Modulation identification method based on interference cleaning and two-stage training of convolutional neural network model

A convolutional neural network and modulation recognition technology, applied in the field of modulation recognition based on interference cleaning and two-stage training convolutional neural network model, can solve problems such as poor universality, multipath fading in frequency bands, and crosstalk in wireless private networks

Active Publication Date: 2019-09-10
ANHUI JIYUAN SOFTWARE CO LTD +4
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Problems solved by technology

[0004] First, there are channel defects such as multipath fading, frequency drift and phase noise in the frequency band, and the radio signal leakage of adjacent channels will cause crosstalk to the wireless private network;
[0005] Second, the lack of communication and negotiation between the wireless communication industry, coupled with the random and disorderly occupation of various illegal stations, will inevitably cause potential interference hazards to the reliable operation of the wireless private network. It is necessary to explore effective methods to accurately identify the types of interference and Interference traceability, and then take corresponding countermeasures
However, the above feature learning method can only achieve better recognition accuracy under specific conditions, and feature selection requires the design of feature engineering, which relies heavily on experience accumulation, resulting in poor universality and unstable results.

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  • Modulation identification method based on interference cleaning and two-stage training of convolutional neural network model
  • Modulation identification method based on interference cleaning and two-stage training of convolutional neural network model
  • Modulation identification method based on interference cleaning and two-stage training of convolutional neural network model

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Embodiment Construction

[0083] The specific implementation manner and working principle of the present invention will be further described in detail below in conjunction with the accompanying drawings.

[0084] From figure 1 It can be seen from the structural block diagram of the modulation recognition system that a modulation recognition method based on interference cleaning and two-stage training convolutional neural network model includes a modulation recognition system, which includes a sequentially connected received signal preprocessing unit and a convolutional neural network. A network training unit, the received signal preprocessing unit is provided with a first preprocessing module RM1 and a second preprocessing module RM2 connected in sequence, and a radio signal receiving terminal is connected to the data input end of the first preprocessing module RM1 device;

[0085] Wherein, the modulation identification method is carried out according to the following steps:

[0086] S1: Initializati...

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Abstract

The invention discloses a modulation identification method based on interference cleaning and two-stage training of a convolutional neural network model. The method comprises the following steps: firstly, generating an original periodic correlation characteristic digital spectrogram by utilizing an acquired modulation signal sample sequence; carrying out generalization singular value decompositionoperation, space division operation, noise elimination operation, crosstalk suppression operation and other processing on the convolutional neural network to obtain an original final period correlation characteristic digital spectrogram, and then carrying out two-stage training on the convolutional neural network to obtain a convolutional neural network model. The identification and classification of the modulation mode of the input modulation signal are realized. The method has the remarkable characteristics that the complexity is reduced while the modulation recognition and classification accuracy is improved; additional noise can be eliminated, crosstalk from adjacent channels can be suppressed, and the authenticity of training and identifying signal data is enhanced. The generalization capability of modulation identification is improved.

Description

technical field [0001] The invention relates to the technical field of wireless communication, in particular to a modulation recognition method based on interference cleaning and two-stage training of a convolutional neural network model. Background technique [0002] In my country's existing radio frequency band authorization rules, the 230MHz frequency band is a dynamic shared frequency band allocated to industries such as electric power and water conservancy. Among them, 223-226MHz and 229-233MHz are used for broadband wireless private networks, and 226-228 / 233-235MHz And 228-229MHz for narrowband wireless private network. Widely used modulation modes include BPSK, QPSK, 2FSK, 4FSK, MSK, AM, and FM. [0003] In the prior art, in order to save network construction costs and improve spectrum utilization, it is generally recommended to adopt a shared network construction mode. However, this model has the following drawbacks: [0004] First, there are channel defects such a...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H04L27/00H04L27/26G06K9/00G06K9/62
CPCH04L27/0012H04L27/263H04L27/2688G06F2218/04G06F2218/08G06F2218/12G06F18/24147G06F18/241
Inventor 吕玉祥赵永生郭雅娟吴庆朱道华汪玉成杨阳孙云晓王光发秦浩李温静刘智威
Owner ANHUI JIYUAN SOFTWARE CO LTD
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