联网仿真工具跟踪五种不同情况下的对比实验结果。在所有被检查的案例研究中,计划的方法比当前最先进的方法表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mathematical Framework for Wearable Devices in the Internet of Things Using Deep Learning.

Mathematical Framework for Wearable Devices in the Internet of Things Using Deep Learning.

Mathematical Framework for Wearable Devices in the Internet of Things Using Deep Learning.

Mathematical Framework for Wearable Devices in the Internet of Things Using Deep Learning.

To avoid dire situations, the medical sector must develop various methods for quickly and accurately identifying infections in remote regions. The primary goal of the proposed work is to create a wearable device that uses the Internet of Things (IoT) to carry out several monitoring tasks. To decrease the amount of communication loss as well as the amount of time required to wait before detection and improve detection quality, the designed wearable device is also operated with a multi-objective framework. Additionally, a design method for wearable IoT devices is established, utilizing distinct mathematical approaches to solve these objectives. As a result, the monitored parametric values are saved in a different IoT application platform. Since the proposed study focuses on a multi-objective framework, state design and deep learning (DL) optimization techniques are combined, reducing the complexity of detection in wearable technology. Wearable devices with IoT processes have even been included in current methods. However, a solution cannot be duplicated using mathematical approaches and optimization strategies. Therefore, developed wearable gadgets can be applied to real-time medical applications for fast remote monitoring of an individual. Additionally, the proposed technique is tested in real-time, and an IoT simulation tool is utilized to track the compared experimental results under five different situations. In all of the case studies that were examined, the planned method performs better than the current state-of-the-art methods.

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