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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >Thermal Sensor Placement and Thermal Reconstruction Under Gaussian and Non-Gaussian Sensor Noises for 3-D NoC
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Thermal Sensor Placement and Thermal Reconstruction Under Gaussian and Non-Gaussian Sensor Noises for 3-D NoC

机译:3-D NoC在高斯和非高斯传感器噪声下的热传感器放置和热重建

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摘要

On-chip thermal sensors are essential for temperature management in 3-D network-on-chip (NoC) systems. However, due to the physical (area and power) or economical constraints, the number of sensors is limited. Therefore, the two critical issues we face are: 1) how to figure out an efficient thermal sensor placement with the limited number of sensors and 2) how to reconstruct the entire thermal profile based on sensor observations. Another major issue for the thermal reconstruction is the sensor measurement accuracy. Thus, online accurate full-chip thermal reconstruction under Gaussian and non-Gaussian noises is another great challenge. In this paper, a greedy thermal sensor placement algorithm maximizing the rank of the observability Gramian is proposed. A good placement algorithm always relies on a specific reconstruction method. The proposed placement algorithm is designed for the state-space-based thermal model, thus the combination of the proposed placement algorithm and the Kalman filter-based reconstruction method provides a high reconstruction accuracy under Gaussian noise. For accurate temperature reconstruction under non-Gaussian noise, the Gaussian-Sum filter is applied to 3-D NoC. Compared with the Kalman filter, the Gaussian-Sum filter can reduce the root-mean-squared-error and the max error by 29.27%-35% and 33.26%-40.6%, respectively. A reusable architecture for the Kalman filter and the Gaussian-Sum filter has been proposed. Its hardware implementation details are presented in this paper. Besides, the performance and the area are evaluated as well.
机译:片上热传感器对于3-D片上网络(NoC)系统中的温度管理至关重要。但是,由于物理(面积和功率)或经济上的限制,传感器的数量受到限制。因此,我们面临的两个关键问题是:1)如何在传感器数量有限的情况下找出有效的热传感器位置,以及2)如何根据传感器的观测结果重建整个热分布。热重建的另一个主要问题是传感器的测量精度。因此,在高斯和非高斯噪声下在线精确的全芯片热重构是另一个巨大的挑战。本文提出了一种贪婪的热传感器放置算法,该算法最大程度地提高了可观察性格拉米安的秩。好的放置算法始终依赖于特定的重建方法。所提出的放置算法是为基于状态空间的热模型设计的,因此,所提出的放置算法与基于卡尔曼滤波器的重构方法的结合在高斯噪声下提供了很高的重构精度。为了在非高斯噪声下进行准确的温度重建,将高斯和滤波器应用于3-D NoC。与卡尔曼滤波器相比,高斯和滤波器可以将均方根误差和最大误差分别降低29.27%-35%和33.26%-40.6%。已经提出了用于卡尔曼滤波器和高斯和滤波器的可重用架构。本文介绍了其硬件实现细节。此外,还要评估性能和面积。

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