MODELING OF HOT EXTRUSION PROCESS USING ARTIFICIAL NEURAL NETWORKS IMPLANTED WITH GENETIC ALGORITHM
Keywords:
Finite Element Simulation, Process modeling, Extrusion Load, Artificial Neural Network, Genetic AlgorithmAbstract
Hot extrusion is a complex metal-forming process and requires careful selection of parameters, and control and inspection through a precise simulation and analysis. This paper proposes modeling of hot extrusion using multi-layered perceptron trained by Genetic Algorithm (GA). The data obtained from Finite Element Method simulations of a typical hot extrusion process are modeled in a multi layered Artificial Neural Networks (ANN) with four inputs to get an output of extrusion load. The proposed method also uses a Genetic Algorithm procedure to find the optimal weights, which makes the model efficient and accurate. The final trained network model will predict the requisite forces for given parameters combinations in real time with out any extensive and expensive computations.
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