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Estimation method of source number and direction angle of arrival based on reciprocal correlation music algorithm in impulsive noise environment

A technology of impulse noise and incoming wave direction, which is used in radio wave direction/deviation determination systems, directional devices for determining directions, direction finders using radio waves, etc. It can solve high robustness, low frequency noise affecting accuracy, etc. question

Active Publication Date: 2020-11-27
BEIJING UNIV OF POSTS & TELECOMM
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Problems solved by technology

[0005] In order to solve the problem that the accuracy is affected by the low-frequency noise introduced by autocorrelation, the present invention proposes a method for estimating the number of sources and the direction angle of incoming waves based on the reciprocal correlation MUSIC algorithm in an impulsive noise environment. High accuracy, is a highly robust angle estimation algorithm

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  • Estimation method of source number and direction angle of arrival based on reciprocal correlation music algorithm in impulsive noise environment
  • Estimation method of source number and direction angle of arrival based on reciprocal correlation music algorithm in impulsive noise environment
  • Estimation method of source number and direction angle of arrival based on reciprocal correlation music algorithm in impulsive noise environment

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[0038] The present invention will be further described in detail with reference to the accompanying drawings and embodiments.

[0039] When the impulse noise is further improved and the generalized signal-to-noise ratio (GSNR) of the array received data is further reduced, the low-frequency noise introduced by autocorrelation will affect the accurate performance of DOA estimation. The present invention is based on cross-correlation theory and interleaving idea, interleaves array elements, and calculates the receiving array Multiple sets of inter-circulation correlation covariance matrices, through arithmetic fusion, multiple sets of inter-circulation correlation covariance matrices are fused into an inter-circulation correlation covariance matrix, which replaces the covariance matrix in the traditional MUSIC algorithm, and then performs singular value decomposition, and The reciprocal correlation covariance matrix is ​​decomposed into signal subspace and noise subspace, the pow...

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Abstract

The invention discloses a method for estimating signal source number and an incoming wave direction angle based on a cross-cyclic correlation MUSIC algorithm in an impulse noise environment, which belongs to the field of array signal processing. The method comprises the following steps: firstly, constructing a far-field narrow-band signal source model comprising M array elements and N far-field narrow-band signals, and calculating received data xm(t) at the time t of the m-th array element. Secondly, for the time t, calculating a cross-cyclic covariance matrix R(m,k) of two array elements by using the received data of the any two array elements; and summing and taking a mean value of MxM cross-cyclic correlation covariance matrices R(m,k), and obtaining a cross-cyclic correlation covariance matrix Rmutual. Finally, performing a singular value decomposition on the cross-cycle correlation covariance matrix Rmutual, and calculating its power spectral density P(theta): searching the localspectral peak of the power spectral density P(theta) and obtaining the estimated value of the incoming wave direction of the far-field narrow-band signal. The method for estimating signal source number and incoming wave direction angle based on cross-cyclic correlation MUSIC algorithm in impulse noise environment utilizes the cyclostationary characteristic of the signal, and the cross-correlationfurther removes a random noise and a clutter component on the basis of the auto-correlation, thereby improving the estimation performance of the incoming wave direction angle in the background of a strong impulse noise.

Description

technical field [0001] The invention belongs to the field of array signal processing, and specifically relates to a method for estimating the number of information sources and the direction angle of incoming waves based on a reciprocal correlation MUSIC (Multiple Signal Classification) algorithm in an impulsive noise environment. Background technique [0002] The direction of spatial spectrum estimation in the field of array signal processing can be divided into two categories from the processing methods of subspace decomposition algorithms. One is the noise subspace algorithm represented by the MUSIC algorithm, and the other is the rotation invariant subspace algorithm. Space (ESPRIT) is a representative signal subspace algorithm. Algorithms represented by the MUSIC algorithm include eigenvector method, MUSIC, root-finding MUSIC, and MNM (Minimum Norm, Minimum Norm), etc.; algorithms represented by ESPRIT mainly include TAM (Toeplitz Approximation, Toeplitz Approximation), ...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01S3/14
CPCG01S3/143
Inventor 黄赛冯志勇李潇阳张轶凡张奇勋宁帆
Owner BEIJING UNIV OF POSTS & TELECOMM
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