服务器处理器直接液冷的建模与深度显式模型预测控制

Haoran Chen, Yong Han, G. Tang, Xiaowu Zhang
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引用次数: 1

摘要

直接液体冷却大大提高了高热设计功率(TDP)处理器的容量和效率。设计了先进的微结构冷却装置和循环系统。由于系统工作负荷变化快,热动力学复杂,需要采用先进的控制方法来平衡冷却功率和能耗,以提高运行效率。提出了一种基于神经网络的液冷系统显式模型预测控制器的设计与实现。这个神经网络明确地用观察来表示决策。用于训练神经网络的损失函数来源于模型预测控制范式,其中模型是由物理-经验-混合模拟获得的。训练数据从系统的工作点均匀采样,训练过程在云上进行。然后将训练好的模型作为控制器在局部实验平台上实现。随机变化负荷下的冷却效率性能实验表明,与传统的PID控制器相比,该控制器具有更好的温度控制和更低的泵能耗。研究结果在以下方面取得了进展:1)用简化近似模型表征处理器液冷系统热力学;2)搭建实验平台,支持液冷控制算法的测试;3)提出了一种由深度神经网络(DEMPC)逼近的显式模型预测控制器;4)展示了DEMPC比传统比例控制器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Deep Explicit Model Predictive Control for Server Processor Direct Liquid Cooling
Direct liquid cooling greatly improves the capacity and efficiency for high thermal designed power (TDP) processors. Advanced micro-structured cooling devices and loop system has been designed. Given rapid changing working load condition and complex thermal dynamics of the system, advanced control method is needed to balance cooling power and energy consumption in order to improve operating efficiency. This paper presents the design and implementation of an explicit model predictive controller based on neural network for the liquid cooling system. This neural network explicitly represents the decisions in terms of observations. Loss function for training the neural network is derived from the paradigm of model predictive control, where the model is obtained from physical-empirical-hybrid simulations. The training data is sampled uniformly from the working point of the system, and training process is done on cloud with model. The well-trained model is then implemented as controller in a local experimental platform. Experiments on cooling efficiency performance under randomly varying loads show that this controller has better temperature control and reduced pump energy consumption comparing to traditional PID controller. This result achieves progress on: 1) characterizing thermodynamics of the processor liquid cooling system by simplified and approximated model; 2) building experimental platform to support testing of liquid cooling control algorithms; 3) developing an explicit form of model predictive controller approximated by deep neural network (DEMPC); and 4) demonstrating the performance of the DEMPC over the traditional proportional controller.
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