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Optimum design of microwave oscillator using Hopfield Neural Network

机译:基于Hopfield神经网络的微波振荡器的优化设计。

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A new method is presented to optimally design analog RF circuits such as oscillators using Hopfield Neural Networks (HNN). For this purpose, an HNN is trained with some sample realization of a specific structure of an analog circuit. Then, considering random initial points, the related HNN converges to spurious local minima of energy function which may be associated with an optimum design of the analog circuit. To demonstrate this idea in practice, a 2.4 GHz fixed-frequency oscillator is considered. The associated design parameters of the oscillator are trained in the weights of an HNN. Starting from random initialization, the HNN provides some design realizations at the convergence state (associated spurious local minima). Some of these design realizations show a better performance in terms of phase noise, power consumption and harmonic distortions.
机译:提出了一种使用Hopfield神经网络(HNN)优化设计模拟射频电路(例如振荡器)的新方法。为此,通过模拟电路特定结构的一些示例实现来训练HNN。然后,考虑随机初始点,相关的HNN收敛到能量函数的虚假局部最小值,这可能与模拟电路的最佳设计有关。为了在实践中证明这一思想,考虑使用2.4 GHz固定频率振荡器。振荡器的相关设计参数以HNN的权重进行训练。从随机初始化开始,HNN在收敛状态(相关的伪局部最小值)上提供了一些设计实现。这些设计实现中的一些在相位噪声,功耗和谐波失真方面表现出更好的性能。

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