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Identification of Jamming Factors in Electronic Information System Based on Deep Learning

机译:基于深度学习的电子信息系统中断因素的识别

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Jamming identification is the precondition of taking targeted anti-jamming measures, and it is very important to improve the adaptability of electronic information system to electromagnetic environment. The traditional recognition method of jamming is based on the feature extraction based on expert knowledge, but due to the jamming pattern diversity and different parameter, in practice it is difficult to determine the appropriate feature set. Therefore, this paper introduces a deep learning approach, which automatically extracts features from the original data to identify the jamming factors of electronic information system. In order to demonstrate the effectiveness and practicability of this approach, the noise jamming factor identification of the superheterodyne receiver is introduced.
机译:干扰识别是采取有针对性的抗干扰措施的前提,提高电子信息系统对电磁环境的适应性非常重要。传统的干扰识别方法基于基于专业知识的特征提取,而是由于干扰模式多样性和不同参数,实际上难以确定适当的特征集。因此,本文介绍了一种深度学习方法,它自动提取来自原始数据的特征以识别电子信息系统的干扰因子。为了证明这种方法的有效性和实用性,引入了超差异因子接收器的噪声干扰因子识别。

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