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Efficient ensemble modeling method of FOG thermal-induced errors based on EEMD and extreme learning machine

机译:基于EEMD和极端学习机的雾热引起误差高效集合建模方法

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In order to compensate the drift of fiber optic gyroscope (FOG) under intense ambient temperature variation, a novel ensemble modeling method named MS-ELM based on improved ensemble empirical mode decomposition (EEMD) and extreme learning machine (ELM) is addressed in this paper. Firstly, the thermal-induced error is analyzed analytically. Then, a bounded EEMD is used to extract the features of FOG drift signal. Sample entropy (SE) and probability density function (pdf) are used to analyze the relativity between obtained modes and original signal. Degree of relativity is taken as the criteria of variables selection for ELM modeling. Finally, an ensemble model of FOG drift can be obtained by adding up all the submodels. Semi-physical experiment illustrates that MS-ELM outperforms the modeling methods based on OP-ELM or ELM.
机译:为了在强烈环境温度变化下补偿光纤陀螺仪(雾)的漂移,基于改进的集合经验模型分解(EEMD)和极限学习机(ELM)的新颖的集合建模方法是基于改进的集成经验分解(EEMD)和极限学习机(ELM) 。首先,分析地分析热诱导的误差。然后,使用有界EEMD来提取雾漂移信号的特征。样品熵(SE)和概率密度函数(PDF)用于分析所获得的模式和原始信号之间的相对性。相对性程度被视为ELM建模的变量选择的标准。最后,可以通过添加所有子模型来获得雾漂移的集合模型。半物理实验说明了MS-ELM优于基于OP-ELM或ELM的建模方法。

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