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Phase model reduction for oscillatory networks subject to stochastic inputs

机译:振荡网对随机输入进行振荡网的相模

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Oscillatory networks represent a circuit architecture for image and information processing, that can be used to realize associative and dynamic memories. Phase noise is often a limiting key factors for the performances of oscillatory networks. The ideal framework to investigate phase noise effect in nonlinear oscillators are phase models. Classical phase models lead to the conclusion that, in presence of random disturbances such as white noise, the phase noise problem is simply a diffusion process. In this paper we develop a reduced order model for phase noise analysis in nonlinear oscillators. We derive a reduced Fokker-Planck equation for the phase variable and the corresponding reduced phase equations. We show that the phase noise problem is a convection-diffusion process, proving that white noise produces both phase diffusion and frequency shift.
机译:振荡网表示用于图像和信息处理的电路架构,其可用于实现关联和动态存储器。相位噪声通常是振荡网性能的限制关键因素。研究非线性振荡器中相位噪声效应的理想框架是相位模型。经典相模型导致得出结论,在存在随机扰动之类的白噪声时,相位噪声问题只是一种扩散过程。本文在非线性振荡器中开发了一种减少的相位噪声分析阶模型。我们为相变减少的Fokker-Planck方程和相应的减小的相位方程。我们表明相位噪声问题是对流扩散过程,证明白噪声产生两个相位扩散和频移。

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