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Temperature Compensation for MEMS Accelerometer Based on a Fusion Algorithm.

Yangyanhao GuoZihan ZhangLongkang ChangJingfeng YuYanchao RenKai ChenHuiliang CaoHuiKai Xie
Published in: Micromachines (2024)
This study proposes a fusion algorithm based on forward linear prediction (FLP) and particle swarm optimization-back propagation (PSO-BP) to compensate for the temperature drift. Firstly, the accelerometer signal is broken down into several intrinsic mode functions (IMFs) using variational modal decomposition (VMD); then, according to the FE algorithm, the IMF signal is separated into mixed components, temperature drift, and pure noise. After that, the mixed noise is denoised by FLP, and PSO-BP is employed to create a model for temperature adjustment. Finally, the processed mixed noise and the processed IMFs are rebuilt to obtain the enhanced output signal. To confirm that the suggested strategy works, temperature experiments are conducted. After the output signal is processed by the VMD-FE-FLP-PSO-BP algorithm, the acceleration random walk has been improved by 23%, the zero deviation has been enhanced by 24%, and the temperature coefficient has been enhanced by 92%, compared with the original signal.
Keyphrases
  • machine learning
  • deep learning
  • air pollution
  • physical activity
  • neural network
  • magnetic resonance imaging