Adaptive Machine Learning-Based Proactive Thermal Management for NoC Systems

被引:1
|
作者
Chen, Kun-Chih [1 ]
Liao, Yuan-Hao [2 ]
Chen, Cheng-Ting [2 ]
Wang, Lei-Qi [2 ]
机构
[1] Natl Yang Ming Chiao Tung Univ, Inst Elect, Hsinchu 300093, Taiwan
[2] Natl Sun Yat Sen Univ, Dept Comp Sci & Engn, Kaohsiung 804, Taiwan
关键词
Machine learning (ML); network-on-chip (NoC); neural network; reinforcement learning (RL); temperature prediction; thermal management; POWER; SENSORS; SCHEME; MODEL;
D O I
10.1109/TVLSI.2023.3282969
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Because of the high-complex interconnection in contemporary multicore systems, the network-on-chip (NoC) technology has been proven as an efficient way to solve the communication problem in multicore systems. However, the thermal problem becomes the main design challenge in the current NoC systems due to the high-diverse workload distribution and large power density. Therefore, proactive dynamic thermal management (PDTM) is employed as an efficient way to control the system temperature. Based on the predicted temperature information, the PDTM can control the system temperature in advance to reduce the performance impact during the temperature control period. However, conventional temperature prediction models are usually built based on specific physical parameters, which are usually temperature-sensitive. Consequently, the current temperature prediction models still result in significant temperature prediction errors. To solve this problem, a novel adaptive machine learning (ML)-based PDTM is proposed in this work. The adaptive ML-based PDTM first uses an adaptive single layer perceptron (ASLP), which is composed of a single-neuron operation and a least mean square (LMS) adaptive filter technology, to precisely predict the future temperature. Afterward, the proposed adaptive reinforcement learning (RL) is used to find the proper throttling ratio to control the system temperature. In this way, the proposed adaptive ML-based PDTM can adapt to the hyperplane of the temperature behavior of the NoC system and provide a proper temperature control strategy at runtime. Compared with related works, the proposed approach reduces average temperature prediction error by 0.2%-78.0% and improves the system performance by 2.4%-43.0% with smaller hardware overhead.
引用
收藏
页码:1114 / 1127
页数:14
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