Abstract

As the noise power increases, the target signal features become less obvious, which leads to the failure of weak signal detection methods. To address this problem, a quantum weak signal detection method, Local Semi-Classical Signal Analysis-Singular Value Decomposition (LSCSA-SVD), for strengthening target signal features under strong white Gaussian noise is proposed. Firstly, the time domain weak signal is quantized by the Schrodinger operator and its discrete spectrum formula. Then, in the quantum domain, the later eigenvalues are used to reconstruct the time domain signal, which can protect and enhance the target signal features. Finally, the difference between signal and noise in the singular value vector is used to further extract the reconstruction signal features. In simulation, the LSCSA-SVD can accurately extract target signals from white Gaussian noise signals with a signal-to-noise ratio (SNR) of −30 dB, which is better than the comparison methods. In the experiment, the weak acceleration sensor signal and the weak signal of the test circuit are successfully extracted. The results show that the LSCSA-SVD can suppress strong noise and improve the SNR.

Highlights

  • The weak target signal mainly exists in the later portion of the eigenvalue sequence

  • The weak target signal can be located in strong noise only by using a detailed region reconstruction signal

  • In the singular value vector, the singular values representing the weak target signal and the strong noise signal components can be separated as separate coordinates

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Summary

Introduction

A weak signal is a signal in which the amplitude of the target signal is smaller than that of the noise. The key to weak signal detection (WSD) is to protect the target signal while eliminating the noise. Researchers have proposed many methods for weak signal detection, such as the following: multiple autocorrelation algorithm [18,19], Singular. QSP has many possibilities in the field of weak signal detection Aiming at these abovementioned problems, a quantum weak signal detection method, Local Semi-Classical Signal Analysis- Singular Value Decomposition (LSCSA-SVD), is proposed for the protection and enhancement of target signal features and the possibility. A quantum weak signal detection algorithm, the LSCSA-SVD, has been proposed in this paper. The rest of this paper is organized as follows: In Section 2, the theory of the QSP, the LSCSA, and the singular value characteristics of weak signals will be introduced.

Quantum Signal Processing and LSCSA
Quantum Domain Characteristics of Weak Signal
Singular Value Characteristics of Weak Signal
LSCSA-SVD
Simulation
The Weak Signal of Acceleration Sensor
The Weak Signal of Test Circuit
Conclusions
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