A neural network model in LaNixAl1-xO3 catalyst for methane reforming in SOFC

Sian Jie Ciou, Ya Wun Jhang, Ying Jhih Lai, Kuan-Zong Fung, Min Hsiung Hung, Kai-Wei Chiang

研究成果: Conference contribution

摘要

There has been a great interest in application of SOFC using hydrocarbon fuel, and the major issue associated with the improvement of steam reforming is the possibility to extend the area of operation conditions, and lead to low carbon formation. The improvement can be achieved by modifying the design of existing nickel catalysts. Generally, mathematical modeling can be considered as an important element in the methane reforming in terms of the avoidance of extensive experiments. In this article, a two layered feed-forward neural network has been trained with the back propagation algorithm to learn parameters in the process that the LaNixAl1-xO3(x = 0.1-0.9), reforms methane. The data used during the training procedure are generated by using of mass spectrometer after reforming. The average values of the errors for prediction are well below 5% The artificial neural network (ANN) model was capable of modeling the relationship between catalytic behaviors and the structure of catalytic well.

原文English
主出版物標題ECS Transactions - 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X
頁面1929-1937
頁數9
版本1 PART 2
DOIs
出版狀態Published - 2007 十二月 1
事件10th International Symposium on Solid Oxide Fuel Cells, SOFC-X - , Japan
持續時間: 2007 六月 32007 六月 8

出版系列

名字ECS Transactions
號碼1 PART 2
7
ISSN(列印)1938-5862
ISSN(電子)1938-6737

Other

Other10th International Symposium on Solid Oxide Fuel Cells, SOFC-X
國家Japan
期間07-06-0307-06-08

指紋

Reforming reactions
Solid oxide fuel cells (SOFC)
Methane
Neural networks
Catalysts
Backpropagation algorithms
Steam reforming
Feedforward neural networks
Mass spectrometers
Hydrocarbons
Nickel
Carbon
Experiments

All Science Journal Classification (ASJC) codes

  • Engineering(all)

引用此文

Ciou, S. J., Jhang, Y. W., Lai, Y. J., Fung, K-Z., Hung, M. H., & Chiang, K-W. (2007). A neural network model in LaNixAl1-xO3 catalyst for methane reforming in SOFC. 於 ECS Transactions - 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X (1 PART 2 編輯, 頁 1929-1937). (ECS Transactions; 卷 7, 編號 1 PART 2). https://doi.org/10.1149/1.2729305
Ciou, Sian Jie ; Jhang, Ya Wun ; Lai, Ying Jhih ; Fung, Kuan-Zong ; Hung, Min Hsiung ; Chiang, Kai-Wei. / A neural network model in LaNixAl1-xO3 catalyst for methane reforming in SOFC. ECS Transactions - 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X. 1 PART 2. 編輯 2007. 頁 1929-1937 (ECS Transactions; 1 PART 2).
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Ciou, SJ, Jhang, YW, Lai, YJ, Fung, K-Z, Hung, MH & Chiang, K-W 2007, A neural network model in LaNixAl1-xO3 catalyst for methane reforming in SOFC. 於 ECS Transactions - 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X. 1 PART 2 edn, ECS Transactions, 編號 1 PART 2, 卷 7, 頁 1929-1937, 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X, Japan, 07-06-03. https://doi.org/10.1149/1.2729305

A neural network model in LaNixAl1-xO3 catalyst for methane reforming in SOFC. / Ciou, Sian Jie; Jhang, Ya Wun; Lai, Ying Jhih; Fung, Kuan-Zong; Hung, Min Hsiung; Chiang, Kai-Wei.

ECS Transactions - 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X. 1 PART 2. 編輯 2007. p. 1929-1937 (ECS Transactions; 卷 7, 編號 1 PART 2).

研究成果: Conference contribution

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Ciou SJ, Jhang YW, Lai YJ, Fung K-Z, Hung MH, Chiang K-W. A neural network model in LaNixAl1-xO3 catalyst for methane reforming in SOFC. 於 ECS Transactions - 10th International Symposium on Solid Oxide Fuel Cells, SOFC-X. 1 PART 2 編輯 2007. p. 1929-1937. (ECS Transactions; 1 PART 2). https://doi.org/10.1149/1.2729305