基于两段LSTM的数据中心温度预测模型

Yifei Kang, Chunping Ma, Simin Wang, Weiguo Wu, Kangning Zhao
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引用次数: 1

摘要

如今,数据中心是信息产业的关键基础设施。热安全是数据中心高效提供服务最关心的问题之一。温度预测方法克服了反馈控制的滞后性,具有较高的预测精度,是一种有效的方法。而目前基于LSTM的预测方法由于缺乏对物性的认识和对特征时间常数差异的考虑,精度和可扩展性受到限制。为了解决这一问题,我们提出了一种基于两段LSTM的数据中心温度预测模型,分别对IT设备负荷和其他具有不同时间常数的热相关变量进行预测。该模型考虑了设备的物理特性,具有较高的预测精度。实验结果表明,该方法的预测精度比现有的单段LSTM方法提高了27.27%。
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A two-segment LSTM based data center temperature prediction model
Nowadays , data centers are critical infrastructure for the information industry. Thermal security is one of the most concerning problems of the data center efficiently providing service. The temperature prediction method is an effective way, which overcomes the lagging of the feedback control and rewards a high prediction accuracy. While the current LSTM based prediction methods are limited in accuracy and restricted in scalability due to the lack of knowledge of physical properties and consideration of time constant differences of features. To address this, we propose a data center temperature prediction model with two-segment LSTM for prediction separately for IT equipment load and other heat-related variables with different time constants. The model takes into account the physical properties of the equipment and achieves higher prediction accuracy. The experimental results show that the prediction accuracy of our method is 27.27% higher than the state-of-art single segment LSTM method.
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