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A Novel Blind Signal Detector Based on the Entropy of the Power Spectrum Subband Energy Ratio
by
Hu, Yanzhu
, Li, Han
, Wang, Song
in
Earthquakes
/ Energy
/ Entropy
/ False alarms
/ interval entropy
/ Mathematical analysis
/ Methods
/ multinomial distribution
/ Noise
/ power spectrum subband energy ratio
/ Probability distribution
/ PSER entropy
/ Random variables
/ sample entropy
/ sample entropy variance
/ Sensors
/ Signal detection
/ Signal detectors
/ Statistical analysis
/ Variance
2021
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A Novel Blind Signal Detector Based on the Entropy of the Power Spectrum Subband Energy Ratio
by
Hu, Yanzhu
, Li, Han
, Wang, Song
in
Earthquakes
/ Energy
/ Entropy
/ False alarms
/ interval entropy
/ Mathematical analysis
/ Methods
/ multinomial distribution
/ Noise
/ power spectrum subband energy ratio
/ Probability distribution
/ PSER entropy
/ Random variables
/ sample entropy
/ sample entropy variance
/ Sensors
/ Signal detection
/ Signal detectors
/ Statistical analysis
/ Variance
2021
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Do you wish to request the book?
A Novel Blind Signal Detector Based on the Entropy of the Power Spectrum Subband Energy Ratio
by
Hu, Yanzhu
, Li, Han
, Wang, Song
in
Earthquakes
/ Energy
/ Entropy
/ False alarms
/ interval entropy
/ Mathematical analysis
/ Methods
/ multinomial distribution
/ Noise
/ power spectrum subband energy ratio
/ Probability distribution
/ PSER entropy
/ Random variables
/ sample entropy
/ sample entropy variance
/ Sensors
/ Signal detection
/ Signal detectors
/ Statistical analysis
/ Variance
2021
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A Novel Blind Signal Detector Based on the Entropy of the Power Spectrum Subband Energy Ratio
Journal Article
A Novel Blind Signal Detector Based on the Entropy of the Power Spectrum Subband Energy Ratio
2021
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Overview
In this paper, we present a novel blind signal detector based on the entropy of the power spectrum subband energy ratio (PSER), the detection performance of which is significantly better than that of the classical energy detector. This detector is a full power spectrum detection method, and does not require the noise variance or prior information about the signal to be detected. According to the analysis of the statistical characteristics of the power spectrum subband energy ratio, this paper proposes concepts such as interval probability, interval entropy, sample entropy, joint interval entropy, PSER entropy, and sample entropy variance. Based on the multinomial distribution, in this paper the formulas for calculating the PSER entropy and the variance of sample entropy in the case of pure noise are derived. Based on the mixture multinomial distribution, the formulas for calculating the PSER entropy and the variance of sample entropy in the case of the signals mixed with noise are also derived. Under the constant false alarm strategy, the detector based on the entropy of the power spectrum subband energy ratio is derived. The experimental results for the primary signal detection are consistent with the theoretical calculation results, which proves that the detection method is correct.
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