Performance Evaluation of FPGA-Based LSTM Neural Networks for Pulse Signal Detection on Real-Time Radar Warning Receivers

Erdogan Berkay Tekincan, Tülin Erçelebİ Ayyildiz, Nizam Ayyildiz
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Abstract

Radar warning receivers are real-time systems used to detect emitted signals by the enemy targets. The conventional method of detecting the signal is to determine the noise floor and differentiate the signals above the noise floor by setting a threshold value. The common methodology for detecting signals in noisy environment is Constant False Alarm Rate (CFAR) detection. In CFAR methodology, threshold level is determined for a specified probability of false alarm. CFAR dictates the signal power to be detected is higher than the noise floor, i.e. signal-to-noise ratio (SNR) should be positive. To detect radar signals for negative SNR values machine learning techniques can be used. It is possible to detect radar signals for negative SNR values by Long Short-Term Memory (LSTM) Artificial Neural Network (ANN). In this study, we evaluated whether LSTM ANN can replace the CFAR algorithm for signal detection in real-time radar receiver systems. We implemented a Field Programmable Gate Array (FPGA) based LSTM ANN architecture, where pulse signal detection could be performed with 94% success rate at -5 dB SNR level. To the best of our knowledge our study is the first where LSTM ANN is implemented on FPGA for radar warning receiver signal detection.
基于fpga的LSTM神经网络在实时雷达告警接收机脉冲信号检测中的性能评价
雷达警告接收机是实时系统,用于探测敌方目标发射的信号。传统的信号检测方法是确定噪声本底,并通过设置阈值来区分噪声本底以上的信号。在噪声环境中检测信号的常用方法是恒虚警率(CFAR)检测。在CFAR方法中,阈值水平是根据特定的虚警概率确定的。CFAR指示要检测的信号功率高于本底噪声,即信噪比(SNR)应为正。为了检测雷达信号的负信噪比值,可以使用机器学习技术。利用长短期记忆(LSTM)人工神经网络(ANN)检测雷达信号的负信噪比是可能的。在本研究中,我们评估了LSTM ANN是否可以取代CFAR算法在实时雷达接收机系统中的信号检测。我们实现了一种基于现场可编程门阵列(FPGA)的LSTM神经网络架构,在-5 dB信噪比水平下,脉冲信号检测成功率为94%。据我们所知,我们的研究是第一个在FPGA上实现LSTM神经网络用于雷达告警接收机信号检测的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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