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Low-resource hardware implementation of the hyperbolic tangent for artificial neural networks

机译:人工神经网络的双曲正切的低资源硬件实现

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摘要

Artificial neural networks are a widespread tool with application in a variety of areas ranging from the social sciences to engineering. Many of these applications have reached a hardware implementation phase and have been documented in scientific papers. Unfortunately, most of the implementations have a simplified hyperbolic tangent replacement which has been the most common problem, as well as the most resource-consuming block in terms of hardware. This paper proposes a low-resource hardware implementation of the hyperbolic tangent, by using the simplest solution in order to obtain the lowest error possible thus far with a set of 25 polynomials of third order, obtained with Chebyshev interpolations. The results obtained show that the solution proposed holds a low error while simultaneously promising the use of low resources, as only third-order polynomials are used.
机译:人工神经网络是一种广泛使用的工具,其应用范围从社会科学到工程领域。这些应用中的许多已经达到了硬件实现阶段,并且已经在科学论文中进行了记录。不幸的是,大多数实现都有简化的双曲线正切替换,这是最常见的问题,也是就硬件而言最耗资源的模块。本文提出了一种双曲线正切的低资源硬件实现,该方法使用最简单的解决方案,以便利用Chebyshev插值获得的25个三阶多项式集获得迄今为止可能的最低误差。获得的结果表明,所提出的解决方案具有较低的误差,同时也保证了使用低资源,因为仅使用了三阶多项式。

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