Author/Authors :
Ates، Hakan نويسنده Gazi University , , Dursun، Bekir نويسنده Gazi University , , Kurt، Erol نويسنده Gazi University ,
Abstract :
A new estimation study on material features for welding processes is reported.
The method is based on the Articial Neural Network (ANN) for estimation of material
features after the gas-metal arc welding process. Since welding is a very common process
in many engineering areas, this method would certainly assist technicians and engineers
in estimating material features related to the welding parameters before any welding
operation. In the proposed method, the input parameters of welding are dened as various
shielding gas mixtures of Ar, O2 and CO2. As the resulting feature, an estimation is made
on the mechanical properties, such as tensile strength, impact test, elongation and weld
metal hardness, following ANN. The controller is trained with the scaled conjugate gradient
method. It is proven that some estimated values are consistent with the experimental
data, whereas some others have relatively higher errors. Thus, this method can be used
to estimate, especially, the yield strength and elongation values when the shielding gas
proportions are ascertained before the welding. Thus, the method helps to ascertain the
welding gas selection in a very short time for engineers, and assists in decreasing welding
costs.