Prediction of Optimal Mild Steel Weld Parameters using the Adaptive Neuro Fuzzy Inference System (ANFIS) Technique.

Author:

Lonfinmakin Oladotun Oluyomi,Emovon Ikuobase,Samuel David Olusegun,sada samuel oro-oghene1,Oke Sunday Ayoola

Affiliation:

1. Delta state university

Abstract

Abstract Welding is one of the major operations in many industries as it provides a durable means of joining metals and ensuring that diverse equipments are created to meet the growing needs of the manufacturing industries. To enhance the production of these diverse equipments, studies are continually been performed to identify improved means of obtaining reliable joints. This study applies the Adaptive Neuro Fuzzy Inference System (ANFIS) technique, in improving the predictability of the optimal weld characteristics for a mild steel welded joints, with focus on tensile strength and hardness as responses. From the study, the variation in tensile strength and hardness as a result of the process parameters effects is illustrated, and it reveals the optimal tensile strength and hardness is obtained at the combined input parameters. 170Amp, 20volts, 24l/min, 2.2mm for the tensile strength and 220Amp, 20volts, 20l/min, 2.4mm for the hardness.

Publisher

Research Square Platform LLC

Reference36 articles.

1. Sirisalee P, Ashby, Mike P, Geoffrey, Clarkson P (2004) Multi-Criteria Material Selection in Engineering Design. Advanced Engineering Materials

2. Jahan A, Edwards K (2015) A state-of-the-art survey on the influence of normalization techniques in ranking: Improving the materials selection process in engineering design. Materials & Design

3. Parametric Optimization of Weld Reinforcements using Response Surface Methodology Optimization Process;Sada SO;J Appl Sci Environ Manage,2018

4. Sada SO, Achebo JO, Optimisation and Prediction of the Weld Bead Geometry of a Mild Steel Metal Inert Gas Weld. Advances in Materials and, Technologies P (2018) https://doi.org/10.1080/2374068X.2020.1860597

5. Kah P, Latifi H, Suoranta R, Jukka Martikainen and Markku Pirinen (2014) Usability of are types in industrial welding. International Journal of Mechanical and Materials Engineering 2014 9:15

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