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首页> 外文期刊>International Journal of Material Forming: Official Journal of the European Scientific Association for Material Forming - ESAFORM >Parametric analysis and machine learning-based parametric modeling of wire laser metal deposition induced porosity
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Parametric analysis and machine learning-based parametric modeling of wire laser metal deposition induced porosity

机译:基于激光金属沉积诱导孔隙率的参数分析和机器学习参数化建模

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摘要

Additive manufacturing is an appealing solution to produce geometrically complex parts, difficult to manufacture using traditional technologies. The extreme process conditions, in particular the high temperature, complex interactions and couplings, rich metallurgical transformations and combinatorial deposition trajectories, induce numerous process defects and in particular porosity. Simulating numerically porosity appearance remains extremely complex because of the multiple physics induced by the laser-material interaction, the multiple space and time scales, with a strong impact on the simulation efficiency and performances. Moreover, when analyzing parts build-up by using the wire laser metal deposition -wLMD- technology it can be noticed a significant variability in the porosity size and distribution even when process parameters remain unchanged. For these reasons the present paper aims at proposing an alternative modeling approach based on the use of neural networks to express the porosity as a function of different process parameters that will be extracted from the process analysis.
机译:增材制造是一种极具吸引力的解决方案,可用于生产几何形状复杂的零件,而使用传统技术很难制造。极端的工艺条件,特别是高温、复杂的相互作用和耦合、丰富的冶金转变和组合沉积轨迹,会导致许多工艺缺陷,特别是孔隙率。由于激光-材料相互作用引起的多重物理场,多时空尺度,对仿真效率和性能有很大影响,因此模拟数值孔隙度外观仍然非常复杂。此外,当使用线激光金属沉积-wLMD-技术分析零件堆积时,即使工艺参数保持不变,也可以注意到孔隙率、尺寸和分布的显着变化。基于这些原因,本文旨在提出一种替代建模方法,该方法基于使用神经网络将孔隙率表示为将从过程分析中提取的不同过程参数的函数。

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