基于深度学习的资源预测和突变Leader算法在雾计算中的负载均衡

Q1 Mathematics
S. G, Monica R. Mundada, S. Supreeth, Bryan Gardiner
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引用次数: 1

摘要

负载均衡对于提高雾计算的性能起着重要的作用,将所有的工作负载均匀地分布在一个段内的当前虚拟机(vm)之间已经成为雾层的要求。由于雾计算环境中用户众多,负载的分配是一个复杂的过程。在此基础上,提出了一种有效的雾蒙蒙环境下负载均衡技术——突变先导算法(MLA)。首先,将雾计算初始化为雾层、云层和最终用户层。然后,最终用户在雾层下通过节点簇提交任务。然后,在每个集群中进行负载均衡处理,并使用DRN (Deep Residual Network)预测每个虚拟机的资源。负载均衡是通过使用MLA优化资源约束,将任务从用户分配到云中的虚拟机,并将其重新分配来实现的。在这里,需要负载平衡来优化资源和目标。最后,如果虚拟机过载,那么作业将从关联的虚拟机中提取并分配给负载不足的虚拟机。因此,所提出的MLA的最小执行时间为1.472ns,成本为69.448美元,负载为0.0003%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-based Resource Prediction and Mutated Leader Algorithm Enabled Load Balancing in Fog Computing
Load balancing plays a major part in improving the performance of fog computing, which has become a requirement in fog layer for distributing all workload in equal manner amongst the current Virtual machines (VMs) in a segment. The distribution of load is a complicated process as it consists of numerous users in fog computing environment. Hence, an effectual technique called Mutated Leader Algorithm (MLA) is proposed for balancing load in fogging environment. Firstly, fog computing is initialized with fog layer, cloud layer and end user layer. Then, task is submitted from end user under fog layer with cluster of nodes. Afterwards, load balancing process is done in each cluster and the resources for each VM are predicted using Deep Residual Network (DRN). The load balancing is accomplished by allocating and reallocating the task from the users to the VMs in the cloud based on the resource constraints optimally using MLA. Here, the load balancing is needed for optimizing resources and objectives. Lastly, if VMs are overloaded and then the jobs are pulled from associated VM and allocated to under loaded VM. Thus the proposed MLA achieved minimum execution time is 1.472ns, cost is $69.448 and load is 0.0003% respectively.
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CiteScore
4.10
自引率
0.00%
发文量
33
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