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Multi- drosophila-group collaborative optimization wavelet norm blind equalization method

A collaborative optimization and blind equalization technology, applied in the field of signal processing, which can solve the problems of slow convergence and reduced convergence speed.

Inactive Publication Date: 2014-08-06
NANJING UNIV OF INFORMATION SCI & TECH
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

However, this method also has some shortcomings in practical applications: (1) the convergence speed is slow when optimizing in large-scale search areas or changing flat search areas; (2) when searching complex spaces, the initial search convergence speed is fast, and the search The late convergence speed is greatly reduced; (3) In the search process of high-dimensional large-scale complex spaces, it is easy to fall into "premature" local extreme points

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specific Embodiment approach

[0043] Below in conjunction with accompanying drawing, technical scheme of the present invention is described in further detail:

[0044] Such as figure 1 As shown, the principle of a multi-fruit fly swarm collaborative optimization wavelet norm blind equalization method, MFOA (Multi-fruit FliesOptimization Algorithm) is a multi-fruit fly swarm collaborative optimization method. The MFOA part is removed in the figure, and the rest is wavelet norm blind equalization Method WTCMA. The invention firstly provides the single fruit fly swarm optimization method SFOA and analyzes its performance; secondly, introduces co-evolution into SFOA, and proposes a multi-drosophila swarm cooperative optimization method MFOA; thirdly, uses MFOA to optimize the wave norm blind equalization method WTCMA.

[0045] Wavelet Norm Blind Equalization Method WTCMA

[0046] Such as figure 1 As shown, a(k) is the transmitted signal, h(k) is the channel impulse response, n(k) is the channel noise, y(k) ...

Embodiment

[0100] In order to test the performance of the method MFOA-WTCMA of the present invention, the minimum mean square error curve (MSE) is used as the performance index, and the simulation experiment is carried out with WTCMA and SFOA-WTCMA as comparison objects.

[0101] The transmitted signal is 16QAM, the equalizer weight length is 16, the signal-to-noise ratio is 25dB, and the minimum phase underwater acoustic channel h=[0.9656,-0.0906,0.0578,0.2368] is used; the fruit fly population is 2, and the fruit fly population size is 100. Drosophila initialization position [-0.1,0.1], Drosophila population iteration step value [-0.05,0.05], the maximum evolutionary generation is 200; the step size of SFOA-WTCMA μSFOA-WTCMA =0.0035, step size of MFOA-WTCMA μMFOA-WTCMA =0.0035; use DB2 wavelet to decompose, the number of decomposition layers is 2; the initial power is set to 8, the forgetting factor β=0.99, 600 Monte Carlo simulations, the results are as follows figure 2 shown.

[0...

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Abstract

The invention discloses a multi-drosophila-group collaborative optimization wavelet norm blind equalization method. According to the method, coevolution is introduced into a drosophila optimization method to provide a multi-drosophila-group collaborative optimization method, and the multi-drosophila-group collaborative optimization wavelet norm blind equalization method MFOA-WTCMA is invented; the initial weight vector optimization problem of the wavelet norm blind equalization method WTCMA is converted into the problem of using multiple drosophila groups for collaboratively searching for the lowest food taste concentration, and the drosophila group finding the lowest food taste concentration is the optimal drosophila group; the current position vector of the drosophila group is taken as the initial optimal weight vector of the WTCMA. Simulation results show that compared with the WTCMA and a single-drosophila-group optimization wavelet norm blind equalization method SFOA-WTCMA, the MFOA-WTCMA is highest in convergence rate, smallest in error of mean square and optimal in global performance and has high practical value in the field of communication technologies.

Description

technical field [0001] The invention relates to the technical field of signal processing, in particular to a multi-drosophila swarm cooperative optimization wavelet norm blind equalization method. Background technique [0002] The bandwidth of wireless communication channels is limited, and the communication environment is complex and changeable, which will cause signal distortion and intersymbol interference, which will seriously affect the quality of communication. In order to overcome the impact of complex channels on communication quality, it is more effective to use adaptive equalization technology to compensate channel characteristics at the receiving end to eliminate intersymbol interference. However, the traditional adaptive equalization technology needs to continuously send periodic training sequences, which greatly occupies the already limited bandwidth resources, making it difficult to improve bandwidth utilization. Compared with the traditional adaptive equaliza...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H04L25/03
Inventor 郭业才吴珊黄友锐
Owner NANJING UNIV OF INFORMATION SCI & TECH
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