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Practical Guidelines for Approaching the Implementation of Neural Networks on FPGA for PAPR Reduction in Vehicular Networks

机译:减少车辆网络中PAPR的FPGA上神经网络实现方法的实用指南

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摘要

Nowadays, the sensor community has become wireless, increasing their potential and applications. In particular, these emerging technologies are promising for vehicles’ communications (V2V) to dramatically reduce the number of fatal roadway accidents by providing early warnings. The ECMA-368 wireless communication standard has been developed and used in wireless sensor networks and it is also proposed to be used in vehicular networks. It adopts Multiband Orthogonal Frequency Division Multiplexing (MB-OFDM) technology to transmit data. However, the large power envelope fluctuation of OFDM signals limits the power efficiency of the High Power Amplifier (HPA) due to nonlinear distortion. This is especially important for mobile broadband wireless and sensors in vehicular networks. Many algorithms have been proposed for solving this drawback. However, complexity and implementations are usually an issue in real developments. In this paper, the implementation of a novel architecture based on multilayer perceptron artificial neural networks on a Field Programmable Gate Array (FPGA) chip is evaluated and some guidelines are drawn suitable for vehicular communications. The proposed implementation improves performance in terms of Peak to Average Power Ratio (PAPR) reduction, distortion and Bit Error Rate (BER) with much lower complexity. Two different chips have been used, namely, Xilinx and Altera and a comparison is also provided. As a conclusion, the proposed implementation allows a minimal consumption of the resources jointly with a higher maximum frequency, higher performance and lower complexity.
机译:如今,传感器社区已变得无线化,从而增加了其潜力和应用范围。特别是,这些新兴技术有望为车辆通信(V2V)提供预警,从而大大减少致命的道路交通事故。已经开发了ECMA-368无线通信标准,并将其用于无线传感器网络,并且还提议将其用于车辆网络。它采用多频带正交频分复用(MB-OFDM)技术来传输数据。但是,由于非线性失真,OFDM信号的大功率包络波动限制了高功率放大器(HPA)的功率效率。这对于车载网络中的移动宽带无线和传感器尤为重要。已经提出了许多算法来解决这个缺点。但是,复杂性和实现通常是实际开发中的问题。在本文中,评估了一种基于多层感知器人工神经网络的新型架构在现场可编程门阵列(FPGA)芯片上的实现,并提出了一些适用于车辆通信的指南。所提出的实施方式以降低的峰均功率比(PAPR),失真和误码率(BER)改善了性能。已经使用了两种不同的芯片,分别是Xilinx和Altera,并提供了比较。综上所述,所提出的实现方式允许资源的最小消耗以及更高的最大频率,更高的性能和更低的复杂度。

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