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首页> 外文期刊>Cybernetics, IEEE Transactions on >Transforming Cooling Optimization for Green Data Center via Deep Reinforcement Learning
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Transforming Cooling Optimization for Green Data Center via Deep Reinforcement Learning

机译:通过深增强学习改变绿色数据中心的冷却优化

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Data center (DC) plays an important role to support services, such as e-commerce and cloud computing. The resulting energy consumption from this growing market has drawn significant attention, and noticeably almost half of the energy cost is used to cool the DC to a particular temperature. It is thus an critical operational challenge to curb the cooling energy cost without sacrificing the thermal safety of a DC. The existing solutions typically follow a two-step approach, in which the system is first modeled based on expert knowledge and, thus, the operational actions are determined with heuristics and/or best practices. These approaches are often hard to generalize and might result in suboptimal performances due to intrinsic model errors for large-scale systems. In this paper, we propose optimizing the DC cooling control via the emerging deep reinforcement learning (DRL) framework. Compared to the existing approaches, our solution lends itself an end-to-end cooling control algorithm (CCA) via an off-policy offline version of the deep deterministic policy gradient (DDPG) algorithm, in which an evaluation network is trained to predict the DC energy cost along with resulting cooling effects, and a policy network is trained to gauge optimized control settings. Moreover, we introduce a de-underestimation (DUE) validation mechanism for the critic network to reduce the potential underestimation of the risk caused by neural approximation. Our proposed algorithm is evaluated on an EnergyPlus simulation platform and on a real data trace collected from the National Super Computing Centre (NSCC) of Singapore. The resulting numerical results show that the proposed CCA can achieve up to 11% cooling cost reduction on the simulation platform compared with a manually configured baseline control algorithm. In the trace-based study of conservative nature, the proposed algorithm can achieve about 15% cooling energy savings on the NSCC data trace. Our pioneering approach can shed new light on the application of DRL to optimize and automate DC operations and management, potentially revolutionizing digital infrastructure management with intelligence.
机译:数据中心(DC)对支持服务的重要作用,例如电子商务和云计算。从这个不断增长的市场中产生的能量消耗引起了显着的关注,并且明显几乎一半的能量成本用于将DC冷却至特定温度。因此,在不牺牲DC的热安全性的情况下,抑制冷却能量成本是一个关键的操作挑战。现有解决方案通常遵循两步方法,其中系统是基于专家知识建模的,因此,使用启发式和/或最佳实践来确定操作动作。这些方法往往是难以概括的,并且可能导致大型系统的内在模型误差导致次优性能。在本文中,我们提出了通过新出现的深度加强学习(DRL)框架优化DC冷却控制。与现有方法相比,我们的解决方案通过深度确定性策略梯度(DDPG)算法的截止策略离线版本来利用端到端冷却控制算法(CCA),其中培训评估网络以预测直流能量成本随着导致的冷却效果,培训策略网络以衡量优化的控制设​​置。此外,我们介绍了批评网络的解除估计(由于)验证机制,以减少神经近似引起的风险的潜在低估。我们所提出的算法在EnergyPlus仿真平台上进行了评估,并在新加坡国家超计算中心(NSCC)收集的真实数据迹线。结果的数值结果表明,与手动配置的基线控制算法相比,所提出的CCA可以在模拟平台上实现高达11%的冷却成本降低。在基于痕量的保守性研究中,所提出的算法可以在NSCC数据轨迹上达到约15%的冷却能量节省。我们的开拓方法可以在DRL应用于优化和自动化DC运营和管理的过程中,潜在地彻底改变数字基础设施管理。

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