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Process Control Strategies for Dual-Phase Steel Manufacturing Using ANN and ANFIS
journal contribution
posted on 2023-02-01, 00:22 authored by H Vafaeenezhad, Sadegh Ghanei, S H Seyedein, H Beygi, M MazinaniIn this research, a comprehensive soft computational approach is presented for the analysis of the influencing parameters on manufacturing of dual-phase steels. A set of experimental data have been gathered to obtain the initial database used for the training and testing of both artificial neural networks (ANN) and adaptive neuro-fuzzy inference system (ANFIS). The parameters used in the strategy were intercritical annealing temperature, carbon content, and holding time which gives off martensite percentage as an output. A fraction of the data set was chosen to train both ANN and ANFIS, and the rest was put into practice to authenticate the act of the trained networks while seeing unseen data. To compare the obtained results, coefficient of determination and root mean squared error indexes were chosen. Using artificial intelligence methods, it is not necessary to consider and establish a preliminary mathematical model and formulate its affecting parameters on its definition. In conclusion, the martensite percentages corresponding to the manufacturing parameters can be determined prior to a production using these controlling algorithms. Although the results acquired from both ANN and ANFIS are very encouraging, the proposed ANFIS has enhanced performance over the ANN and takes better effect on cost-reduction profit.
History
Journal
Journal of Materials Engineering and PerformanceVolume
23Pagination
3975 - 3983Publisher DOI
ISSN
1059-9495eISSN
1544-1024Publication classification
C1.1 Refereed article in a scholarly journalUsage metrics
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Categories
Keywords
Science & TechnologyTechnologyMaterials Science, MultidisciplinaryMaterials Scienceadaptive neuro-fuzzy inference systemartificial neural networksdual-phase steelsmartensitemicrostructureFUZZY INFERENCE SYSTEMMECHANICAL-PROPERTIESTENSILE PROPERTIESHARDENING BEHAVIORNEURAL-NETWORKEDDY-CURRENTPREDICTIONMORPHOLOGYPARAMETERS