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Improved Morphological Filter Based on Variational Mode Decomposition for MEMS Gyroscope De-Noising

机译:基于变分分解的改进形态学滤波器用于MEMS陀螺降噪

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摘要

An adaptive multi-scale method based on the combination generalized morphological filter (CGMF) is presented for de-noising of the output signal from a MEMS gyroscope. A variational mode decomposition is employed to decompose the original signal into multi-scale modes. After choosing a length selection for the structure element (SE), the adaptive multi-scale CGMF method reduces the noise corresponding to the different modes, after which a reconstruction of the de-noised signal is obtained. From an analysis of the effect of de-noising, the main advantages of the present method are that it: (i) effectively overcomes deficiencies arising from data deviation compared with conventional morphological filters (MFs); (ii) effectively targets the different components of noise and provides efficacy in de-noising, not only primarily eliminating noise but also smoothing the waveform; and (iii) solves the problem of SE-length selection for a MF and produces feasible formulae of indicators such as the power spectral entropy and root mean square error for mode evaluations. Compared with the other current signal processing methods, the method proposed owns a simpler construction with a reasonable complexity, and it can offer better noise suppression effect. Experiments demonstrate the applicability and feasibility of the de-noising algorithm.
机译:提出了一种基于组合广义形态滤波器(CGMF)的自适应多尺度方法,用于对来自MEMS陀螺仪的输出信号进行去噪。采用变分模式分解将原始信号分解为多尺度模式。在选择了结构元素(SE)的长度选择之后,自适应多尺度CGMF方法降低了与不同模式相对应的噪声,此后获得了去噪信号的重建。通过对降噪效果的分析,本方法的主要优点是:(i)与常规形态滤波器(MF)相比,有效地克服了由数据偏差引起的缺陷; (ii)有效地针对噪声的不同成分,并提供降噪功效,不仅主要消除噪声,而且使波形平滑; (iii)解决了MF的SE长度选择问题,并产生了可行的指标公式,例如功率谱熵和均方根误差,用于模式评估。与现有的其他信号处理方法相比,该方法结构简单,合理,具有较好的噪声抑制效果。实验证明了该去噪算法的适用性和可行性。

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