从测量的s参数中提取小信号GaAs MESFET模型参数

M. K. Ahmed, S. Ibrahem
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引用次数: 9

摘要

基于测量的s参数,推导了小信号GaAs场效应管模型。使用计算机辅助优化程序找到了模型参数,其中电路元件的初始值部分由1ghz下测量的s参数确定,部分由直流测量确定。通过使用优化程序,可以注意到一些电路元件的最终值与初始值相比变化很小,可以忽略不计。其他一些电路元件的初始值和最终值之间有很大的变化,可以使用二阶近似重新调整。
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Small signal GaAs MESFET model parameters extracted from measured S-parameters
A small signal GaAs FET model is derived based on measured s-parameters. The model parameters have been found using a computer aided optimization program, where the initial value of the circuit elements are determined in part from measured s-parameters at 1 GHz, and in part from DC measurements. By using the optimization program, it is to be noted that the final value of some circuit elements is changed by a negligible amount compared with its initial value. Some other circuit elements which have large changes between their initial and final values, can be readjusted using the second order approximation.
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