Litcius/Paper detail

Design of a Femtosecond Laser Percussion Drilling Process for Ni-Based Superalloys Based on Machine Learning and the Genetic Algorithm

Zhixi Zhao, Yunhe Yu, Rui-Jia Sun, Wanrong Zhao, Hao Guo, Zhen Zhang, Chenchong Wang

2023Micromachines15 citationsDOIOpen Access PDF

Abstract

Femtosecond laser drilling is extensively used to create film-cooling holes in aero-engine turbine blade processing. Investigating and exploring the impact of laser processing parameters on achieving high-quality holes is crucial. The traditional trial-and-error approach, which relies on experiments, is time-consuming and has limited optimization capabilities for drilling holes. To address this issue, this paper proposes a process design method using machine learning and a genetic algorithm. A dataset of percussion drilling using a femtosecond laser was primarily established to train the models. An optimal method for building a prediction model was determined by comparing and analyzing different machine learning algorithms. Subsequently, the Gaussian support vector regression model and genetic algorithm were combined to optimize the taper and material removal rate within and outside the original data ranges. Ultimately, comprehensive optimization of drilling quality and efficiency was achieved relative to the original data. The proposed framework in this study offers a highly efficient and cost-effective solution for optimizing the femtosecond laser percussion drilling process.

Topics & Concepts

FemtosecondDrillingGenetic algorithmSuperalloyProcess (computing)LaserDrilling engineeringSupport vector machineComputer scienceLaser drillingPercussionMachine learningAlgorithmMechanical engineeringArtificial intelligenceEngineeringMaterials scienceAcousticsOpticsOperating systemMicrostructurePhysicsMetallurgyLaser Material Processing TechniquesAdvanced machining processes and optimizationAdvanced Surface Polishing Techniques