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A hybrid model of Internet of Things and cloud computing to manage big data in health services applications

机译:物联网和云计算的混合模型,用于管理医疗服务应用程序中的大数据

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Over the last decade, there has been an increasing interest in big data research, especially for health services applications. The adoption of the cloud computing and the Internet of Things (IoT) paradigm in the healthcare field can bring several opportunities to medical IT, and experts believe that it can significantly improve healthcare services and contribute to its continuous and systematic innovation in a big data environment such as Industry 4.0 applications. However, the required resources to manage such data in a cloud-IoT environment are still a big challenge. Accordingly, this paper proposes a new model to optimize virtual machines selection (VMs) in cloud-IoT health services applications to efficiently manage a big amount of data in integrated industry 4.0. Industry 4.0 applications require to process and analyze big data, which come from different sources such as sensor data, without human intervention. The proposed model aims to enhance the performance of the healthcare systems by reducing the stakeholders’ request execution time, optimizing the required storage of patients’ big data and providing a real-time data retrieval mechanism for those applications. The architecture of the proposed hybrid cloud-IoT consists of four main components: stakeholders’ devices, stakeholders’ requests (tasks), cloud broker and network administrator. To optimize the VMs selection, three different well-known optimizers (Genetic Algorithm (GA), Particle swarm optimizer (PSO) and Parallel Particle swarm optimization (PPSO) are used to build the proposed model. To calculate the execution time of stakeholders’ requests, the proposed fitness function is a composition of three important criteria which are CPU utilization, turn-around time and waiting time. A set of experiments were conducted to provide a comparative study between those three optimizers regarding the execution time, the data processing speed, and the system efficiency. The proposed model is tested against the state-of-the-art method to evaluate its effectiveness. The results show that the proposed model outperforms on the state-of-the-art models in total execution time the rate of 50%. Also, the system efficiency regarding real-time data retrieve is significantly improved by 5.2%.
机译:在过去的十年中,人们对大数据研究的兴趣日益增长,特别是对于医疗服务应用。在医疗保健领域采用云计算和物联网(IoT)范式可以为医疗IT带来许多机遇,专家们认为,它可以显着改善医疗保健服务,并有助于在大数据环境中进行持续和系统的创新。例如工业4.0应用程序。但是,在云物联网环境中管理此类数据所需的资源仍然是一个巨大的挑战。因此,本文提出了一种新模型,用于优化云物联网健康服务应用程序中的虚拟机选择(VM),以有效管理集成行业4.0中的大量数据。工业4.0应用程序需要处理和分析大数据,这些大数据来自诸如传感器数据之类的不同来源,而无需人工干预。提议的模型旨在通过减少利益相关者的请求执行时间,优化患者大数据的所需存储并为这些应用程序提供实时数据检索机制来增强医疗系统的性能。提议的混合云IoT的体系结构包含四个主要组件:利益相关者的设备,利益相关者的请求(任务),云代理和网络管理员。为了优化虚拟机的选择,使用了三种不同的知名优化器(遗传算法(GA),粒子群优化器(PSO)和并行粒子群优化(PPSO))来构建建议的模型,以计算利益相关者的请求的执行时间,建议的适应度函数由三个重要标准组成:CPU利用率,周转时间和等待时间,并进行了一组实验,以比较这三个优化器的执行时间,数据处理速度,针对最新模型对模型进行了测试,以评估其有效性,结果表明,所提出的模型在总执行时间上的性能优于最新模型。 50%,此外,有关实时数据检索的系统效率显着提高了5.2%。

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