基于极端学习机预测的触发方法在云计算数据中心的两阶段虚拟机放置

Nafiu Musa Muhaammad
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引用次数: 0

摘要

背景:两阶段优化的虚拟机布局(VMP)问题考虑了在线增量VMP (iVMP)阶段和离线VMP重新配置(VMPr)阶段,其中在线增量VMP (iVMP)阶段是处理新到达的虚拟机虚拟机的动态请求,离线VMP重新配置(VMPr)阶段是执行布局重新计算。在两阶段方案中,两阶段方法的第一部分是iVMP,可以在运行时构建、更改或销毁虚拟机(vm)。虽然第二阶段的重点是提高由iVMP产生的解决方案的标准,但在不同的文献中已经做了一些研究来解决VMP问题。然而,所使用的方法往往是过度预测和长期的线性趋势。这会影响预测并产生较不理想的解决方案。目标:利用提出的基于极限学习机预测的两阶段云计算数据中心虚拟机放置触发方法,对以下四个目标函数进行优化,该方法结合了在线(动态)和静态(离线)VMP公式的优势:重构过程的长度、能源使用量、资源使用方式和财务费用。本研究提出了一种决定何时开始VMP重构阶段的全新策略。结果:该方法提高了预测请求的准确性,并减少了违反服务水平协议(SLA)的总体经济处罚。利用400个案例与现有方法进行了实验比较。结论:结果表明,与基准方法相比,所提出的工作获得了最小成本函数,提高了10.5%
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Two-Phase Virtual Machine Placement in Cloud Computing Data Centers Using Extreme Learning Machine Prediction-Based Triggering Method
Background: Two-phase Optimization of Virtual Machine Placement (VMP) Problem considers both the Online Incremental VMP (iVMP) phase in which the new arrival of dynamic requests of Virtual Machines VMs are attended to and the Offline VMP reconfiguration (VMPr) phase that performs placement recalculation. In the two-phase scheme, the first part of the two-phase approach is the iVMP, where virtual machines (VMs) can be built, changed, or destroyed at runtime. While the second phase focuses on raising the standard of solutions produced by the iVMP, several studies have been done in different literature to solve the VMP problem. However, the methods used tend to be over-forecast and have long runs of a linear trend. This affects the prediction and produces a less optimal solution. Objective: The following four objective functions are optimized using the proposed Extreme Learning Machine Prediction-Based Triggering Method for Virtual Machine Placement in Cloud Computing Datacenters in Two-Phases, which combines the advantages of both online (dynamic) and static (offline) VMP formulations: the length of the reconfiguration process, the amount of energy used, the way resources are used, and the financial expenses. This study suggests a brand-new strategy for deciding when to start the VMP reconfiguration phase. Results: The Method provides more accuracy to the predicted requests as well as reduces the total economic penalties for service Level Agreement(SLA) violations. An experimental comparison with the existing approach is conducted utilizing 400 cases. Conclusion: The results demonstrated that, in comparison to the benchmark approach, the proposed work obtained a minimum cost function with a 10.5% improvement
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