Multi-drosophila swarm cooperative optimization wavelet norm blind equalization method
A collaborative optimization and blind equalization technology, applied in the field of signal processing, can solve problems such as reduced convergence speed and slow convergence speed
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[0043] Below in conjunction with accompanying drawing, technical scheme of the present invention is described in further detail:
[0044] like figure 1 As shown, the principle of a multi-fruit fly swarm collaborative optimization wavelet norm blind equalization method, MFOA (Multi-fruitFliesOptimization Algorithm) is a multi-fruit fly swarm collaborative optimization method. The MFOA part is removed in the figure, and the rest is the 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] like 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) is ...
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[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.
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