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TOWARD INTELLIGENT ONLINE SCAN SEQUENCE OPTIMIZATION FOR UNIFORM TEMPERATURE DISTRIBUTION IN LPBF ADDITIVE MANUFACTURING

机译:对LPBF添加剂制造中均匀温度分布的智能在线扫描序列优化

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Laser powder bed fusion (LPBF) is an increasingly popular approach for additive manufacturing (AM) of metals. However, parts produced by LPBF are prone to residual stresses, deformations, and other defects linked to nonuniform temperature distribution during the process. Several works have highlighted the important role (laser) scanning strategies, including laser power, scan speed, scan pattern and scan sequence, play in achieving uniform temperature distribution in LPBF. However, scan sequence continues to be determined offline based on trial-and-error or heuristics, which are neither optimal nor generalizable. To address these weaknesses, we present a framework for intelligent online scan sequence optimization to achieve uniform temperature distribution in LPBF. The framework involves the use of physics-based models for online optimization of scan sequence, while data acquired from in-situ thermal sensors provide correction or calibration of the models. The proposed framework depends on having: (1) LPBF machines capable of adjusting scan sequence in real-time; and (2) accurate and computationally efficient models and optimization approaches that can be efficiently executed online. The first challenge is addressed via a commercially available open-architecture LPBF machine. As a preliminary step towards tackling the second challenge, an analytical model is explored for determining the optimal sequence for scanning patterns in LPBF. The model is found to be deficient but provides useful insights into future work in this direction.
机译:激光粉床融合(LPBF)是金属的添加剂制造(AM)越来越流行的方法。然而,通过LPBF产生的部件容易出现在该过程中与非均匀温度分布相关的残余应力,变形和其他缺陷。有几项工程突出了重要作用(激光)扫描策略,包括激光功率,扫描速度,扫描模式和扫描序列,在实现LPBF中实现均匀温度分布。但是,扫描序列继续基于试验和误差或启发式确定脱机,这既不是最佳的也不是更广泛的。为了解决这些弱点,我们为智能在线扫描序列优化提供了一个框架,以实现LPBF的均匀温度分布。该框架涉及使用基于物理的模型进行扫描序列的在线优化,而由原位热传感器获取的数据提供校正或校准模型。所提出的框架取决于具有:(1)LPBF机器,能够实时调整扫描序列; (2)可以在线有效执行的准确和计算的高效模型和优化方法。通过商用开放式架构LPBF机器解决了第一个挑战。作为解决第二次挑战的初步步骤,探讨了用于确定LPBF中扫描模式的最佳序列的分析模型。发现该模型有缺乏,但在这个方向上提供了对未来的工作的有用洞察力。

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