HierPINN-EM:基于快速学习的多段互连电迁移分析,使用分层物理信息神经网络

Wentian Jin, Liang Chen, Subed Lamichhane, M. Kavousi, S. Tan
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引用次数: 2

摘要

随着纳米技术的发展,电迁移(EM)成为VLSI电路的一个主要问题。问题的关键是求解偏微分Korhonen方程,由于积分密度的增加,这一问题仍然具有挑战性。近年来,由于深度神经网络的突破性成功,科学机器学习已经被用于解决偏微分方程(PDE),现有的方法如物理信息神经网络(PINN)在一些小的偏微分方程问题上显示出有希望的结果。然而,对于大型工程问题,如大型互连树的EM分析,结果表明,由于变量太多,普通的PINN不能很好地工作。在这项工作中,我们提出了一种新的分层PINN方法,HierPINN-EM用于多段互连的快速电磁诱导应力分析。我们不是将互连树作为一个整体来求解,而是首先使用监督学习方法求解不同边界和几何参数下的单个线段的电磁问题。然后,我们应用无监督的PINN概念,通过在所有线段的边界上执行物理定律来解决整个互连。通过这种方式,HierPINN-EM可以显著减少普通PINN求解器的变量数量。在许多合成互连树上的数值结果表明,与普通的PINN方法相比,HierPINN-EM方法的训练速度提高了几个数量级,精度提高了79倍以上。此外,与最近提出的基于图神经网络的EM求解器EMGraph相比,HierPINN-EM的准确率提高了19%,训练成本降低了99%。
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HierPINN-EM: Fast Learning-Based Electromigration Analysis for Multi-Segment Interconnects Using Hierarchical Physics-informed Neural Network
Electromigration (EM) becomes a major concern for VLSI circuits as the technology advances in the nanometer regime. The crux of problem is to solve the partial differential Korhonen equations, which remains challenging due to the increasing integrated density. Recently, scientific m achine l earning has been explored to solve partial differential equations ( PDE) due to breakthrough success in deep neural networks and existing approach such as physics-informed neural networks (PINN) shows promising results for some small PDE problems. However, for large engineering problems like EM analysis for large interconnect trees, it was shown that the plain PINN does not work well due the to large number of variables. In this work, we propose a novel hierarchical PINN approach, HierPINN-EM for fast EM induced stress analysis for multi-segment interconnects. Instead of solving the interconnect tree as a whole, we first solve EM problem for one wire segment under different boundary and geometrical parameters using supervised learning. Then we apply unsupervised PINN concept to solve the whole interconnects by enforcing the physics laws in the boundaries for all wire segments. In this way, HierPINN-EM can significantly reduce the number of variables at plain PINN solver. Numerical results on a number of synthetic interconnect trees show that HierPINN-EM can lead to orders of magnitude speedup in training and more than 79× better accuracy over the plain PINN method. Furthermore, HierPINN-EM yields 19% better accuracy with 99% reduction in training cost over recently proposed Graph Neural Network-based EM solver, EMGraph.
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