Optimization of laser powder bed fusion process parameter for the fabrication of AlSi12 using NSGA-II and Pareto search algorithm
Optimierung der Prozessparameter für das Laserstrahl-Pulverbett-Schmelzen zur Herstellung von AlSi12 mit NSGA-II und Pareto-Suchalgorithmus
IF 1.2 4区 材料科学Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY
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引用次数: 0
Abstract
Additive manufacturing, notably laser powder bed fusion (LPBF), excels in producing complex geometries and is widely used in the automotive, aerospace, and naval industries. Laser powder bed fusion enables the creation of components with the required stiffness and strength at a lighter weight than traditional manufacturing methods. Aluminium alloys are particularly promising for laser powder bed fusion in the automotive and aerospace sectors. To enhance the effectiveness of laser powder bed fusion-produced components, optimized process parameters must be designed for specific materials. This study investigates the influence of processing parameters, scan speed, scan strategy, and hatch space, on the relative density, surface roughness, and microhardness of AlSi12 samples fabricated by laser powder bed fusion. A Taguchi L27 orthogonal array was used to systematically analyze the effects of these parameters. A regression model was developed and evaluated through analysis of variance using signal-to-noise (S/N) ratios to identify optimal parameter values. Results indicated that the scan pattern significantly affects relative density, while hatch space impacts surface roughness and microhardness. Optimal solutions were obtained through multi-objective optimization using the non-dominated sorting genetic algorithm (NSGA-II) and Pareto search algorithms. Experimental validation showed average errors of 0.483 % and 0.461 % for NSGA-II and Pareto search algorithms, respectively.
期刊介绍:
Materialwissenschaft und Werkstofftechnik provides fundamental and practical information for those concerned with materials development, manufacture, and testing.
Both technical and economic aspects are taken into consideration in order to facilitate choice of the material that best suits the purpose at hand. Review articles summarize new developments and offer fresh insight into the various aspects of the discipline.
Recent results regarding material selection, use and testing are described in original articles, which also deal with failure treatment and investigation. Abstracts of new publications from other journals as well as lectures presented at meetings and reports about forthcoming events round off the journal.