Polynomial phase signal time-frequency transform method based on particle swarm optimization

A particle swarm optimization and phase signal technology, which is applied in the field of signal processing and can solve problems such as the practical operation and operation process of modern optimization algorithms that are not specified.

Active Publication Date: 2018-02-23
PLA PEOPLES LIBERATION ARMY OF CHINA STRATEGIC SUPPORT FORCE AEROSPACE ENG UNIV
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Problems solved by technology

[0018] However, the existing time-frequency analysis methods are still difficult to fully apply to polynomial phase signals whose phase modulation can be expressed as a finite term polynomial series
[0019] The patent "A Model-Driven Polynomial Phase Signal Adaptive Time-Frequency Transformation Method" proposes a feasible new idea and method for the above-mentioned practical problems, but does not specifically give the specific practicality of various modern optimization algorithms. Operation and Calculation Process

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  • Polynomial phase signal time-frequency transform method based on particle swarm optimization
  • Polynomial phase signal time-frequency transform method based on particle swarm optimization
  • Polynomial phase signal time-frequency transform method based on particle swarm optimization

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Embodiment Construction

[0077] The present invention will be described in detail below with reference to the accompanying drawings and examples.

[0078] The present invention first estimates the model order of each component of the polynomial phase signal and the corresponding phase parameters of each order through particle swarm optimization with a certain period and a certain scale, and then uses the idea of ​​"cleaning" to extract the corresponding polynomial phase signal components , and remove the signal component from the original signal to obtain the residual signal, and then use the iterative "cleaning" method to repeatedly use particle swarm optimization to implement adaptive model order determination and optimal model parameter optimization for the residual signal, and gradually extract the The steps are repeated for each signal component until the energy of the residual signal is lower than a preset threshold or the number of extracted signal components reaches a preset maximum value. The...

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Abstract

The invention provides a polynomial phase signal time-frequency transform method based on particle swarm optimization which is capable of performing time-frequency decomposition on polynomial phase signals; each signal component acquired from the decomposition is a single component corresponding to only one frequency point at any moment; the signal components and instantaneous frequency values ofall moments are subjected to direct calculation by reserving only main-lobe-responsive Sinc function so as to generate a signal frequency distribution of each corresponding moment; the defect is overcome that non-single components with one moment corresponding to multiple frequency points in traditional time-frequency transform have cross components; a time-frequency distribution with no cross-component interference and good time-frequency joint resolution is finally output. The polynomial phase signal time-frequency transform method based on particle swarm optimization has the advantages thatthe principle is simple, operating is convenient, the adverse influence of cross-component disturbances from the conventional time-frequency analysis methods and the loss of time-frequency joint resolution can be effectively overcome, and the quality and benefit of nonstationary polynomial phase signal time-frequency analysis can be effectively improved.

Description

technical field [0001] The invention belongs to the field of signal processing, in particular to a polynomial phase signal adaptive time-frequency transformation method based on particle swarm optimization. Background technique [0002] Many natural and artificial signals, such as speech, biomedical signals, waves propagating in dispersive media, mechanical vibrations, animal sounds, music, radar, sonar signals, etc., are typical non-stationary signals, which are characterized by continuous Time is limited, and the frequency is time-varying, non-stationary, nonlinear, non-uniform, non-structural, non-deterministic, non-integrable, non-reversible, amorphous, irregular, non-continuous, non-smooth, non-periodic, non-smooth symmetrical features. Joint time-frequency analysis (joint time-frequency analysis, referred to as time-frequency analysis) focuses on the time-varying characteristics of real signal components, and expresses a one-dimensional time signal in the form of a tw...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/14G06N3/00
CPCG06F17/141G06N3/006
Inventor 尹灿斌劳国超叶伟冉达
Owner PLA PEOPLES LIBERATION ARMY OF CHINA STRATEGIC SUPPORT FORCE AEROSPACE ENG UNIV
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