4.5 Article

ResNet14Attention network for identifying the titration end-point of potassium dichromate

期刊

HELIYON
卷 9, 期 8, 页码 -

出版社

CELL PRESS
DOI: 10.1016/j.heliyon.2023.e18992

关键词

ResNet; Attention; Titration end -point; Potassium dichromate method; Deep learning

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With the rapid development of industry, the increasing discharge of sewage has made water quality detection more important. The proposed ResNet14Attention network utilizes residual modules and an attention mechanism to accurately identify the titration end-point of potassium dichromate. It outperforms other convolutional neural networks in terms of accuracy and training speed.
With the rapid development of industry, the increasing discharge of sewage causes the detection of water quality to be of increasing importance. Potassium dichromate titration is one of the most important testing methods in water quality detection; the ability to accurately identify the titration end-point of potassium dichromate is currently a research challenge. To identify titration end-point quickly and accurately, this study proposes a ResNet14Attention network, which utilizes residual modules that focus on original image information and an attention mechanism that focuses highly on classification targets. The proposed ResNet14Attention network is compared with 12 convolutional neural networks such as ResNet series networks, VGG, and GoogLeNet. The results of comparison experiments reveal that only the proposed ResNet14Attention network has the highest training and testing accuracy of 100% among all convolutional neural networks in the comparison experiment; the proposed ResNet14Attention network has the highest training speed compared to all the networks that over 90% accuracy.

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