Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding

The objective of this study is to predict the percentage dilution in AISI 1020 low carbon steel welds produced from tungsten inert gas welding using Artificial Neural Networking (ANN) approach. The regression plot showed R = 0.9992 as progress of training, R = 0.99865 as progress of validation and...

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Main Authors: J. U. Ohwoekevwo, A. Ozigagun, J. I. Achebo, K. O. Obahiagbon
Format: Article
Language:English
Published: Joint Coordination Centre of the World Bank assisted National Agricultural Research Programme (NARP) 2022-05-01
Series:Journal of Applied Sciences and Environmental Management
Subjects:
Online Access:https://www.ajol.info/index.php/jasem/article/view/248403
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author J. U. Ohwoekevwo
A. Ozigagun
J. I. Achebo
K. O. Obahiagbon
author_facet J. U. Ohwoekevwo
A. Ozigagun
J. I. Achebo
K. O. Obahiagbon
author_sort J. U. Ohwoekevwo
collection DOAJ
description The objective of this study is to predict the percentage dilution in AISI 1020 low carbon steel welds produced from tungsten inert gas welding using Artificial Neural Networking (ANN) approach. The regression plot showed R = 0.9992 as progress of training, R = 0.99865 as progress of validation and R = 0.85285 as progress of the training test. This led to overall correlation coefficient (R) of 0.90007 which signified that ANN is a robust tool for predicting the percentage of weld dilution. To test the reliability of the trained network, the ANN model was employed to predict its own value of percentage dilution using the same input parameters generated from the central composite design. Based on the observed and the predicted values of percentage dilution, a regression plot of outputs was thereafter generated, and r2 value of 0.9876 was obtained which led to the conclusion that the trained network can be used to predict percentage dilution beyond the limit of experimentation. There was proximity in the results obtained, as both the experimental and predicted weld dilution fell between 44.5-71.55%. Hence, prediction adopted in this study can be applied in actual scenario without fear of inacuracies.
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spelling doaj.art-b4cc1f77a0f842a6b11501028dd5deee2024-04-02T19:46:55ZengJoint Coordination Centre of the World Bank assisted National Agricultural Research Programme (NARP)Journal of Applied Sciences and Environmental Management2659-15022659-14992022-05-0127510.4314/jasem.v27i5.14Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas WeldingJ. U. OhwoekevwoA. OzigagunJ. I. AcheboK. O. Obahiagbon The objective of this study is to predict the percentage dilution in AISI 1020 low carbon steel welds produced from tungsten inert gas welding using Artificial Neural Networking (ANN) approach. The regression plot showed R = 0.9992 as progress of training, R = 0.99865 as progress of validation and R = 0.85285 as progress of the training test. This led to overall correlation coefficient (R) of 0.90007 which signified that ANN is a robust tool for predicting the percentage of weld dilution. To test the reliability of the trained network, the ANN model was employed to predict its own value of percentage dilution using the same input parameters generated from the central composite design. Based on the observed and the predicted values of percentage dilution, a regression plot of outputs was thereafter generated, and r2 value of 0.9876 was obtained which led to the conclusion that the trained network can be used to predict percentage dilution beyond the limit of experimentation. There was proximity in the results obtained, as both the experimental and predicted weld dilution fell between 44.5-71.55%. Hence, prediction adopted in this study can be applied in actual scenario without fear of inacuracies. https://www.ajol.info/index.php/jasem/article/view/248403Prediction,Percentage dilution;Low carbon steel;Welding
spellingShingle J. U. Ohwoekevwo
A. Ozigagun
J. I. Achebo
K. O. Obahiagbon
Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding
Journal of Applied Sciences and Environmental Management
Prediction,
Percentage dilution;
Low carbon steel;
Welding
title Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding
title_full Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding
title_fullStr Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding
title_full_unstemmed Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding
title_short Prediction of Percentage Dilution in AISI 1020 Low Carbon Steel Welds Produced from Tungsten Inert Gas Welding
title_sort prediction of percentage dilution in aisi 1020 low carbon steel welds produced from tungsten inert gas welding
topic Prediction,
Percentage dilution;
Low carbon steel;
Welding
url https://www.ajol.info/index.php/jasem/article/view/248403
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AT jiachebo predictionofpercentagedilutioninaisi1020lowcarbonsteelweldsproducedfromtungsteninertgaswelding
AT koobahiagbon predictionofpercentagedilutioninaisi1020lowcarbonsteelweldsproducedfromtungsteninertgaswelding