基于深度学习与软件无线电的盲解调系统研究

Research on Blind Demodulation System based on Deep Learning and Software Defined Radio

  • 摘要: 盲解调系统能够在未知调制方式的条件下完成信号解调,在认知无线电、电子对抗等领域具有重要的应用价值。现有的盲解调系统,大多调制方式识别精度低,容易产生解调错误,且受硬件平台限制,拓展性较差。本文设计并实现了一套基于深度学习和软件无线电的盲解调系统。该系统利用最新的深度学习算法替代传统的基于特征的算法,用于提高调制方式识别精度;同时,还采用软件无线电平台替代传统的硬件电路,便于系统功能的升级和扩充。测试结果表明,本文实现的系统达到了设计需求,在各种场景下均能正确解调信号,且能够对调制方式的改变及时作出反应。

     

    Abstract: Blind demodulation systems capable of demodulating signals without modulation information have significant application potentials in many fields such as cognitive radio and electronic warfare. Existing blind demodulation systems usually suffer from demodulation errors resulting from modulation identification errors and bad extensibility due to the limitation of hardware platform. This paper designs and realizes a blind demodulation system based on deep learning and software defined radio. The designed system uses the latest deep learning algorithm instead of traditional feature based algorithms to achieve better accuracy of modulation identification. Moreover, it adopts software defined radio platform instead of traditional circuits to facilitate the upgradation and extension of system functions. Test results show that, the system realized in this paper meets design requirements well, is able to demodulate signals correctly in various scenarios, and can respond to the change of modulation type in time.

     

/

返回文章
返回