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Bind Intra-pulse Modulation Recognition based on Machine Learning in Radar Signal Processing

机译:基于雷达信号处理中的机器学习绑定脉冲内调制识别

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Intra-pulse modulation recognition is one of the radar reconnaissance key technologies; it is especially a hot point of recent researching under low SNR. This thesis propounds a novel way for radar intra-pulse modulation characteristic recognition based on machine learning means of extreme learning machine (ELM), which is widely applied in the region of pattern recognition. As a novel learning framework, the ELM attracts increasing draws in the regions of large-scale computing, high-velocity signal processing, and artificial intelligence. The aim of the ELM is to break the barriers down between the biological learning mechanism and conventional artificial learning techniques and represent a suite of machine learning methods in which hidden neurons need not to be tuned. This algorithm has a trend to provide perfect generalization performance at staggering learning rate. This article focuses on the high frequency (HF) channel environment and Wavelet transform algorithm with the lower computational complexity. The simulation results imply that the ELM could reap a perfectly satisfactory acceptance performance and therefore supplies a substantial ground structure for dealing with intra-pulse modulation challenges in inadequate channel conditions.
机译:脉冲内调制识别是雷达侦察关键技术之一;尤其是在低SNR下近期研究的热点。本文基于极端学习机(ELM)的机器学习装置,提出了一种基于极端学习机(ELM)的机器学习装置的雷达内脉冲调制特征识别的新方法,这在图案识别区域中广泛应用。作为一种新颖的学习框架,ELM吸引了大规模计算,高速信号处理和人工智能区域的增加的吸引。 ELM的目的是在生物学学习机制和传统的人工学习技术之间打破障碍物,并且代表一套机器学习方法,其中隐藏神经元不需要调整。该算法具有在惊人的学习率下提供完美的泛化性能的趋势。本文侧重于计算复杂性较低的高频(HF)通道环境和小波变换算法。仿真结果暗示榆树可以获得完全令人满意的验收性能,因此提供了一种实质的地面结构,可在通道条件不足的情况下处理脉冲内调制挑战。

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