Mesh-block-free sparse angle estimation method based on array element mutual coupling optimization

An angle estimation and block sparse technology, applied in computing, computer components, complex mathematical operations, etc., can solve the problems of discrete grid mismatch, decrease in angle estimation accuracy, large correlation of sparse dictionary elements, etc. The effect of reducing grid error and improving the accuracy of angle estimation

Pending Publication Date: 2022-03-25
CHINA SHIP DEV & DESIGN CENT
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Problems solved by technology

However, when the array system has unknown array element mutual coupling interference, the sparse representation dictionary built on the basis of the array flow pattern will not be able to effectively represent the angular distribution of the spatial target, so the angle estimation performance under sparse reconstruction will deteriorate
On the other hand, the discrete grid mismatch problem is one of the inherent problems of sparse reconstruction algorithms
The premise of achieving angle estimation under effective sparse reconstruction is that the real target angle is contained on the pre-divided spatial discrete grid points, and the densely divided discrete dictionary grid helps to improve the accuracy of sparse representation, but too dense grid Points will lead to excessive correlation between sparse dictionary elements, which is not conducive to accurate sparse reconstruction, but also leads to higher dimensionality of sparse reconstruction and increased complexity of algorithm solution
In addition, the observation space where the target angle is located is continuous, and no matter how dense the discrete grid dictionary is, it cannot ensure that the real angle falls on the pre-divided grid points, causing discrete grid mismatch problems and off-grid errors. leading to a decrease in the accuracy of angle estimation

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  • Mesh-block-free sparse angle estimation method based on array element mutual coupling optimization
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  • Mesh-block-free sparse angle estimation method based on array element mutual coupling optimization

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[0099] Below in conjunction with accompanying drawing, method provided by the present invention is described in more detail:

[0100] The invention is a grid-free angle estimation method based on block sparseness on a uniform linear array under the presence of mutual coupling interference of unknown array elements. Aiming at the sparse array reconstruction problem under the existence of unknown array element mutual coupling interference, the invention proposes a gridless angle estimation method based on block sparseness. In this method, the embedding operation of the mutual coupling coefficients is realized by performing necessary parametric transformation on the target-oriented vector under the mutual coupling of the array elements, and then a block sparse representation without the influence of the mutual coupling of the array elements is realized. Afterwards, an equivalent positive semi-definite sparse reconstruction model with kernel-norm minimization is given, and a mesh-...

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Abstract

The invention provides a meshless block sparse angle estimation method based on array element mutual coupling optimization, which is characterized by comprising the following steps of: 1, establishing an array receiving signal model under unknown array element mutual coupling interference; 2, constructing a block sparse representation model under unknown array element mutual coupling interference; step 3, establishing a sparse reconstruction model based on hybrid kernel-l1 norm minimization under block sparsity; 4, deducing an equivalent convex optimization reconstruction structure based on positive semidefinite; step 5, deriving a meshless Lagrange dual solution form; and step 6, solving by using a convex optimization algorithm to realize high-precision angle estimation. According to the method, the discrete grid error is effectively suppressed without calibrating the mutual coupling coefficient by using the non-grid block sparse reconstruction method, and the angle estimation precision under the unknown array element mutual coupling condition is improved.

Description

technical field [0001] The invention relates to the technical field of array signal processing, and specifically designs a gridless block sparse angle estimation method based on mutual coupling optimization of array elements. Background technique [0002] Array signal processing uses multiple antenna elements to realize multi-point parallel sampling processing of the spatial signal field, and obtains additional degrees of freedom in space by virtue of the spatial characteristics of the array. Different from general signal processing methods, array signal processing can effectively use the degree of freedom in space for flexible beam steering, and obtain higher signal gain and stronger signal anti-interference ability. After years of development, array signal processing technology has been successfully applied in fields such as astronomical observation, radar, sonar, communication system and biomedicine. Target angle and direction estimation is one of the important tasks in ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62G06F17/16G06F17/18
CPCG06F17/16G06F17/18G06F2218/00G06F18/2136G06F18/28
Inventor 刘萍魏震宇李艳龙汪雅婷刘士忠
Owner CHINA SHIP DEV & DESIGN CENT
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