Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler

The gas dispersion state within the bubble columns and reactors greatly affects their performance. A bubble sampler is a useful device to measure gas dispersion in the operating bubble columns and reactors as it has an adjustable sampling part that allows the device to obtain bubble samples from des...

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Main Authors: Changzhi Bai, Hangil Park, Chun Yong Ng, Liguang Wang
Format: Article
Language:English
Published: Elsevier 2021-03-01
Series:Chemical Engineering Journal Advances
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666821120300648
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spelling doaj-70309c05f82e4b1a91420ab3cf6deb9f2021-04-22T13:42:01ZengElsevierChemical Engineering Journal Advances2666-82112021-03-015100064Classification of gas dispersion states via deep learning based on images obtained from a bubble samplerChangzhi Bai0Hangil Park1Chun Yong Ng2Liguang Wang3School of Chemical Engineering, The University of Queensland, St Lucia, QLD 4072, AustraliaCorresponding authors.; School of Chemical Engineering, The University of Queensland, St Lucia, QLD 4072, AustraliaSchool of Chemical Engineering, The University of Queensland, St Lucia, QLD 4072, AustraliaCorresponding authors.; School of Chemical Engineering, The University of Queensland, St Lucia, QLD 4072, AustraliaThe gas dispersion state within the bubble columns and reactors greatly affects their performance. A bubble sampler is a useful device to measure gas dispersion in the operating bubble columns and reactors as it has an adjustable sampling part that allows the device to obtain bubble samples from desired regions. However, implementing the bubble sampler as a real-time gas dispersion monitoring tool is difficult owing to the lack of reliable and automated image processing approach.In the present study, we developed a new convolutional neural network model to classify the gas dispersion states in a bubble column based on the images obtained with a bubble sampler. The model was trained with a labeled bubble image dataset comprising five different classes, which corresponded to five different gas dispersion states in the column. The average classification accuracy of the model was 97.5%. It was demonstrated that the trained model can accurately identify the change in gas dispersion state in real-time. The dataset created in this investigation and the pretrained BubbleNet can be found at http://dx.doi.org/10.17632/m3zjf8z286.1.http://www.sciencedirect.com/science/article/pii/S2666821120300648Convolutional neural networkBubbleGas dispersionProcess monitoring
collection DOAJ
language English
format Article
sources DOAJ
author Changzhi Bai
Hangil Park
Chun Yong Ng
Liguang Wang
spellingShingle Changzhi Bai
Hangil Park
Chun Yong Ng
Liguang Wang
Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
Chemical Engineering Journal Advances
Convolutional neural network
Bubble
Gas dispersion
Process monitoring
author_facet Changzhi Bai
Hangil Park
Chun Yong Ng
Liguang Wang
author_sort Changzhi Bai
title Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
title_short Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
title_full Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
title_fullStr Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
title_full_unstemmed Classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
title_sort classification of gas dispersion states via deep learning based on images obtained from a bubble sampler
publisher Elsevier
series Chemical Engineering Journal Advances
issn 2666-8211
publishDate 2021-03-01
description The gas dispersion state within the bubble columns and reactors greatly affects their performance. A bubble sampler is a useful device to measure gas dispersion in the operating bubble columns and reactors as it has an adjustable sampling part that allows the device to obtain bubble samples from desired regions. However, implementing the bubble sampler as a real-time gas dispersion monitoring tool is difficult owing to the lack of reliable and automated image processing approach.In the present study, we developed a new convolutional neural network model to classify the gas dispersion states in a bubble column based on the images obtained with a bubble sampler. The model was trained with a labeled bubble image dataset comprising five different classes, which corresponded to five different gas dispersion states in the column. The average classification accuracy of the model was 97.5%. It was demonstrated that the trained model can accurately identify the change in gas dispersion state in real-time. The dataset created in this investigation and the pretrained BubbleNet can be found at http://dx.doi.org/10.17632/m3zjf8z286.1.
topic Convolutional neural network
Bubble
Gas dispersion
Process monitoring
url http://www.sciencedirect.com/science/article/pii/S2666821120300648
work_keys_str_mv AT changzhibai classificationofgasdispersionstatesviadeeplearningbasedonimagesobtainedfromabubblesampler
AT hangilpark classificationofgasdispersionstatesviadeeplearningbasedonimagesobtainedfromabubblesampler
AT chunyongng classificationofgasdispersionstatesviadeeplearningbasedonimagesobtainedfromabubblesampler
AT liguangwang classificationofgasdispersionstatesviadeeplearningbasedonimagesobtainedfromabubblesampler
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