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High level abstraction of memristor model for neural network simulation

机译:神经网络仿真映像模型的高级抽象

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Memristor emerged as an auspicious device in the field of neuromorphic engineering due to its nanoscale size, non-volatility, scalability, fast switching, low power consumption, high density and compatability with CMOS technology. This paper unveils the first mathematical memristor modeling in C++. We also represent the implementation and training of a single layer and multilayer neural network using C++ memristor model. The memristive crossbar structure has been utilized to train the network. We successfully demonstrated linear and non-linear seperable logic functions using C++ memristor modeling in the simulation of neural network. We also demonstrated pattern classifier using single layer neural network at two different learning rates and the network performs satisfactorily at both the learning rates.
机译:由于其纳米级尺寸,非挥发性,可扩展性,快速切换,低功耗,高密度和CMOS技术兼容性,忆失在神经晶体工程领域的吉祥装置。本文推出了C ++中的第一个数学映像模型。我们还使用C ++ Memristor模型代表单层和多层神经网络的实现和培训。存储器横杆结构已被利用来训练网络。我们在神经网络模拟中成功地演示了C ++ Memristor建模的线性和非线性可逻辑函数。我们还使用单层神经网络以两种不同的学习率使用单层神经网络展示了图案分类器,并且网络在学习速率下令人满意地表现得令人满意。

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