Perceptron Algorithm and Its Verilog Design

Kainan Wang, Yingxuan Zhu, C.-Z. Chen
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引用次数: 3

Abstract

In artificial neural network (ANN), the basic perceptron algorithm plays a significant role in supervised machine learning due to its simple structure. Though it cannot solve some non-linear problems like XOR, however, this feature offers a possibility to build perceptron on a hardware design. Due to high efficiency and defect tolerant, researchers have proposed some ANN accelerators with complicated memory units and specific registers. In this work, we focus on a simplest perceptron and accomplish its hardware design using Verilog HDL. The design module includes one core for learning and four memory units for storing the training data. The study shows that the proximate floating -point simulation of the simple perceptron design can replace the defect-tolerant registers and the simple memory units, thus to make the accelerator a tiny scale, it also demonstrates that the accuracy rate on test set achieved at 98% and the total area cost is only 0.0078 mm2.
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感知机算法及其Verilog设计
在人工神经网络(ANN)中,基本感知器算法由于结构简单,在监督机器学习中起着重要的作用。虽然它不能解决像异或这样的非线性问题,但是这个特性提供了在硬件设计上构建感知器的可能性。由于效率高、容错性好,研究人员提出了一些具有复杂存储单元和特定寄存器的人工神经网络加速器。在这项工作中,我们重点研究了一个最简单的感知器,并使用Verilog HDL完成了其硬件设计。设计模块包括一个用于学习的核心和四个用于存储训练数据的存储单元。研究表明,简单感知器设计的近似浮点模拟可以取代容错寄存器和简单的存储单元,从而使加速器达到微小的规模,并且在测试集上的准确率达到98%,总面积成本仅为0.0078 mm2。
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