基于进化神经网络的云计算能耗预测

Y. W. Foo, C. Goh, Hong Chee Lim, Zhi-hui Zhan, Yun Li
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引用次数: 18

摘要

Hadoop是一个用于大规模并行和分布式计算的开源框架,随着服务提供商不断增加新的基础设施、服务和功能以满足市场需求,它的成功预计将推动云数据中心的能耗达到新高。虽然目前对数据中心气流管理、暖通空调(HVAC)系统设计、工作负载分配和优化以及节能计算硬件和软件的研究都有助于提高能源效率,但云计算中的能源预测仍然是一个挑战。本文报道了一种基于进化计算的建模和预测方法。针对云数据中心的能量负荷预测问题,提出了一种进化神经网络,并对其结构进行了优化。结果,无论是在预测速度和准确性方面,都表明进化神经网络方法用于云计算的能源消耗预测是非常有前途的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Neural Network Based Energy Consumption Forecast for Cloud Computing
The success of Hadoop, an open-source framework for massively parallel and distributed computing, is expected to drive energy consumption of cloud data centers to new highs as service providers continue to add new infrastructure, services and capabilities to meet the market demands. While current research on data center airflow management, HVAC (Heating, Ventilation and Air Conditioning) system design, workload distribution and optimization, and energy efficient computing hardware and software are all contributing to improved energy efficiency, energy forecast in cloud computing remains a challenge. This paper reports an evolutionary computation based modeling and forecasting approach to this problem. In particular, an evolutionary neural network is developed and structurally optimized to forecast the energy load of a cloud data center. The results, both in terms of forecasting speed and accuracy, suggest that the evolutionary neural network approach to energy consumption forecasting for cloud computing is highly promising.
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