Scheduling Optimization of real-time IOT system based on RNN

Shenling Liu, Chunyuan Zhang, Yujiao Chen
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Abstract

Ubiquitous computation, which promoted by Rapid development of Wireless Sensor Network (WSN) technologies cuts across many areas of modern day living, Internet of Things has been identified as one of Network Infrastructure in the next generation of application domains. An architecture based on cloud computing at the center, which contribute to highly flexibility and scalablity, is an extensively used scheme to construct IOT applications. With growing number of intelligent terminals and third part application accessing on the platform, the Qos problem caused by the large-scale concurrent access rise to the surface. To address this question, a self-adaption Multi-level Feedback Queue Scheduling policy, used to reduce mean turnaround time and complexity of scheduling, based on Recurrent Neural Network (RNN) is presented in this paper. Feature parameters of queues and tasks are used as input of network, the calculated parameters are exported to optimize queue parameters continuously. This research implement a prototype of this scheme. According To demonstrate the efficiency, this thesis give performance results from our prototype and other scheduling policy.
基于RNN的实时物联网系统调度优化
随着无线传感器网络(WSN)技术的快速发展,无处不在的计算已经渗透到现代生活的许多领域,物联网已经被确定为下一代应用领域的网络基础设施之一。以云计算为中心的架构具有高度的灵活性和可扩展性,是构建物联网应用的一种广泛使用的方案。随着平台上智能终端和第三方应用接入数量的不断增加,大规模并发接入带来的Qos问题逐渐浮出水面。为了解决这一问题,提出了一种基于递归神经网络(RNN)的自适应多级反馈队列调度策略,以降低调度的平均周转时间和复杂度。将队列和任务的特征参数作为网络输入,导出计算后的参数,不断优化队列参数。本研究实现了该方案的一个原型。为了证明该调度策略的有效性,本文给出了原型和其他调度策略的性能结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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