...
首页> 外文期刊>Journal of ambient intelligence and humanized computing >A load balancing and optimization strategy (LBOS) using reinforcement learning in fog computing environment
【24h】

A load balancing and optimization strategy (LBOS) using reinforcement learning in fog computing environment

机译:在雾计算环境中使用强化学习的负载平衡和优化策略(LBOS)

获取原文
获取原文并翻译 | 示例

摘要

Fog computing (FC) can be considered as a computing paradigm which performs Internet of Things (IoT) applications at the edge of the network. Recently, there is a great growth of data requests and FC which lead to enhance data accessibility and adaptability. However, FC has been exposed to many challenges as load balancing (LB) and adaptation to failure. Many LB strategies have been proposed in cloud computing, but they are still not applied effectively in fog. LB is an important issue to achieve high resource utilization, avoid bottlenecks, avoid overload and low load, and reduce response time. In this paper, a LB and optimization strategy (LBOS) using dynamic resource allocation method based on Reinforcement learning and genetic algorithm is proposed. LBOS monitors the traffic in the network continuously, collects the information about each server load, handles the incoming requests, and distributes them between the available servers equally using dynamic resource allocation method. Hence, it enhances the performance even when it's the peak time. Accordingly, LBOS is simple and efficient in real-time systems in fog computing such as in the case of healthcare system. LBOS is concerned with designing an IoT-Fog based healthcare system. The proposed IoT-Fog system consists of three layers, namely: (1) IoT layer, (2) fog layer, and (3) cloud layer. Finally, the experiments are carried out and the results show that the proposed solution improves the quality-of-service in the cloud/fog computing environment in terms of the allocation cost and reduce the response time. Comparing the LBOS with the state-of-the-art algorithms, it achieved the best load balancing Level (85.71%). Hence, LBOS is an efficient way to establish the resource utilization and ensure the continuous service.
机译:雾计算(FC)可以被视为计算范例,该计算范例在网络边缘执行物联网(IoT)应用程序。最近,数据请求和FC的巨大增长,导致增强数据可访问性和适应性。但是,FC已被暴露于许多挑战,作为负载平衡(LB)和适应失败。在云计算中提出了许多LB策略,但它们仍然没有有效地应用于雾中。 LB是实现高资源利用率的重要问题,避免瓶颈,避免过载和低负载,降低响应时间。本文提出了一种利用基于增强学习和遗传算法的动态资源分配方法的LB和优化策略(LBOS)。 LBOS连续监视网络中的流量,收集有关每个服务器负载的信息,处理传入请求,并使用动态资源分配方法同样地分发它们之间的可用服务器之间。因此,即使是高峰时间,它也可以增强性能。因此,LBOS在雾计算中的实时系统简单且有效,例如医疗保健系统的情况。 LBOS致力于设计基于IOT-FOG的医疗保健系统。所提出的IOT-FOG系统由三层组成,即:(1)IOT层,(2)雾层和(3)云层。最后,进行了实验,结果表明,在分配成本方面,该解决方案提高了云/雾计算环境中的服务质量,降低了响应时间。将LBO与最先进的算法进行比较,它实现了最佳负载平衡水平(85.71%)。因此,LBOS是建立资源利用率的有效方法,并确保连续服务。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号