交流传输信号神经电路及深度学习模型设计

M. Kawaguchi, N. Ishii, M. Umeno
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引用次数: 0

摘要

在神经网络领域,已经提出了许多应用模型。以往的模拟神经网络模型是由运算放大器和固定电阻组成的。网络的连接权值很难改变。在这项研究中,我们使用模拟电子交流电路。连接权值描述电压,输入信号描述频率。连接系数很容易改变。这个模型只适用于模拟电路。它可以在很短的时间内完成学习过程,使学习更加灵活。然而,该模型的结构只有一个输入和一个输出网络。我们改进了单元和网络层的数量。此外,我们还提出了在硬件上实现深度学习模型的可能性。
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AC Transmission Signal Neural Circuit and the Design of Deep Learning Model
In the neural network field, many application models have been proposed. Previous analog neural network models were composed of the operational amplifier and fixed resistance. It is difficult to change the connecting weight of network. In this study, we used analog electronic AC circuits. The connecting weights describe the voltage and input signal describe the frequency. It is easy to change the connection coefficient. This model works only on analog electronic circuits. It can finish the learning process in a very short time and this model will enable more flexible learning. However, the structure of this model is only one input and one output network. We improved the number of unit and network layer. Moreover, we suggest the possibility of realization about the hardware implementation of the deep learning model.
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