ARTIFICIAL NEURAL NETWORKS IN TENSILESTRENGTH AND INPUT PARAMETER PREDICTIONIN FRICTION STIR WELDING
Date
2014-01-13
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
International Journal of Medical Engineering and Robotics Research
Abstract
Welding speed and rotational speed have been singled out as the most influential welding
parameters which affect the tensile strength as well as the hardness in Friction Stir Welding
(FSW). It is however problematic to determine the possible welding speed and rotational speed
given the Ultimate Tensile Strength (UTS) since there are several combinations of welding speeds
and rotational speeds that can yield the same UTS. At the same time, however, the input
parameters predicted may not be available on the machine. This research is therefore aimed at
using Artificial Neural Networks (ANN) in predicting the UTS given rotational speed and welding
speed as well as exploring the possibility of obtaining the input parameters given the output
UTS.
Description
ARTIFICIAL NEURAL NETWORKS IN TENSILESTRENGTH AND INPUT PARAMETER PREDICTIONIN FRICTION STIR WELDING
Keywords
Friction stir Welding, Input parameter prediction, Tensile strength prediction, Artificial neural network
Citation
Chiteka, Kudzanayi. (2014). ARTIFICIAL NEURAL NETWORKS IN TENSILE STRENGTH AND INPUT PARAMETER PREDICTION IN FRICTION STIR WELDING. 3. International Journal of Medical Engineering and Robotics Research