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A Coupled Schmitt Trigger Oscillator Neural Network for Pattern Recognition Applications

机译:模式识别应用的耦合施密特触发器振荡器神经网络

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This paper demonstrates a coupled Schmitt trigger oscillator based oscillator neural network (SMT-ONN) for pattern recognition applications. Unlike previous ONN models, the SMT-ONN can be easily realized in both hardware and software levels. A mathematical model of the Schmitt Trigger Oscillator as well as the corresponding CMOS circuit are presented to validate the mathematical model. The SMT-ONN can realize the pattern recognition task by considering the convergence time and frequency as the recognition indicators. A Kuramoto model based frequency synchronization approach is utilized, and simulation results indicate less than 160 ms convergence time and close frequency match for a simplified pattern recognition application.
机译:本文演示了一个基于模式耦合应用的耦合施密特触发器振荡器的振荡器神经网络(SMT-ONN)。与以前的ONN模型不同,SMT-ONN可以在硬件和软件级别上轻松实现。提出了施密特触发器振荡器的数学模型以及相应的CMOS电路,以验证该数学模型。通过将收敛时间和频率作为识别指标,SMT-ONN可以实现模式识别任务。利用了基于Kuramoto模型的频率同步方法,仿真结果表明,对于简化的模式识别应用而言,收敛时间小于160 ms,并且频率匹配接近。

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