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首页> 外文期刊>Measurement Science & Technology >Sparsity enhancement post-nonlinear blind deconvolution method and its application to aluminum honeycomb panel cabin structure
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Sparsity enhancement post-nonlinear blind deconvolution method and its application to aluminum honeycomb panel cabin structure

机译:稀疏性增强后非线性盲卷积法及其在铝蜂窝面板舱结构中的应用

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摘要

In this paper, we propose a method for post-nonlinear blind source separation. The method divides the separation process of post-nonlinear mixed signals into two independent stages: the nonlinear compensation stage and the linear blind source separation stage. The nonlinear compensation stage is achieved by taking sparsity enhancement as the optimization objective. The L1-norm is taken as the objective function and is combined with the fast iteration based on the gradient descent method to realize the fast nonlinear compensation of the mixed signals. In the stage of linear blind source separation, the blind deconvolution algorithm with reference signals is used to process the compensated signals to realize the separation of the source signals. The separation performance of the method is verified by simulation, and the superiority of the method is tested by comparison. The proposed method is also investigated by the excitation experiment of the aluminum honeycomb panel cabin structure, which simulates the satellite structure.
机译:在本文中,我们提出了一种用于非线性盲源分离的方法。该方法将非线性混合信号的分离过程分成两个独立阶段:非线性补偿阶段和线性盲源分离阶段。非线性补偿阶段通过以稀疏性提升为优化目标来实现。将L1-NAR作为目标函数,基于梯度下降方法与快速迭代组合,以实现混合信号的快速非线性补偿。在线性盲源分离的阶段,使用参考信号的盲解卷积算法来处理补偿信号以实现源信号的分离。通过模拟验证该方法的分离性能,并通过比较测试该方法的优越性。通过模拟卫星结构的铝蜂窝面板舱结构的激发实验还研究了所提出的方法。

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