Prediction of Melt Pool Geometry Using Deep Neural Networks

F. Milaat, Zhuo Yang, H. Ko, Albert T. Jones
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引用次数: 4

Abstract

Selective laser melting (SLM) is modernizing the production of highly complex metal parts across the manufacturing industry. However, achieving material homogeneity and controlling thermal deformation remain major challenges for metal-based, additive manufacturing. Therefore, adequate control systems are needed to monitor build processes, and ensure part quality throughout production. Traditionally, control designs relied on physics-based knowledge in analyzing, characterizing, and modeling complex, nonstationary patterns. Recent advancements in machine learning techniques harness the abundance of data to discover effective control designs. In this paper, we investigate the efficacy of a data-driven approach towards in-situ modeling of melt-pool geometry. Specifically, we propose a new methodology that uses a deep neural network architecture to predict melt pool geometries with linear regression models, which manifest during in-situ processes. Experimental results show that our deep neural network model with multiple input features produced 84% goodness of fit score, outperforming the model with a single feature that scored 37% for the given dataset, and the monitored regression models. These outcomes promote further investigation into new and efficient ways for acquiring real-time data from in-situ processes. Our contribution complements the way we understand properties of in-situ data, and predict patterns of melt pools, based on artificial cognition.
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利用深度神经网络预测熔池几何形状
选择性激光熔化(SLM)正在使整个制造业高度复杂的金属零件的生产现代化。然而,实现材料均匀性和控制热变形仍然是金属基增材制造的主要挑战。因此,需要适当的控制系统来监控制造过程,并确保整个生产过程中的零件质量。传统上,控制设计依赖于基于物理的知识来分析、表征和建模复杂的、非平稳的模式。机器学习技术的最新进展利用丰富的数据来发现有效的控制设计。在本文中,我们研究了数据驱动方法对熔池几何形状原位建模的有效性。具体而言,我们提出了一种新的方法,该方法使用深度神经网络架构用线性回归模型预测熔池几何形状,这些几何形状在原位过程中表现出来。实验结果表明,我们的具有多个输入特征的深度神经网络模型产生了84%的拟合优度得分,优于具有单个特征的模型(给定数据集的优度得分为37%)和监测回归模型。这些结果促进了对从原位过程中获取实时数据的新的有效方法的进一步研究。我们的贡献补充了我们理解原位数据属性的方式,并基于人工认知预测熔池的模式。
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