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首页> 外文期刊>Circuits and Systems I: Regular Papers, IEEE Transactions on >Bias-Compensated Least Squares Identification of Distributed Thermal Models for Many-Core Systems-on-Chip
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Bias-Compensated Least Squares Identification of Distributed Thermal Models for Many-Core Systems-on-Chip

机译:片上多核系统的分布式热模型的偏差补偿最小二乘辨识

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摘要

The thermal wall for many-core systems on-chip calls for advanced management techniques to maximize performance, while capping temperatures. Distributed and compact thermal models are a cornerstone for such techniques. System identification methodologies allow to extract models directly from the target device thermal response. Unfortunately, standard Auto-Regressive eXogenous models and Least Squares techniques cannot effectively tackle both model approximation and measurement noise typical of real systems. In this work, we propose a novel distributed identification strategy to derive distributed interacting thermal models. The presented method can cope with both process noise and temperature sensor noise affecting inputs and outputs of the adopted models. Online and offline versions are presented, and issues related to model order, sampling time and input stimuli are addressed. The proposed method is applied to the Intel's Single-chip-Cloud-Computer many-core prototype.
机译:片上多核系统的散热墙需要先进的管理技术,以在限制温度的同时最大化性能。分布式紧凑型热模型是此类技术的基石。系统识别方法允许直接从目标设备的热响应中提取模型。不幸的是,标准的自回归异质模型和最小二乘技术无法有效地解决实际系统中典型的模型逼近和测量噪声问题。在这项工作中,我们提出了一种新颖的分布式识别策略,以导出分布式相互作用的热模型。所提出的方法可以应付影响所采用模型的输入和输出的过程噪声和温度传感器噪声。介绍了联机和脱机版本,并解决了与模型顺序,采样时间和输入刺激有关的问题。该方法应用于英特尔的单芯片云计算机多核原型。

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