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Artificial bee colony algorithm for small signal model parameter extraction of MESFET

机译:MESFET小信号模型参数提取的人工蜂群算法

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This paper presents an application of swarm intelligence technique namely artificial bee colony (ABC) to extract the small signal equivalent circuit model parameters of GaAs metal extended semiconductor field effect transistor (MESFET) device and compares its performance with particle swarm optimization (PSO) algorithm. Parameter extraction in MESFET process involves minimizing the error, which is measured as the difference between modeled and measured S parameter over a broad frequency range. This error surface is viewed as a multi-modal error surface and robust optimization algorithms are required to solve this kind of problem. This paper proposes an ABC algorithm that simulates the foraging behavior of honey bee swarm for model parameter extraction. The performance comparison of both the algorithms (ABC and PSO) are compared with respect to computational time and the quality of solutions (QoS). The simulation results illustrate that these techniques extract accurately the 16-element small signal model parameters of MESFET. The efficiency of this approach is demonstrated by a good fit between the measured and modeled S-parameter data over a frequency range of 0.5-25 GHz.
机译:本文提出了一种群体智能技术,即人工蜂群(ABC),用于提取GaAs金属扩展半导体场效应晶体管(MESFET)器件的小信号等效电路模型参数,并将其性能与粒子群优化(PSO)算法进行比较。 MESFET工艺中的参数提取涉及将误差最小化,该误差是在较宽的频率范围内建模和测得的S参数之间的差异而测得的。该错误表面被视为多模式错误表面,因此需要鲁棒的优化算法来解决此类问题。提出了一种模拟蜜蜂群觅食行为的ABC算法,用于模型参数的提取。将两种算法(ABC和PSO)的性能比较在计算时间和解决方案质量(QoS)方面进行了比较。仿真结果表明,这些技术可以准确地提取MESFET的16元素小信号模型参数。这种方法的效率通过在0.5-25 GHz频率范围内的实测S参数数据和建模S参数数据之间的良好拟合来证明。

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