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Extracting feature signal from the gravity earth tide based on improved ICA

机译:基于改进ICA的重力潮中特征信号提取

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Independent Component Analysis (ICA) is the focal point in blind signal processing (BSP). It aims to separate the relatively independent signals from the mixed signal source. Gravity earth tide signal is a kind of complex mixed signal which is caused by the Moon and the Sun, which means that the ICA can be used to separate gravity earth tide signal. Because of the it is so sensitive to the initial values, that affects the separation effect and even result in in-convergence if the initial values are not chosen appropriately. In order to solve the problem proposed, a new method based on PBIL(Population Based Incremental Learning) to combine ICA is formed. The learning rate and the learning model in PBIL are used to optimize the separation matrix in ICA. The simulation results show that the new method effectively avoids the problems proposed. The new method separates gravity earth tide signal into three parts, which are long-period waves, diurnal wave, and semi diurnal wave. Every part represents the signal which is corresponding to the theory frequencies of the harmonic component in gravity earth tide signal.
机译:独立分量分析(ICA)是盲信号处理(BSP)的重点。其目的是从混合信号源中分离出相对独立的信号。重力地球潮汐信号是一种复杂的混合信号,是由月亮和太阳引起的,这意味着ICA可以用来分离重力地球潮汐信号。由于它对初始值非常敏感,如果不适当选择初始值,则会影响分离效果,甚至会导致收敛。为了解决所提出的问题,形成了一种基于PBIL(基于人口的增量学习)结合ICA的新方法。 PBIL中的学习率和学习模型被用来优化ICA中的分离矩阵。仿真结果表明,该新方法有效地避免了所提出的问题。该新方法将重力地球潮汐信号分为长周期波,昼夜波和半昼夜波三部分。每个部分代表与重力潮汐信号中谐波分量的理论频率相对应的信号。

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