基于邻域的熔池预测与控制神经网络

Yaqi Zhang, V. Shapiro, P. Witherell
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引用次数: 2

摘要

粉末床熔融工艺是最流行的增材制造工艺之一,它是由一个移动的热源驱动的,该热源熔化金属以制造零件。这个移动的热源,以及随后形成和移动的熔池,在决定打印部件的几何和机械性能方面起着重要的作用。在制造过程中控制熔池的能力是改进质量控制和优化制造参数的一种追求机制。因此,基于工艺输入(即激光功率、扫描速度、光斑尺寸和扫描路径)预测熔池尺寸的高效模型为改进工艺控制提供了途径。为了改进过程控制,使用基于邻域的神经网络建立了数据驱动的熔池预测模型,并使用美国国家标准与技术研究所(NIST)的实验数据进行了训练。该模型考虑了加工参数和激光扫描路径的影响。扫描路径信息通过局部性利用神经网络的两个新的邻域特征进行编码。神经网络用于生成代理模型,我们演示了如何通过使用几种集成方法进一步改进生成的代理模型的性能。然后,我们演示了如何将训练好的代理模型用作开发新型激光功率设计算法的前向求解器。由此产生的激光功率计划被设计为在任何给定的扫描模式下保持熔池大小尽可能恒定。通过数值实验对该算法进行了实现和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neighborhood-Based Neural Network for Melt Pool Prediction and Control
One of the most prevalent additive manufacturing processes, the powder bed fusion process, is driven by a moving heat source that melts metals to build a part. This moving heat source, and the subsequent formation and moving of a melt pool, plays an important role in determining both the geometric and mechanical properties of the printed components. The ability to control the melt pool during the build process is a sought after mechanism for improving quality control and optimizing manufacturing parameters. For this reason, efficient models that can predict melt pool size based on the process input (i.e., laser power, scan speed, spot size and scan path) offer a path to improved process control. Towards improved process control, a data-driven melt pool prediction model is built with a neighborhood-based neural network and trained using experimental data from the National Institute of Standards and Technology (NIST). The model considers the influence of both manufacturing parameters and laser scan paths. The scan path information is encoded using two novel neighborhood features of the neural network through locality. The neural network is used to generate a surrogate model, and we demonstrate how the performance of the resulting surrogate model can be further improved by using several ensemble methods. We then demonstrate how the trained surrogate model can be used as a forward solver for developing novel laser power design algorithms. The resulting laser power plan is designed to keep melt pool size as constant as possible for any given scan pattern. The algorithm is implemented and validated with numerical experiments.
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