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A Kernel-Based Nonlinear Blind Source Separation Algorithm with Reference and Its Application in Satellite Micro-vibration System

机译:基于内核的非线性盲源分离算法及其在卫星微振动系统中的应用

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This paper, a kernel-based nonlinear blind source separation algorithm with reference information is proposed to identify the harmonic source signals in satellite micro-vibration system. The kernel feature space with reduced dimension constructed by the proposed algorithm can transform the nonlinear blind source separation in the input space into linear blind source separation. In the linear blind source separation phase, aiming at the weak non-Gaussian characteristic of micro-vibration harmonic sources, a new linear blind source separation objective function with reference information is proposed to ensure the accuracy of source identification. The effective estimated signals of the sources are selected from the linear separated signals according to the spectrum correlation coefficient index. The effectiveness of the proposed algorithm is verified by the satellite cabin structure experiment.
机译:本文提出了一种基于内核的非线性盲源分离算法,其参考信息识别卫星微振动系统中的谐波源信号。 由所提出的算法构建的减少维度的内核特征空间可以将输入空间中的非线性盲源分离转换为线性盲源分离。 在线性盲源分离阶段,针对微振动谐波源的弱非高斯特征,提出了一种新的线性盲源分离目标函数,其具有参考信息,以确保源识别的准确性。 根据频谱相关系数指数,从线性分离信号中选择源的有效估计信号。 卫星舱结构实验验证了所提出的算法的有效性。

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