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EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method

An extreme learning machine and temperature drift technology, applied in special data processing applications, instruments, electrical digital data processing, etc., can solve problems such as complex modeling process and limited ability to approach complex nonlinear

Active Publication Date: 2015-04-29
SOUTHEAST UNIV
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Problems solved by technology

Non-stationary modeling methods based on time series analysis, such as the autoregressive differential moving average (ARIMA) model, the modeling process is complex, and the ability to approximate complex nonlinearities is limited

Method used

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  • EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method
  • EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method
  • EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method

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Embodiment 1

[0038] This embodiment mainly includes the following steps:

[0039] Step 1: Use the BEEMD method to adaptively decompose the temperature drift data into a series of intrinsic mode functions (IMF), set the temperature drift data as x(t), and the order of noise assistance as M=m-1, add Gaussian white noise w j The degree of (t) is I, and the noise variance is where k is the current decomposed IMF order, which is initially 1, and j represents the count of noise-assisted realization, and the decomposition process is:

[0040] Initialize variable j=0,

[0041] add random white noise to which is h k j ( t ) = h k j ( t ) + β k E k ( w j ...

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Abstract

The invention discloses an EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method. The EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method comprise the following steps of (1) adopting a bounded ensemble empirical mode decomposition (EEMD) method to respectively decompose drifting output data of a fiber-optic gyroscope in different temperature-changing-rate environments into a series of intrinsic mode functions; (2) adopting a sample entropy (SE) measurement theory to calculate SE values of the intrinsic mode functions (IMF) in the step (1); (3) determining an IMF set led by noise and an IMF set having different self-similarity features according to the fluctuation trend and sizes of the SE values; (4) superposing the IMF sets determined in the step (3) and having the similar self-similarity features to serve as ELM model training inputs, using temperature gradients at the temperature change rates corresponding to the group of output data as another input training ELM model, similarly, using different superposed self-similarity IMF and corresponding temperature gradients to generate different ELM models through training; (5) accumulating the multiple ELM models generated in the step (4) to obtain a final integrated multi-scale model.

Description

technical field [0001] The invention relates to an EMD-based multi-scale extreme learning machine training method for fiber optic gyroscope temperature drift, which belongs to the field of modeling compensation of inertial devices, and can also be used for modeling other error signals with non-stationary characteristics. Background technique [0002] The interferometric fiber optic gyroscope (IFOG) is greatly affected by the ambient temperature, and its constantly changing temperature field inside the fiber ring leads to constant changes in the thermal expansion coefficient and refractive index of the fiber material, and these changes are anisotropic at different positions of the fiber ring , resulting in thermally induced non-reciprocal phase shift errors. It is very difficult to improve the accuracy of medium and high-precision fiber optic gyroscopes in terms of mechanism. In engineering, methods such as improving fiber winding technology, adding temperature control equipm...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/50
Inventor 陈熙源崔冰波宋锐何昆鹏方琳
Owner SOUTHEAST UNIV
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