人工神经网络非线性激活函数的硬件实现

Z. Dlugosz, R. Dlugosz
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引用次数: 3

摘要

本文提出了一种用于各种人工神经网络(包括小波神经网络)的神经元非线性激活函数的硬件高效实现方法。类似的解决方案也可用于模糊神经网络。激活功能的软件实现相对简单,但在硬件上的实现则较为复杂。为此,我们进行了调查,其中训练过程用简化的激活函数完成。与理想函数的结果比较表明,这种简化是可以接受的。所实现的小波神经网络通过选择由三角函数组成的带有高斯噪声的信号进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear Activation Functions for Artificial Neural Networks Realized in Hardware
The paper presents a hardware efficient implementation of selected nonlinear activation functions of the neuron for the application in various artificial neural networks, including wavelet neural network (WNNs). Similar solutions may also be used in fuzzy neural networks. A software implementation of the activation function is relatively simple, however in hardware the realization is more complex. For this reason, we performed investigations, in which the training process was completed with simplified activation function. The comparison with the results obtained for an ideal function have shown that such a simplification is acceptable. The realized WNN has been successfully verified with selected signals composed of trigonometric functions, accompanied by the Gaussian noise.
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