能源消耗预测模型的传统ML算法比较

Rebeca L. Estrada, Víctor Asanza, Danny Torres, Irving Valeriano, Daniel Alvarado
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引用次数: 0

摘要

由于涉及到IT设备和冷却基础设施,数据中心需要消耗大量的能源来满足对IT基础设施和软件日益增长的需求。因此,有必要制定直流计算机设备的能耗控制策略,使基础设施升级,降低能耗,满足绿色it的要求。这样既可以降低能耗,又可以优化技术资源的利用。在本文中,我们建议使用三个不同的时间窗口(即分钟,小时和天)来评估几种传统的机器学习算法作为预测模型,同时考虑到电压,能量,频率,电流,功率,功率因数和温度等几个特征。在验证阶段进行均方根误差(RMSE)的比较,以便为每个时间窗口选择最合适的算法。此外,计算了运行时间,以确定所选算法的可行性。此外,合适的预测模型是确保在数据中心的不同服务器之间公平分配工作负载的关键。
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Comparison of Traditional ML Algorithms for Energy Consumption Prediction Models
Data centers consume a large amount of energy to meet the increasing demand for IT infrastructure and software due to the IT equipment and cooling infrastructure involved. Therefore, it is necessary to have energy consumption control strategies for DC computer equipment that will allow infrastructure upgrades to reduce energy consumption and to meet the requirement of Green IT. In this way, energy consumption is reduced and the use of technological resources can be optimized. In this paper, we propose to evaluate several traditional Machine Learning algorithms as prediction models using three different temporal windows (i.e. minute, hour and day) taking into account several features such as voltage, energy, frequency, current, power, power factor, and temperature. A comparison of the root square mean error (RMSE) during the validation stage is carried out in order to select the most appropriate algorithm for each time window. In addition, running times are calculated to determine the feasibility of the selected algorithms. Moreover, the suitable predictive model can be the key to the ensure a fair distribution of the workload among the different servers in a Datacenter.
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