Goel Akash, Goel Amit Kumar, Kumar Adesh
Department of Computer Science & Engineering, Galgotia's University, Greater Noida, NCR India.
Department of Electrical & Electronics Engineering, University of Petroleum and Energy Studies, Dehradun, India.
Multimed Tools Appl. 2023 Feb 20:1-22. doi: 10.1007/s11042-023-14627-3.
An artificial neural network (ANN) is a computational system that is designed to replicate and process the behavior of the human brain using neuron nodes. ANNs are made up of thousands of processing neurons with input and output modules that self-learn and compute data to offer the best results. The hardware realization of the massive neuron system is a difficult task. The research article emphasizes the design and realization of multiple input perceptron chips in Xilinx integrated system environment (ISE) 14.7 software. The proposed single-layer ANN architecture is scalable and accepts variable 64 inputs. The design is distributed in eight parallel blocks of ANN in which one block consists of eight neurons. The performance of the chip is analyzed based on the hardware utilization, memory, combinational delay, and different processing elements with targeted hardware Virtex-5 field-programmable gate array (FPGA). The chip simulation is performed in Modelsim 10.0 software. Artificial intelligence has a wide range of applications, and cutting-edge computing technology has a vast market. Hardware processors that are fast, affordable, and suited for ANN applications and accelerators are being developed by the industries. The novelty of the work is that it provides a parallel and scalable design platform on FPGA for fast switching, which is the current need in the forthcoming neuromorphic hardware.
人工神经网络(ANN)是一种计算系统,旨在使用神经元节点复制和处理人类大脑的行为。人工神经网络由数千个处理神经元组成,这些神经元带有输入和输出模块,能够自我学习并计算数据以提供最佳结果。大规模神经元系统的硬件实现是一项艰巨的任务。这篇研究文章重点介绍了在赛灵思集成系统环境(ISE)14.7软件中多输入感知器芯片的设计与实现。所提出的单层人工神经网络架构具有可扩展性,可接受64个可变输入。该设计分布在人工神经网络的八个并行模块中,其中一个模块由八个神经元组成。基于硬件利用率、内存、组合延迟以及针对目标硬件Virtex-5现场可编程门阵列(FPGA)的不同处理元件,对芯片性能进行了分析。芯片仿真在Modelsim 10.0软件中进行。人工智能有着广泛的应用,前沿计算技术拥有广阔的市场。各行业正在开发快速、经济且适用于人工神经网络应用和加速器的硬件处理器。这项工作的新颖之处在于它在FPGA上提供了一个用于快速切换的并行且可扩展的设计平台,这是即将到来的神经形态硬件的当前需求。