A novel approach for energy consumption management in cloud centers based on adaptive fuzzy neural systems

Hong Huang, Yu Wang, Yue Cai, Hong Wang
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Abstract

Cloud computing enables global access to tool-based IT services, accommodating a wide range of applications across consumer, scientific, and commercial sectors, operating on a pay-per-use model. However, the substantial energy consumption of data centers hosting cloud applications leads to significant operational costs and environmental impact due to carbon emissions. Each day, these centers handle numerous requests from diverse users, necessitating powerful servers that consume substantial energy and associated peripherals. Efficient resource utilization is essential for mitigating energy consumption in cloud centers. In our research, we adopted a novel hybrid approach to dynamically allocate resources in the cloud, focusing on energy reduction and load prediction. Specifically, we employed neural fuzzy systems for load prediction and the ant colony optimization algorithm for virtual machine migration. Comparative analysis against existing literature demonstrates the effectiveness of our approach. Across 810 time periods, our method exhibits an average resource loss reduction of 21.3% and a 5.6% lower average request denial rate compared to alternative strategies. Using the PlanetLab workload and the created CloudSim simulator, the suggested methods have been assessed. Moreover, our methodology was validated through comprehensive experiments using the SPECpower benchmark, achieving over 98% accuracy in forecasting energy consumption for the proposed model. These results underscore the practicality and efficiency of our strategy in optimizing cloud resource management while addressing energy efficiency challenges in data center operations.

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基于自适应模糊神经系统的云中心能耗管理新方法
云计算使全球都能获得基于工具的 IT 服务,可满足消费、科学和商业领域的广泛应用,并以按使用付费的模式运行。然而,托管云应用的数据中心能耗巨大,导致运营成本和碳排放对环境造成严重影响。每天,这些数据中心都要处理来自不同用户的大量请求,需要消耗大量能源的强大服务器和相关外围设备。有效利用资源对于降低云中心的能耗至关重要。在我们的研究中,我们采用了一种新颖的混合方法来动态分配云中的资源,重点是降低能耗和负载预测。具体来说,我们采用神经模糊系统进行负载预测,并采用蚁群优化算法进行虚拟机迁移。与现有文献的对比分析表明了我们方法的有效性。在 810 个时间段内,与其他策略相比,我们的方法平均减少了 21.3% 的资源损失,平均请求拒绝率降低了 5.6%。我们使用 PlanetLab 工作负载和创建的 CloudSim 模拟器对建议的方法进行了评估。此外,我们的方法还通过使用 SPECpower 基准的综合实验进行了验证,所建议模型的能耗预测准确率超过 98%。这些结果凸显了我们的策略在优化云资源管理、应对数据中心运营中的能效挑战方面的实用性和效率。
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