基于物联网雾的健康监测系统的高效任务分流

Arti Gupta, V. Chaurasiya
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引用次数: 0

摘要

最新的应用程序具有更多的计算密集型,并且数据密集型任务是延迟敏感的。在基于物联网云的医疗保健架构中,使用边缘设备聚合数据并将其发送到云端进行处理和分析。此外,我们需要将每个事件的数据信息传输到网络之外。因此,它是一个延迟敏感的过程,对于即时处理没有用处,并且对于医疗保健应用程序是不可接受的。为了克服这个问题,我们专注于智能设备和云层之间的雾层。此外,我们在雾层中使用贝叶斯信念网络的分类技术进行任务卸载。本文的重点是在任务卸载后使用BBN分类器减少响应时间,并使用雾计算提高系统的稳定性。在模拟结果中,我们比较了基于云的模式和基于雾的模式,其中基于雾的模式优于基于云的模式。这种基于雾的方法是基于本地网络的实时数据处理。因此,获得立竿见影的效果实际上是可能的,也是可以接受的。
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Efficient Task-Offloading in IoT-Fog Based Health Monitoring System
Recent advancement applications have more computation-intensive, and data-intensive tasks are delay-sensitive. In IoT-Cloud-based healthcare architecture, data is aggregated using edge devices and sent to the cloud for processing and analysis. Furthermore, we need to transfer the data information out of the network for each event. Hence it is a delay-sensitive process that is not useful for instant processing and is unacceptable for healthcare applications. To overcome this problem, we have focused on a fog layer between smart devices and the cloud layer. Additionally, we use the Bayesian Belief Network's classification technique in the fog layer for task offloading. This paper focuses on reducing the response time using the BBN classifier after task offloading and increasing the system's stability using fog computing. In the simulation result, we compare the cloud-based and fog-based models in which the fog-based model is dominant over the cloud- based. This fog-based approach is based on real-time data processing at the local network. Hence it is practically possible and acceptable to get an instant result.
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