VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM

Plural long short-term memory (pLSTM) with sparse model (SM) has been implemented in a developed multiple current-voltage (MCV) system (called pLSTM-SM-MCV) for the a estimation in upward vertical gas-liquid flow. The new MCV system injects constant current to measure the voltage vnk at multiple ele...

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Những tác giả chính: Tanaka, Koji, Prayitno, Yosephus Ardean Kurnianto, Sejati, Prima Asmara, Kawashima, Daisuke, Takei, Masahiro
Định dạng: Bài viết
Được phát hành: Begell House Inc. 2022
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author Tanaka, Koji
Prayitno, Yosephus Ardean Kurnianto
Sejati, Prima Asmara
Kawashima, Daisuke
Takei, Masahiro
author_facet Tanaka, Koji
Prayitno, Yosephus Ardean Kurnianto
Sejati, Prima Asmara
Kawashima, Daisuke
Takei, Masahiro
author_sort Tanaka, Koji
collection UGM
description Plural long short-term memory (pLSTM) with sparse model (SM) has been implemented in a developed multiple current-voltage (MCV) system (called pLSTM-SM-MCV) for the a estimation in upward vertical gas-liquid flow. The new MCV system injects constant current to measure the voltage vnk at multiple electrode pairs k at measurement time n with lower noise than the conventional multiple voltage-current (MVC) system. The measured voltage vector Vn is processed to the extracted voltage vector Ven by SM under the assumption in Vn. The Ven is trained for the flow regime identification by the 1st LSTM and the a estimation by the 2nd LSTM in pLSTM-SM-MCV. Experiments were conducted in a vertical gas-liquid experimental setup under the conditions of liquid single-phase flow, bubbly flow, and slug flow. As a result, the Ven was successfully extracted by determining the regularization parameter value λ in the sparse model as λ = 0.01 and λ = 0.042 in bubbly and slug flows, respectively. Under the λ, pLSTM-SM-MCV identifies the flow regime with zero percentage error and estimates the void fraction with a total mean of mean relative error hεi = 0.0275 which is reduced by 42 compared to the former pLSTM without SM (pLSTM-MCV) and by 51 compared to the former pLSTM implemented in conventional MVC system (pLSTM-MVC).
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spelling oai:generic.eprints.org:2832972023-11-21T05:38:13Z https://repository.ugm.ac.id/283297/ VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM Tanaka, Koji Prayitno, Yosephus Ardean Kurnianto Sejati, Prima Asmara Kawashima, Daisuke Takei, Masahiro Engineering Plural long short-term memory (pLSTM) with sparse model (SM) has been implemented in a developed multiple current-voltage (MCV) system (called pLSTM-SM-MCV) for the a estimation in upward vertical gas-liquid flow. The new MCV system injects constant current to measure the voltage vnk at multiple electrode pairs k at measurement time n with lower noise than the conventional multiple voltage-current (MVC) system. The measured voltage vector Vn is processed to the extracted voltage vector Ven by SM under the assumption in Vn. The Ven is trained for the flow regime identification by the 1st LSTM and the a estimation by the 2nd LSTM in pLSTM-SM-MCV. Experiments were conducted in a vertical gas-liquid experimental setup under the conditions of liquid single-phase flow, bubbly flow, and slug flow. As a result, the Ven was successfully extracted by determining the regularization parameter value λ in the sparse model as λ = 0.01 and λ = 0.042 in bubbly and slug flows, respectively. Under the λ, pLSTM-SM-MCV identifies the flow regime with zero percentage error and estimates the void fraction with a total mean of mean relative error hεi = 0.0275 which is reduced by 42 compared to the former pLSTM without SM (pLSTM-MCV) and by 51 compared to the former pLSTM implemented in conventional MVC system (pLSTM-MVC). Begell House Inc. 2022 Article PeerReviewed Tanaka, Koji and Prayitno, Yosephus Ardean Kurnianto and Sejati, Prima Asmara and Kawashima, Daisuke and Takei, Masahiro (2022) VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM. Multiphase Science and Technology, 34 (2). 25 – 42. ISSN 02761459 https://www.dl.begellhouse.com/journals/5af8c23d50e0a883,61671ff85f6610d1,2853602852edf477.html http://dx.doi.org/10.1615/MultScienTechn.2021039801
spellingShingle Engineering
Tanaka, Koji
Prayitno, Yosephus Ardean Kurnianto
Sejati, Prima Asmara
Kawashima, Daisuke
Takei, Masahiro
VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM
title VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM
title_full VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM
title_fullStr VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM
title_full_unstemmed VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM
title_short VOID FRACTION ESTIMATION IN VERTICAL GAS-LIQUID FLOW BY PLURAL LONG SHORT-TERM MEMORY WITH SPARSE MODEL IMPLEMENTED IN MULTIPLE CURRENT-VOLTAGE SYSTEM
title_sort void fraction estimation in vertical gas liquid flow by plural long short term memory with sparse model implemented in multiple current voltage system
topic Engineering
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