Laser Beam Welded Aluminum-Titanium Dissimilar Sheet Metals: Neural Network Based Strength and Hardness Prediction Model
Abstract ‘Laser Beam Welding (LBW) is a welding technique used to join pieces of metal or thermoplastics with the aid of laser’. The beam offers a concerted heat source, which enabled higher, deeper welds and narrower welding rates. The procedure is commonly exploited in higher volume appliances usi...
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Veröffentlicht in: | Computer journal 2023-05, Vol.66 (5), p.1053-1068 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Abstract
‘Laser Beam Welding (LBW) is a welding technique used to join pieces of metal or thermoplastics with the aid of laser’. The beam offers a concerted heat source, which enabled higher, deeper welds and narrower welding rates. The procedure is commonly exploited in higher volume appliances using mechanization. It is dependent on penetration or keyhole mode welding. This paper intends to design a novel prediction model on LBW using the Optimized Neural Network (NN) framework. The input to the optimized NN is the welding properties like ‘Laser power, welding speed, offset, shielding gas, flow/pressure, focal distance and frequency (where power, speed and offset gets varied)’ that directly predict the hardness and tensile strength of welds since the NN is already trained with the provided data. In order to make the prediction model more accurate, this paper aims to train the NN using a new improved Trial Integer-based Whale Optimization Algorithm (TI-WOA) via updating the weight. Finally, the betterment of the suggested scheme is validated with respect to error analysis. Accordingly, from the analysis, it is observed that the proposed methods are 50%, 13.33%, 6.67% and 4% better than ANN-BP, RBF, ANN-GA and NN-WOA models, respectively, at 70th learning percentage. |
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ISSN: | 0010-4620 1460-2067 |
DOI: | 10.1093/comjnl/bxab211 |