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A Multi-physics Predictive Modeling Platform for Qualification of Material Microstructure and Mechanical Performance of Aerospace Additive Manufacturing Parts

机译:一种多物理预测建模平台,可用于材料微观结构的资格和航空涂层制造部件的力学性能

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Sentient has developed a predictive modeling tool for components built using AM to assess their performance, with rigorous consideration of the microstructural properties governing the nucleation and propagation of fatigue cracks. This tool, called DigitalClone® for Additive Manufacturing (DCAM), is an Integrated Computational Materials Engineering (ICME) tool that includes models of crack initiation and damage progression with the high-fidelity process and microstructure modeling approaches. The predictive model has three main modules: process modeling, microstructure modeling, and fatigue modeling. The feasibility and validation of our modeling tool is verified using experimental coupon testing. The predictive tool is able to account for temperature and microstructure variation as the function of process parameters and scanning strategies at various AM processes. The relationship of process-microstructure in additive manufacturing is successfully linked implicitly in our tool. We simulate the AM build process considering the parameters (laser intensity, laser speed, hatching space, powder layer thickness, orientation of build, etc.) involved during the build process in order to generate the microstructure of AM part which is the outcome of the build process. There is a good agreement between our prediction and the experimental data. The physics-based computational modeling encompassed within DCAM provides an efficient capability to fully explore the design space across geometries and materials, leading to components that represent the optimal combination of performance, reliability, and durability.
机译:众生已经开发了一种用于使用AM以评估其性能的组件的预测建模工具,严格考虑了控制疲劳裂缝的成核和繁殖的微观结构性质。该工具称为DigitalClone®用于添加剂制造(DCAM),是一种集成的计算材料工程(ICME)工具,包括裂缝启动和损坏进展的模型,具有高保真过程和微观结构建模方法。预测模型有三个主要模块:过程建模,微观结构建模和疲劳建模。使用实验优惠券测试验证了我们建模工具的可行性和验证。预测工具能够考虑温度和微观结构变化作为过程参数的功能和各种AM过程的扫描策略。添加剂制造中的过程微结构的关系在我们的工具中含有地隐含地连接。考虑在构建过程中涉及的参数(激光强度,激光速度,阴影区,粉末层厚度,构建等)模拟AM构建过程,以产生AM部分的微观结构构建过程。我们的预测与实验数据之间存在良好的一致性。在DCAM内包含的基于物理的计算建模提供了有效的能力,可以完全探索整个几何和材料的设计空间,导致代表性能,可靠性和耐用性的最佳组合的组件。

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