A method for wireless communication interference signal identification based on extreme learning machine

Xiaozheng Liu, Yue Wang, Xiaofei Wang, Jian Geng
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Abstract

Intelligent anti-jam communication is a new generation of anti-interference technology combined with artificial intelligence, and the identification of interference signals is the basis of the technology. It is required to achieve better identification results with lower computational complexity in engineering applications. However, previous research has shown that they cannot balance these two sides. Here, we report an interference signal identification algorithm based on Extreme Learning Machine (ELM). Five typical oppressive interference signals were recognized based on ELM which is based on feature extraction. The overall correct identification rate is more than 96% under the condition of 40 neurons in a single hidden layer, and it has certain generalization ability. This study objectively promotes the engineering application of this technology.
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一种基于极限学习机的无线通信干扰信号识别方法
智能抗干扰通信是与人工智能相结合的新一代抗干扰技术,干扰信号的识别是该技术的基础。在工程应用中,需要以较低的计算复杂度获得较好的识别结果。然而,先前的研究表明,他们无法平衡这两方面。本文报道了一种基于极限学习机(ELM)的干扰信号识别算法。基于特征提取的ELM识别了5种典型的压迫性干扰信号。在单个隐藏层有40个神经元的情况下,总体识别率达到96%以上,具有一定的泛化能力。本研究在客观上促进了该技术的工程应用。
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