A Memory Based Approach for Digital Implementation of Tanh using LUT and RALUT

Samira Sorayassa, M. Ahmadi
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Abstract

Tangent Hyperbolic (Tanh) has been used as a preferred activation function in implementing a multi-layer neural network. The differentiability of this function makes it suitable for derivativebased learning algorithm such as error back propagation technique. In this paper two different memory-based techniques for accurate approximation and digital implementation of the Tanh function using Look Up Table (LUT) and Range Addressable Look Up Table (RALUT) are given. A thorough comparative study of the two techniques in terms of their hardware resource usage on FPGA and their accuracies are explained. The schematic of the synthesized design for special cased are given as an example.
一种基于内存的基于LUT和RALUT的Tanh数字实现方法
正切双曲函数(Tanh)是实现多层神经网络的首选激活函数。该函数的可微性使其适用于基于导数的学习算法,如误差反向传播技术。本文给出了使用查找表(LUT)和范围可寻址查找表(RALUT)精确逼近和数字实现Tanh函数的两种不同的基于内存的技术。对这两种技术在FPGA上的硬件资源使用和精度进行了全面的比较研究。并举例说明了特殊情况下的综合设计方案。
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