The Laser Cutting Optimization by Neural Networks
نویسندگان
چکیده
Aim of this contribution is to present the optimization of the laser cutting process by artificial neural networks. NeuroSolution for Excel 1.02 was used in order to interpret complicated dependencies between technological characteristics of laser cutting and output parameters. Multilayer feed forward neural networks are utilized for modelling and prediction of input parameters of laser cutting machine. The experimental results were processed, evaluated and graphically interpreted.
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