Challenges in implementation of ANN in embedded system

Subhrajit Mitra, P. Chattopadhyay
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引用次数: 9

Abstract

Artificial Neural Networks (ANN) provides a simple and efficient method to implement highly non-linear complex systems due to its “Universal Function Approximation” capabilities. However lack of a simple hardware design that is capable of adopting any changes in operating environment of the system limits the applicability of ANN in automotive and industrial environment. The most challenging task for implementation of ANN in embedded plat-form is realization of non-linear sigmoidal activation function. This paper aims to address various hardware implementation issues of ANN in terms of speed, accuracy and resource utilization. Inverse Definite Minimum Time (IDMT) characteristic has been realized and verified using XILINX Spartan-3AN FPGA with very simple ANN model. Sigmoid activation function played a very crucial role in designing and implementation of ANN. Among various techniques piece wise linear approximation (PLAN) has found to be the most optimized and hardware friendly methods for implementing of sigmoid function on reconfigurable FPGA platform.
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人工神经网络在嵌入式系统中实现的挑战
人工神经网络(ANN)由于其“通用函数逼近”的能力,为实现高度非线性复杂系统提供了一种简单有效的方法。然而,由于缺乏能够适应系统运行环境变化的简单硬件设计,限制了人工神经网络在汽车和工业环境中的适用性。在嵌入式平台上实现人工神经网络最具挑战性的任务是非线性s型激活函数的实现。本文旨在解决人工神经网络在速度、准确性和资源利用率方面的各种硬件实现问题。利用XILINX Spartan-3AN FPGA实现了逆定最小时间(IDMT)特性,并对其进行了验证。Sigmoid激活函数在人工神经网络的设计和实现中起着至关重要的作用。在各种技术中,分段线性逼近(PLAN)已被发现是在可重构FPGA平台上实现sigmoid函数的最优化和硬件友好的方法。
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