数字硬件设备中人工神经网络执行阶段的实现方法

Ulises Castro Peñaloza, Jorge E. Ibarra Esquer, Brenda L. Flores Rios
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引用次数: 3

摘要

本文描述了一种在硬件设备中实现人工神经网络(ANN)执行阶段的方法。首先,我们展示了单个神经元的元素:乘数、乘积和传递函数如何被分离并构建为VHDL实体。然后,这些实体相互连接,形成一个神经元,可以映射到硬件设备。使用类似的方法,神经元分层分组,然后相互连接以构建人工神经网络。该方法旨在引导神经网络设计师完成将设计转化为硬件设备所需的步骤,从神经模拟器提供的结果开始,获得网络参数并将其转化为完全可合成的设计。提出了一种基于java的人工神经网络描述符到VHDL转换器的原型。此外,还讨论了神经模拟器所需的特性,并对不同硬件平台进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Methodology for Implementation of the Execution Phase of Artificial Neural Networks in Digital Hardware Devices
In this paper we describe a methodology for implementing the phase of execution of artificial neural networks (ANN) in hardware devices. First, we show how the elements of a single neuron: multipliers, sum of products and transfer function are separated and constructed as VHDL entities. These entities are then interconnected to form a neuron that can be mapped to a hardware device. Using a similar approach, neurons are grouped in layers, which are then interconnected themselves to construct an artificial neural network. The methodology is intended to lead a neural network designer through the steps required to take the design into a hardware device, starting with the results provided by a neurosimulator, obtaining the network parameters and translating them into a fully synthesizable design. A prototype of a Java-based ANN descriptor to VHDL translator is presented. In addition, the desired characteristics of neurosimulators are discussed and a comparison among different hardware platforms is shown.
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