一种用于非线性电路降阶的晶体管级分段线性宏建模方法

Xiaoda Pan, Fan Yang, Xuan Zeng, Yangfeng Su
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引用次数: 4

摘要

轨迹分段线性宏观建模(TPWL)技术被广泛应用于强非线性电路的表征,使强非线性电路的简化成为可能。轨迹分段线性宏观建模技术将围绕多个扩展点的非线性电路线性化,这些扩展点是从训练输入驱动的状态轨迹中提取的。然而,轨迹分段线性宏建模技术的精度很大程度上依赖于提取的展开点和训练输入。如果状态向量到达距离提取的展开点较远的区域,将导致仿真误差较大。本文提出了一种有效的晶体管级分段线性化方案,用于非线性电路的宏观建模。首先为每个晶体管建立分段线性模型。然后将所有晶体管的分段线性模型与适当的权函数结合起来,构建整个非线性电路的宏观模型。该方法可以覆盖比TPWL方法更大的状态空间。利用晶体管的完整分段线性模型,所构建的非线性电路的分段线性模型能够覆盖非线性电路的整个状态空间。更重要的是,所提出的晶体管级分段线性化宏观模型的模型降阶也是可能的,这使得所提出的方法成为非线性电路模型降阶的一种潜在的良好的宏观建模方法。
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An efficient transistor-level piecewise-linear macromodeling approach for model order reduction of nonlinear circuits
Trajectory piecewise-linear macromodeling (TPWL) technique has been widely employed to characterize strong nonlinear circuits, and makes the reduction of the strong nonlinear circuits possible. The trajectory piecewise-linear macromodeling technique linearizes nonlinear circuits around multiple expansion points which are extracted from state trajectories driven by training inputs. However, the accuracy of the trajectory piecewise-linear macromodeling technique heavily relies on the extracted expansion points and the training inputs. It will lead to large error in simulation if state vector reaches regions far away from the extracted expansion points. In this paper, we propose an efficient transistor-level piecewise linearization scheme for macromodeling of nonlinear circuits. Piecewise linear models are first built for each transistor. The macromodel of the whole nonlinear circuit is then constructed by combining all the piecewise-linear models of the transistors together with appropriate weight functions. The proposed approach can cover remarkably larger state space than the TPWL method. By using the complete piecewise-linear models of the transistors, the constructed piecewise-linear models of the nonlinear circuits are capable of covering the whole state space of the nonlinear circuits. More importantly, model order reduction of the proposed transistor-level piecewise linearization macromodel is also possible, which makes the proposed method a potentially good macromodeling approach for model order reduction of nonlinear circuits.
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