2022
DOI: 10.3390/electronics11132073
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Power-Efficient Trainable Neural Networks towards Accurate Measurement of Irregular Cavity Volume

Abstract: Irregular cavity volume measurement is a critical step in industrial production. This technology is used in a wide variety of applications. Traditional studies, such as waterflooding-based methods, have suffered from the following shortcomings, i.e., significant measurement error, low efficiency, complicated operation, and corrosion of devices. Recently, neural networks based on the air compression principle have been proposed to achieve irregular cavity volume measurement. However, the balance between data qu… Show more

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