Edge Computing in Centralized Data Server Deployment for Network Qos and Latency Improvement for Virtualization Environment

A. Yadav, Bhanu Sharma, Akash Kumar Bhagat, Harshal Shah, C. Manjunath, Aishwarya Awasthi
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引用次数: 2

Abstract

With the advancement of Internet of Things (IoT), the network devices seem to be raising, and the cloud data centre load also raises; certain delay-sensitive services are not responded to promptly which leads to a reduced quality of service (QoS). The technique of resource estimation could offer the appropriate source for users through analyses of load of resource itself. Thus, the prediction of resource QoS was important to user fulfillment and task allotment in edge computing. This study develops a new manta ray foraging optimization with backpropagation neural network (MRFO-BPNN) model for resource estimation using quality of service (QoS) in the edge computing platform. Primarily, the MRFO-BPNN model makes use of BPNN algorithm for the estimation of resources in edge computing. Besides, the parameters relevant to the BPNN model are adjusted effectually by the use of MRFO algorithm. Moreover, an objective function is derived for the MRFO algorithm for the investigation of load state changes and choosing proper ones. To facilitate the enhanced performance of the MRFO-BPNN model, a widespread experimental analysis is made. The comprehensive comparison study highlighted the excellency of the MRFO-BPNN model.
集中式数据服务器部署中的边缘计算:虚拟化环境下网络Qos和时延提升
随着物联网(IoT)的发展,网络设备似乎越来越多,云数据中心的负载也越来越大;某些对延迟敏感的服务没有得到及时响应,从而导致服务质量(QoS)降低。资源估算技术可以通过对资源本身负荷的分析,为用户提供合适的资源。因此,资源QoS的预测对边缘计算中的用户实现和任务分配具有重要意义。本文提出了一种基于反向传播神经网络(MRFO-BPNN)的蝠鲼觅食优化模型,用于边缘计算平台中基于服务质量(QoS)的资源估计。MRFO-BPNN模型首先利用BPNN算法对边缘计算中的资源进行估计。此外,利用MRFO算法对BPNN模型的相关参数进行了有效的调整。在此基础上,推导了MRFO算法的目标函数,用于研究和选择合适的负荷状态变化。为了提高MRFO-BPNN模型的性能,进行了广泛的实验分析。综合对比研究显示了MRFO-BPNN模型的优越性。
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