Affiliation:
1. School of Mechanical Engineering, Iran University of Science and Technology, Tehran, Iran
Abstract
In this article, preform optimization in closed-die forging has been studied. The main objective of the optimization process is to reduce forging force by changing the preform shape as a variable parameter. In this respect, a combination of neural network and genetic algorithms has been employed. The finite volume method (FVM) is used as a simulation tool for the forging process. Simulation results have been used in a neural network analysis and a genetic algorithm to optimize the forging force. The neural network was used in several stages for modelling the system. The optimization process contains three stages. In stage 1 the preform shape is obtained by open die forging. Stage 2 is used for closed-die forging process to obtain the forging force. Stage 3 is for the filling of the die cavity. The geometrical parametric design process was used to accelerate the operation. An aeronautical forging component has been selected as a case study. The final results showed a negligible discrepancy of 0.3 per cent for forging force between neural network and direct simulation results. The optimization results prove that a reduction of forging force equal to 50 per cent can be achieved in comparison with an initial preform with 10 per cent extra volume.
Subject
Industrial and Manufacturing Engineering,Mechanical Engineering
Cited by
10 articles.
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