Fast Thermal Analysis for Chiplet Design based on Graph Convolution Networks

Liang Chen, Wentian Jin, S. Tan
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引用次数: 6

Abstract

2.5D chiplet-based technology promises an efficient integration technique for advanced designs with more functionality and higher performance. Temperature and related thermal optimization, heat removal are of critical importance for temperature-aware physical synthesis for chiplets. This paper presents a novel graph convolutional networks (GCN) architecture to estimate the thermal map of the 2.5D chiplet-based systems with the thermal resistance networks built by the compact thermal model (CTM). First, we take the total power of all chiplets as an input feature, which is a global feature. This additional global information can overcome the limitation that the GCN can only extract local information via neighborhood aggregation. Second, inspired by convolutional neural networks (CNN), we add skip connection into the GCN to pass the global feature directly across the hidden layers with the concatenation operation. Third, to consider the edge embedding feature, we propose an edge-based attention mechanism based on the graph attention networks (GAT). Last, with the multiple aggregators and scalers of principle neighborhood aggregation (PNA) networks, we can further improve the modeling capacity of the novel GCN. The experimental results show that the proposed GCN model can achieve an average RMSE of 0.31 K and deliver a 2.6× speedup over the fast steady-state solver of open-source HotSpot based on SuperLU. More importantly, the GCN model demonstrates more useful generalization or transferable capability. Our results show that the trained GCN can be directly applied to predict thermal maps of six unseen datasets with acceptable mean RMSEs of less than 0.67 K without retraining via inductive learning.
基于图卷积网络的芯片设计快速热分析
基于2.5D芯片的技术有望为具有更多功能和更高性能的先进设计提供高效集成技术。温度和相关的热优化、热去除对于温度敏感的小晶物理合成至关重要。本文提出了一种新的图形卷积网络(GCN)架构,利用紧凑热模型(CTM)构建的热阻网络来估计基于2.5D芯片的系统的热图。首先,我们将所有小芯片的总功率作为输入特征,这是一个全局特征。这种附加的全局信息可以克服GCN只能通过邻域聚合提取局部信息的限制。其次,受卷积神经网络(CNN)的启发,我们在GCN中加入跳跃连接,通过连接操作直接在隐藏层之间传递全局特征。第三,考虑边缘嵌入特征,提出了一种基于图注意网络(GAT)的边缘注意机制。最后,利用主邻域聚合(PNA)网络的多个聚合器和标量,进一步提高了新型GCN的建模能力。实验结果表明,与基于SuperLU的开源热点快速稳态求解器相比,所提出的GCN模型平均RMSE为0.31 K,加速提高2.6倍。更重要的是,GCN模型显示出更有用的泛化或可转移能力。我们的研究结果表明,训练后的GCN可以直接应用于预测六个未见数据集的热图,平均rmse小于0.67 K,而无需通过归纳学习进行再训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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