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PMUT Package Design Optimization via Machine Learning

Authors :
Teng, Megan
Teng, Megan
Yue, Wei
Peng, Yande
Tsao, Pei-Chi
Deng, Huicong
Xia, Fan
Lin, Liwei
Teng, Megan
Teng, Megan
Yue, Wei
Peng, Yande
Tsao, Pei-Chi
Deng, Huicong
Xia, Fan
Lin, Liwei
Publication Year :
2024

Abstract

This work uses supervised learning to optimize the package design with validated experimental results for piezoelectric micromachined ultrasonic transducers (PMUTs) to increase and alter the sound pressure level (SPL). Advancements as compared to the state-of-art include: (1) a neural network model to achieve a mean squared error of less than 0.65 dB2 post 100 epochs; (2) increased vibration amplitude by 17.9 dBV at the first-mode resonance frequency of 33.5 kHz; and (3) SPL enhancements below the 20 kHz frequency range such as the magnitude increases of more than 60 dBV at 5 kHz. As such, the package design shifts the emitting acoustic energy from the ultrasound to audio range in favor of various applications, including audio speakers.

Details

Database :
OAIster
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.on1452695990
Document Type :
Electronic Resource