广义增广拉格朗日及其在VLSI全局布局中的应用*

Ziran Zhu, Jianli Chen, Zheng Peng, Wen-xing Zhu, Yao-Wen Chang
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引用次数: 14

摘要

整体布局在解决方案的质量和效率上占主导地位。随着设计复杂性的增加和各种设计约束的增加,开发一种高效、高质量的全局布局算法是现代大规模电路设计的迫切需要。本文首先分析了全局布局的四种非线性优化方法(二次惩罚法、拉格朗日乘子法和两种增广拉格朗日方法)的性质,然后提出了一种广义增广拉格朗日方法来解决这一问题。该方法保留了二次惩罚法和增广拉格朗日法的优点,并提供了从二次惩罚法到增广拉格朗日法的平滑过渡。证明了所提出的广义增广拉格朗日方法在不同约束条件下具有全局收敛性。实验结果表明,与其他四种常用的优化方法相比,本文方法具有较好的优化效果,并且对不同目标具有较强的鲁棒性。特别是,我们的广义增广拉格朗日公式在理论上是合理的,可以解决一般的大规模约束非线性优化问题,在许多领域得到了广泛的应用。
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Generalized Augmented Lagrangian and Its Applications to VLSI Global Placement*
Global placement dominates the circuit placement process in its solution quality and efficiency. With increasing design complexity and various design constraints, it is desirable to develop an efficient, high-quality global placement algorithm for modern large-scale circuit designs. In this paper, we first analyze the properties of four nonlinear optimization methods (the quadratic penalty method, the Lagrange multiplier method, and two augmented Lagrangian methods) for global placement, and then develop a generalized augmented Lagrangian method to solve this problem. Our proposed method preserves the advantages of the quadratic penalty method and the augmented Lagrangian method, and provides a smooth progress from the quadratic penalty method to the augmented Lagrangian method. We prove that the proposed generalized augmented Lagrangian method is globally convergent for the original global placement problem, even with different constraints. Compared with the other four popular optimization methods, experimental results show that our method achieves the best quality and is robust for handling different objectives. In particular, our generalized augmented Lagrangian formulation is theoretically sound and can solve generic large-scale constrained nonlinear optimization problems, which are widely used in many fields.
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