The Proceedings of the Thermal Engineering Conference
Online ISSN : 2424-290X
2024
Session ID : F22
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Faster R-CNN based bubble detection with automatic pseudo-bubble image generation Application to alkaline water electrolyzer
*Kohei ToyamaRyo kanemotoKeita HirayamaTakuto ArakiRyuta Misumi
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Abstract

Faster R-CNN method to automatically detect hydrogen bubbles within alkaline water electrolyzer was developed. This method includes an algorithm to automatically draw a pseudo-hydrogen bubble image based on actual hydrogen bubble images for training the CNN. This approach resolves the challenge of training models with a large amount of annotation dataset to achieve high-precision inference with CNN. With this method, it is possible to collect the amount of data needed to train the model by simply cutting out 12 bubbles. The method required approximately 0.1 s/image for bubble detection and F1 score exceeds 0.841 for all test images.

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© 2024 The Japan Society of Mechanical Engineers
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