Circuit optimization via adjoint Lagrangians

A. Conn, R. Haring, C. Visweswariah, C. Wu
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引用次数: 23

Abstract

The circuit tuning problem is best approached by means of gradient-based nonlinear optimization algorithms. For large circuits, gradient computation can be the bottleneck in the optimization procedure. Traditionally, when the number of measurements is large relative to the number of tunable parameters, the direct method is used to repeatedly solve the associated sensitivity circuit to obtain all the necessary gradients. Likewise, when the parameters outnumber the measurements, the adjoint method is employed to solve the adjoint circuit repeatedly for each measurement to compute the sensitivities. In this paper we propose the adjoint Lagrangian method, which computes all the gradients necessary for augmented-Lagrangian-based optimization in a single adjoint analysis. After the nominal simulation of the circuit has been carried out, the gradients of the merit function are expressed as the gradients of a weighted sum of circuit measurements. The weights are dependent on the nominal solution and on optimizer quantities such as Lagrange multipliers. By suitably choosing the excitations of the adjoint circuit, the gradients of the merit function are computed via a single adjoint analysis, irrespective of the number of measurements and the number of parameters of the optimization. This procedure requires close integration between the nonlinear optimization software and the circuit simulation program.
伴随拉格朗日算子的电路优化
电路调谐问题的最佳解决方法是基于梯度的非线性优化算法。对于大型电路,梯度计算是优化过程中的瓶颈。传统上,当测量次数相对于可调参数的数量较大时,采用直接法反复求解相关的灵敏度电路以获得所有必要的梯度。同样,当参数超过测量值时,采用伴随法对每次测量重复求解伴随电路以计算灵敏度。本文提出了伴随拉格朗日方法,该方法在单个伴随分析中计算基于增强拉格朗日优化所需的所有梯度。在对电路进行标称仿真之后,将优点函数的梯度表示为电路测量值加权和的梯度。权重依赖于标称解和拉格朗日乘数等优化量。通过适当地选择伴随电路的激励,无论测量次数和优化参数的数量如何,都可以通过单次伴随分析计算出优点函数的梯度。这一过程需要非线性优化软件和电路仿真程序的紧密结合。
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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