4.6 Article

Research on Decomposition of Offset in MEMS Capacitive Accelerometer

Journal

MICROMACHINES
Volume 12, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/mi12081000

Keywords

MEMS capacitive accelerometer; offset; decomposition; parameters

Funding

  1. National Key R&D Program of China [2020YFB2008900]

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A method for decomposing offset in a MEMS capacitive accelerometer was proposed in the study, which quantitatively analyzed the compositions of the offset and conducted experimental verification. The results indicated that by decomposing the offset, the major source could be identified, providing valuable insights for reducing offset and enhancing accelerometer performance.
In a MEMS capacitive accelerometer, there is an offset due to mechanical and electrical factors, and the offset would deteriorate the performance of the accelerometer. Reducing the offset from mechanism would benefit the improvement in performance. Yet, the compositions of the offset are complex and mix together, so it is difficult to decompose the offset to provide guidance for the reduction. In this work, a decomposition method of offset in a MEMS capacitive accelerometer was proposed. The compositions of the offset were first analyzed quantitatively, and methods of measuring key parameters were developed. Based on our proposed decomposition method, the experiment of offset decomposition with a closed-loop MEMS capacitive accelerometer was carried out. The results showed that the offset successfully decomposed, and the major source was from the fabricated gap mismatch in the MEMS sensor. This work provides a new way for analyzing the offset in a MEMS capacitive accelerometer, and it is helpful for purposefully taking steps to reduce the offset and improve accelerometer performance.

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