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Load balancing prediction method of cloud storage based on analytic hierarchy process and hybrid hierarchical genetic algorithm

机译:基于层次分析和混合层次遗传算法的云存储负载均衡预测方法

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摘要

With the continuous expansion of the cloud computing platform scale and rapid growth of users and applications, how to efficiently use system resources to improve the overall performance of cloud computing has become a crucial issue. To address this issue, this paper proposes a method that uses an analytic hierarchy process group decision (AHPGD) to evaluate the load state of server nodes. Training was carried out by using a hybrid hierarchical genetic algorithm (HHGA) for optimizing a radial basis function neural network (RBFNN). The AHPGD makes the aggregative indicator of virtual machines in cloud, and become input parameters of predicted RBFNN. Also, this paper proposes a new dynamic load balancing scheduling algorithm combined with a weighted round-robin algorithm, which uses the predictive periodical load value of nodes based on AHPPGD and RBFNN optimized by HHGA, then calculates the corresponding weight values of nodes and makes constant updates. Meanwhile, it keeps the advantages and avoids the shortcomings of static weighted round-robin algorithm.
机译:随着云计算平台规模的不断扩大以及用户和应用程序的快速增长,如何有效利用系统资源来提高云计算的整体性能已成为至关重要的问题。为解决此问题,本文提出了一种使用层次分析层次结构决策(AHPGD)评估服务器节点负载状态的方法。通过使用混合层次遗传算法(HHGA)进行训练,以优化径向基函数神经网络(RBFNN)。 AHPGD成为云中虚拟机的综合指标,并成为预测的RBFNN的输入参数。同时,提出了一种新的结合加权轮循算法的动态负载均衡调度算法,该算法利用基于HHPGA优化的AHPPGD和RBFNN的节点的预测周期性负荷值,计算出相应的节点权重并使其恒定更新。同时,它保留了优点并避免了静态加权循环算法的缺点。

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