Data center power consumption prediction based on principal component analysis and DeepAR

Wenyue Zhang, Leijun Hu, Fengyu Guo, Xiaotong Wang, Yihai Duan
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Abstract

The era of big data and cloud computing has driven the rapid expansion of the number and scale of data centers worldwide, and the ensuing huge power consumption has put pressure on resources and the environment. Accurate prediction of data center power consumption can provide an important basis for current power management techniques, while effectively improving the efficiency of intelligent operation and maintenance of modern data centers. To address this problem, a server power consumption prediction model based on a combination of principal component analysis (PCA) and DeepAR is proposed in the paper. The model uses the time series of server power consumption and performance index data from the Zhengzhou Inspur data center to predict future moment power consumption, performs principal component analysis on the performance index, and inputs the effective principal components and historical power consumption data into the DeepAR network for prediction. The model is experimentally validated on all three server datasets, and the results show that the model outperform the DeepAR network model as well as other comparison models in terms of prediction. When compared with the DeepAR network, the MAPE of this model is reduced by 0.23%, 0.12%, and 0.05% on the data1, data2, and data3 datasets, respectively.
基于主成分分析和DeepAR的数据中心功耗预测
大数据和云计算时代的到来,推动了全球范围内数据中心数量和规模的快速扩张,随之而来的巨大功耗给资源和环境带来了压力。准确预测数据中心功耗可以为当前的电源管理技术提供重要依据,同时有效提高现代数据中心的智能运维效率。为了解决这一问题,本文提出了一种基于主成分分析(PCA)和深度ar相结合的服务器功耗预测模型。该模型利用郑州浪潮数据中心服务器功耗和性能指标数据的时间序列预测未来时刻功耗,对性能指标进行主成分分析,并将有效主成分和历史功耗数据输入DeepAR网络进行预测。该模型在三个服务器数据集上进行了实验验证,结果表明该模型在预测方面优于DeepAR网络模型以及其他比较模型。与DeepAR网络相比,该模型在data1、data2和data3数据集上的MAPE分别降低了0.23%、0.12%和0.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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