Machine Learning Algorithms for Prediction of Penetration Depth and
Geometrical Analysis of Weld in Friction Stir Spot Welding Process
- URL: http://arxiv.org/abs/2201.09725v1
- Date: Fri, 21 Jan 2022 17:16:25 GMT
- Title: Machine Learning Algorithms for Prediction of Penetration Depth and
Geometrical Analysis of Weld in Friction Stir Spot Welding Process
- Authors: Akshansh Mishra, Raheem Al-Sabur, Ahmad K. Jassim
- Abstract summary: The research work is based on the prediction of penetration depth using Supervised Machine Learning algorithms.
A Friction Stir Spot Welding (FSSW) was used to join two elements of AA1230 aluminum alloys.
The Robust Regression machine learning algorithm outperformed the rest of the algorithms by resulting in the coefficient of determination of 0.96.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Nowadays, manufacturing sectors harness the power of machine learning and
data science algorithms to make predictions for the optimization of mechanical
and microstructure properties of fabricated mechanical components. The
application of these algorithms reduces the experimental cost beside leads to
reduce the time of experiments. The present research work is based on the
prediction of penetration depth using Supervised Machine Learning algorithms
such as Support Vector Machines (SVM), Random Forest Algorithm, and Robust
Regression algorithm. A Friction Stir Spot Welding (FSSW) was used to join two
elements of AA1230 aluminum alloys. The dataset consists of three input
parameters: Rotational Speed (rpm), Dwelling Time (seconds), and Axial Load
(KN), on which the machine learning models were trained and tested. It observed
that the Robust Regression machine learning algorithm outperformed the rest of
the algorithms by resulting in the coefficient of determination of 0.96. The
research work also highlights the application of image processing techniques to
find the geometrical features of the weld formation.
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