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    Long Saiqin, Huang Jinna, Li Zhetao, Pei Tingrui, Xia Yuanqing. Energy Efficiency Evaluation Method of Data Centers for Cloud-Network Integration[J]. Journal of Computer Research and Development, 2021, 58(6): 1248-1260. DOI: 10.7544/issn1000-1239.2021.20201069
    Citation: Long Saiqin, Huang Jinna, Li Zhetao, Pei Tingrui, Xia Yuanqing. Energy Efficiency Evaluation Method of Data Centers for Cloud-Network Integration[J]. Journal of Computer Research and Development, 2021, 58(6): 1248-1260. DOI: 10.7544/issn1000-1239.2021.20201069

    Energy Efficiency Evaluation Method of Data Centers for Cloud-Network Integration

    • Cloud-network integration is developing at an accelerated pace, which not only promotes the rapid growth of data center scale, but also brings huge energy consumption. How to formulate reasonable data center energy efficiency evaluation standards has become a key issue that needs to be solved urgently to guide the improvement of data center energy efficiency. It is difficult to evaluate the energy efficiency of data centers comprehensively based on a single metric, and different data center energy efficiency metrics have their own focuses, and even contradict each other. It is proposed to integrate multiple metrics to evaluate the energy efficiency of data centers comprehensively. The model adopts a combination of subjective and objective weighting methods to set weights for different energy efficiency metrics. A multi-metric fusion evaluation strategy is designed based on the cloud model to obtain a more scientific and comprehensive data center energy efficiency evaluation result. Finally, the gray correlation method is proposed to analyze the relationship between the evaluation results and various energy efficiency metrics. The analysis results have important guiding significance for the improvement of data center energy efficiency.
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