Litcius/Paper detail

On the use of machine learning and genetic algorithm to predict the region processed by laser peen forming

Siva Teja Sala, R. Körner, N. Huber, Nikolai Kashaev

2023Manufacturing Letters11 citationsDOIOpen Access PDF

Abstract

Laser peen forming uses laser-pulse-induced strains to deform sheets by adjusting laser parameters and peening patterns. Finding an optimal pattern in a vast space of practically infinite solutions is challenging. This study presents a workflow using a simplified model to predict deformation. A machine learning-based cellular automata neural network (CANN) and genetic algorithm (GA) were used for pattern prediction. Experiments showed high process uncertainty, justifying simplified modeling. The CANN predicted patterns reliably but lacked generalization due to insufficient deformation data for various process parameters. The GA required optimization efforts to reduce computation time but was successful at generalizing pattern prediction.

Topics & Concepts

GeneralizationWorkflowProcess (computing)Artificial neural networkAlgorithmComputer scienceGenetic algorithmLaserArtificial intelligenceComputationDeformation (meteorology)Machine learningMathematicsMaterials scienceOpticsDatabaseComposite materialOperating systemPhysicsMathematical analysisLaser and Thermal Forming TechniquesLaser Material Processing TechniquesSurface Treatment and Residual Stress