Performance Evaluation and Machine Learning based Thermal Modeling of Tilted Active Tiles in Data Centers

Z. Rasheed, Wei Xiong, Gaoxiang Cong, Hongxun Niu, Jianxiong Wan, Yongsheng Wang, Lixiao Li
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Abstract

Thermal management system of data center continuously face a lot of challenges, because data center industry has seen a boom growth in power density. In this paper we proposed the Tilted Active Tiles (TATs) to improve the local cold air supply and prevent the air flow blow over the rack. In traditional active tiles, fans are placed horizontally which cause the airflow blows over the rack, rather than into, the racks. To solve this issue, we adjusted the angle of the active tile to direct the airflow into the rack. We further introduced ANN based thermal models to predict the thermal performance of TATs. To train the ANN models, we adopted the data set obtained from a data center of Inner Mongolia Meteorology Information Center. The prediction accuracy of the model was extensively compared and analyzed, and the prediction accuracy and overhead of different neural network structures, i.e., BP and LSTM, were evaluated. Experimental results show that the rack with blanking panels has better thermal performance, and the temperature distribution at bottom, middle and top of the rack were same under smaller PWM. Thermal efficiency model was established by BP and LSTM, in this experiment single output model and multi output model were analyzed. The single output model can predict the temperature at different heights on the rack. In single output model the predicted effect of BP model is better than LSTM. The average prediction error is 0.57. The multi-output model can only predict the temperature at a fixed height of the rack. In multi output model LSTM model is better than BP. LSTM prediction error is less than BP. The average prediction error is 0.07.
数据中心倾斜活动瓷砖的性能评估和基于机器学习的热建模
随着数据中心行业功率密度的迅猛增长,数据中心热管理系统不断面临诸多挑战。为了改善机架的局部送风,防止气流吹过机架,本文提出了倾斜式活动瓦。在传统的活动瓦片中,风扇是水平放置的,这使得气流吹过机架,而不是吹进机架。为了解决这个问题,我们调整了活动瓷砖的角度,以引导气流进入机架。我们进一步引入了基于人工神经网络的热模型来预测TATs的热性能。为了训练人工神经网络模型,我们采用了内蒙古气象信息中心某数据中心的数据集。对模型的预测精度进行了广泛的比较和分析,并对BP和LSTM两种不同神经网络结构的预测精度和开销进行了评价。实验结果表明,在较小的PWM下,带下料板的机架具有较好的热性能,机架底部、中部和顶部的温度分布相同。利用BP和LSTM建立了热效率模型,对单输出模型和多输出模型进行了分析。单输出模型可以预测机架上不同高度的温度。在单输出模型中,BP模型的预测效果优于LSTM模型。平均预测误差为0.57。多输出模型只能预测机架固定高度处的温度。在多输出模型中,LSTM模型优于BP模型。LSTM预测误差小于BP。平均预测误差为0.07。
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