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Impact of uncertainties on the supervisory control performance of a hybrid cooling system in data center

机译:不确定性对数据中心混合冷却系统监控性能的影响

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Model-based optimal control (MBOC) is a promising method to reap the potential of the waterside free cooling system in data center. While the theoretical energy savings are impressive, uncertainties in the model, sensors, and actuators could hinder this control strategy's practical application. This study quantified the impact of various uncertainties on the supervisory control method in two steps. First, sensitivity analysis was conducted using the Morris method and the one-at-a-time method to identify the influential impact of uncertain elements. Next, Monte-Carlo simulation was designed to perform an uncertainty study and evaluate the robustness and energy efficiency of the control method. A virtual emulator for simulating the proposed novel hybrid cooling system in data centers in combination with different supervisory control methods was developed. Full-year simulations indicate that the impact of uncertainty on the control performance of the MBOC strategy is greater than that of conventional control strategy; under various uncertainties, the energy consumption and operation mode prediction error rate of the MBOC method were increased by 43.6% and 99.2%, respectively. The research suggests that, if MBOC is adopted for the hybrid cooling system control, more efforts should be placed on reducing the uncertainties from various sources.
机译:基于模型的最佳控制(MBOC)是一种有前途的方法,可充分利用数据中心水边免费冷却系统的潜力。尽管理论上的节能效果令人印象深刻,但模型,传感器和执行器的不确定性可能会阻碍该控制策略的实际应用。本研究分两步量化了各种不确定性对监督方法的影响。首先,使用莫里斯方法和一次性方法进行敏感性分析,以确定不确定元素的影响。接下来,设计了蒙特卡洛仿真来进行不确定性研究并评估控制方法的鲁棒性和能效。开发了一种虚拟模拟器,用于结合不同的监督控制方法来模拟数据中心中新型混合冷却系统。全年的模拟表明,不确定性对MBOC策略的控制性能的影响要大于常规控制策略。在各种不确定性下,MBOC方法的能耗和运行模式预测错误率分别增加了43.6%和99.2%。研究表明,如果采用MBOC进行混合冷却系统控制,则应加大努力以减少各种来源的不确定性。

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