基于改进粒子群优化的身体传感器网络平台中有效的资源感知医疗监测

S. Sureshu, R. Vijayabhasker
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引用次数: 0

摘要

使用基于身体传感器网络的可穿戴医疗传感器可以收集实时生理数据。然而,我们还没有一个有效、可靠和安全的身体传感器网络平台(BSN)来满足日益增长的电子健康需求。这些应用程序中的许多都需要BSN提供许多数据速度的可靠和节能的数据传输。云计算根据应用程序请求按照SLA(服务水平协议)规则向患者提供资产。服务提供者专注于提供基于必要性的资产,以满足QoS(服务质量)先决条件。因此,由于云服务的脆弱性和活跃的利益,它已经成为适应面向服务资产的评估。与通过评估手头不一致的未完成任务来占用资产相比,任务调度是一种选择。因此,生产资产调度方法需要分配适当的vm (Virtual machine)。群体智能可以很好地处理这类漏洞问题。本文提出了一种利用改进粒子群优化方法(MPSO)的有效资源调度策略,以限制执行成本为目标,为微处理器提供了一种方法来处理分配给控制器的多个任务,以执行通过物联网技术(Iot)登录到云端的多个任务,消耗能量,带宽消耗,速度和执行成本。近距离调查结果表明,该调度方案优于现有的调度方案。通过这种方式,可以利用所提出的资源调度方法来增强云资源的生存能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Resource Aware Health Care Monitoring in Body Sensor Network Platform Using Modified Particle Swarm Optimization
Real-time physiological data may be gathered using wearable medical sensors based on a network of body sensors. We do not however have an effective, trustworthy and secure body sensor network platform (BSN) that can satisfy growing e-health requirements. Many of these applications require BSN to provide the dependable and energy efficient data transfer of many data speeds. Cloud computing is giving assets to patient dependent on application request at SLA (service level agreement) rules. The service providers are focusing on giving the necessity based asset to satisfy the QoS (quality of service) prerequisites. Therefore, it has become an assessment to adapt service-oriented assets because of vulnerability and active interest for cloud services. The task scheduling is an option in contrast to appropriating asset by evaluating the inconsistent outstanding task at hand. the allocation of tasks given by the microprocessor Subsequently, a productive asset scheduling method needs to disseminate proper VMs (Virtual Machines). The swarm intelligence is appropriate to deal with such vulnerability issues carefully. In this paper, an effective resource scheduling strategy Utilizing Modified Particle Swarm Optimization approach (MPSO) is presented, with a target to limit execution cost that gives an approach for the microprocessor to deal with the multiple number of tasks gives to the controllers in order to perform the multiple tasks that gets logged in the cloud via Internet of things technology (Iot), energy consumed, bandwidth consumption, speed and execution cost. The near investigation of results has been exhibited that the presented scheduling scheme performed better when contrasted with existing evaluation. In this manner, the presented resource scheduling approach might be utilized to enhance the viability of cloud resources.
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