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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >A comprehensive framework for student stress monitoring in fog-cloud IoT environment: m-health perspective
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A comprehensive framework for student stress monitoring in fog-cloud IoT environment: m-health perspective

机译:雾云IOT环境中的学生压力监测综合框架:M-Health Perspective

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摘要

Over the last few years, Internet of Things (IoT) has opened the doors to innovations that facilitate interactions among things and humans. Focusing on healthcare domain, IoT devices such as medical sensors, visual sensors, cameras, and wireless sensor network are leading this evolutionary trend. In this direction, the paper proposes a novel, IoT-aware student-centric stress monitoring framework to predict student stress index at a particular context. Bayesian Belief Network (BBN) is used to classify the stress event as normal or abnormal using physiological readings collected from medical sensors at fog layer. Abnormal temporal structural data which is time-enriched dataset sequence is analyzed for various stress-related parameters at cloud layer. To compute the student stress index, a two-stage Temporal Dynamic Bayesian Network (TDBN) model is formed. This model computes stress based on four parameters, namely, leaf node evidences, workload, context, and student health trait. After computing the stress index of the student, decisions are taken in the form of alert generation mechanism with the deliverance of time-sensitive information to caretaker or responder. Experiments are conducted both at fog and cloud layer which hold evidence for the utility and accuracy of the BBN classifier and TDBN predictive model in our proposed system.
机译:在过去的几年里,事情互联网(物联网)向促进事物和人类之间的互动的创新开辟了大门。专注于医疗领域,如医疗传感器,视觉传感器,摄像机和无线传感器网络等IOT设备正在引领这种进化趋势。在这个方向上,本文提出了一种新颖的物联网感知学生为中心的压力监测框架,以预测特定上下文的学生压力指数。贝叶斯信仰网络(BBN)用于将应力事件作为正常或异常的使用生理读数分类,使用雾层的医学传感器收集的生理读数。分析了云层的各种应力相关参数的富集数据集序列的异常时间结构数据。为了计算学生应力指数,形成了两阶段时间动态贝叶斯网络(TDBN)模型。该模型基于四个参数,即叶节点证明,工作负载,上下文和学生卫生特征计算压力。在计算学生的应力指数之后,以警报生成机制的形式采取决策,并向看护人或响应者提供时间敏感的信息。实验在雾和云层进行,该云层在我们所提出的系统中占据BBN分类器和TDBN预测模型的实用性和准确性的证据。

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