Spectrum sensing method based on unsupervised machine learning classification algorithm

The invention relates to a spectrum sensing method based on an unsupervised machine learning classification algorithm, and belongs to the technical field of wireless communication. According to the method, a geographic area in a target network is divided into Q grids in the same size, and the whole...

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Hauptverfasser: WANG XIN, SHEN BIN, YAN TINGQIU
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creator WANG XIN
SHEN BIN
YAN TINGQIU
description The invention relates to a spectrum sensing method based on an unsupervised machine learning classification algorithm, and belongs to the technical field of wireless communication. According to the method, a geographic area in a target network is divided into Q grids in the same size, and the whole scheme implementation process is divided into four stages. In the first stage, a PUT transmission mode classifier TM1-Classifier is obtained; in the second stage, a grid label classifier TM2-Classifier is obtained; the third stage is to obtain a PUT transmission mode label at the current m moment; and the fourth stage is to obtain an LFB access indication label corresponding to the grid. The invention is based on a convolutional neural network in machine learning and a spectrum sensing scheme ofa threshold detection algorithm; under the condition that the PUT position is unknown, space-time idle spectrum resources are flexibly allocated, the opportunity of accessing the LFB is increased, and therefore the spectrum
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC COMMUNICATION TECHNIQUE
ELECTRICITY
HANDLING RECORD CARRIERS
PHYSICS
PRESENTATION OF DATA
RECOGNITION OF DATA
RECORD CARRIERS
TRANSMISSION
title Spectrum sensing method based on unsupervised machine learning classification algorithm
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