Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow

Particle concentration is an important parameter for describing the state of gas–solid two-phase flow. This study compares the performance of three methods, namely, Back-Propagation Neural Networks (BPNNs), Recurrent Neural Networks (RNNs), and Long Short-Term Memory (LSTM), in handling gas–solid tw...

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Main Authors: Zhiyong Wang, Bing Yan, Haoquan Wang
Format: Article
Language:English
Published: MDPI AG 2024-02-01
Series:Fluids
Subjects:
Online Access:https://www.mdpi.com/2311-5521/9/3/59
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author Zhiyong Wang
Bing Yan
Haoquan Wang
author_facet Zhiyong Wang
Bing Yan
Haoquan Wang
author_sort Zhiyong Wang
collection DOAJ
description Particle concentration is an important parameter for describing the state of gas–solid two-phase flow. This study compares the performance of three methods, namely, Back-Propagation Neural Networks (BPNNs), Recurrent Neural Networks (RNNs), and Long Short-Term Memory (LSTM), in handling gas–solid two-phase flow data. The experiment utilized seven parameters, including temperature, humidity, upstream and downstream sensor signals, delay, pressure difference, and particle concentration, as the dataset. The evaluation metrics, such as prediction accuracy, were used for comparative analysis by the experimenters. The experiment results indicate that the prediction accuracies of the RNN, LSTM, and BPNN experiments were 92.4%, 92.7%, and 92.5%, respectively. Future research can focus on further optimizing the performance of the BPNN, RNN, and LSTM to enhance the accuracy and efficiency of gas–solid two-phase flow data processing.
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spelling doaj.art-ae6f99a449c74cfc98fb4e82d579f4c02024-03-27T13:38:22ZengMDPI AGFluids2311-55212024-02-01935910.3390/fluids9030059Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase FlowZhiyong Wang0Bing Yan1Haoquan Wang2School of Information and Communication Engineering, North University of China, Taiyuan 030051, ChinaSchool of Information and Communication Engineering, North University of China, Taiyuan 030051, ChinaSchool of Information and Communication Engineering, North University of China, Taiyuan 030051, ChinaParticle concentration is an important parameter for describing the state of gas–solid two-phase flow. This study compares the performance of three methods, namely, Back-Propagation Neural Networks (BPNNs), Recurrent Neural Networks (RNNs), and Long Short-Term Memory (LSTM), in handling gas–solid two-phase flow data. The experiment utilized seven parameters, including temperature, humidity, upstream and downstream sensor signals, delay, pressure difference, and particle concentration, as the dataset. The evaluation metrics, such as prediction accuracy, were used for comparative analysis by the experimenters. The experiment results indicate that the prediction accuracies of the RNN, LSTM, and BPNN experiments were 92.4%, 92.7%, and 92.5%, respectively. Future research can focus on further optimizing the performance of the BPNN, RNN, and LSTM to enhance the accuracy and efficiency of gas–solid two-phase flow data processing.https://www.mdpi.com/2311-5521/9/3/59gas–solid two-phase flow data processingBPNNRNNLSTM
spellingShingle Zhiyong Wang
Bing Yan
Haoquan Wang
Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow
Fluids
gas–solid two-phase flow data processing
BPNN
RNN
LSTM
title Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow
title_full Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow
title_fullStr Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow
title_full_unstemmed Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow
title_short Application of Deep Learning in Predicting Particle Concentration of Gas–Solid Two-Phase Flow
title_sort application of deep learning in predicting particle concentration of gas solid two phase flow
topic gas–solid two-phase flow data processing
BPNN
RNN
LSTM
url https://www.mdpi.com/2311-5521/9/3/59
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AT bingyan applicationofdeeplearninginpredictingparticleconcentrationofgassolidtwophaseflow
AT haoquanwang applicationofdeeplearninginpredictingparticleconcentrationofgassolidtwophaseflow