不同材料激光金属沉积中单轨包层质量的预测:基于机器学习方法的比较

IF 1.7 4区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Pascal Paulus, Yannick Ruppert, Michael Vielhaber, Juergen Griebsch
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引用次数: 0

摘要

粉末基激光金属沉积(LMD)提供了一种很有前途的增材制造工艺,因为有大量可用的材料用于包层或生成应用。在异种材料激光熔覆过程中,必须控制基体和添加剂在相互作用区内的混合,以确保安全的冶金熔接,同时避免导致不良相析出的关键化学成分。然而,为LMD工艺开发生成经验数据是非常具有挑战性和耗时的。在这种情况下,检查不同的机器学习模型,以确定它们是否可以与少量经验数据收敛。在这项工作中,使用均方误差(MSE)和平均绝对百分比误差(MAPE)比较了反向传播神经网络(BPNN)、长短期记忆(LSTM)和极端梯度增强(XGBoost)的预测精度。对每个模型进行超参数优化。所采用的材料是316L作为基体,VDM Alloy 780作为添加剂。使用的数据集由40个经验确定的值组成。输入参数为激光功率、进给速率和粉末质量流量。将高度、宽度、贫化度、铁量、煤层轮廓等质量特征定义为产出。结果,将预测结果与保留的验证数据进行比较,并将其描述为MSE和MAPE,以确定模型的预测精度。BPNN的预测精度为0.0072 MSE和4.37% MAPE, XGBoost的预测精度为0.0084 MSE和6.34% MAPE。LSTM预测最准确,MSE为0.0053,MAPE为3.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of single track clad quality in laser metal deposition using dissimilar materials: Comparison of machine learning-based approaches
Powder-based laser metal deposition (LMD) offers a promising additive manufacturing process, given the large number of available materials for cladding or generative applications. In laser cladding of dissimilar materials, it is necessary to control the mixing of substrate and additive in the interaction zone to ensure safe metallurgical bonding while avoiding critical chemical compositions that lead to undesired phase precipitation. However, the generation of empirical data for LMD process development is very challenging and time-consuming. In this context, different machine learning models are examined to identify whether they can converge with a small amount of empirical data. In this work, the prediction accuracy of back propagation neural network (BPNN), long short-term memory (LSTM), and extreme gradient boosting (XGBoost) was compared using mean squared error (MSE) and mean absolute percentage error (MAPE). A hyperparameter optimization was performed for each model. The materials used are 316L as the substrate and VDM Alloy 780 as the additive. The dataset used consists of 40 empirically determined values. The input parameters are laser power, feed rate, and powder mass flow rate. The quality characteristics of height, width, dilution, Fe-amount, and seam contour are defined as outputs. As a result, the predictions were compared with retained validation data and described as MSE and MAPE to determine the prediction accuracy for the models. BPNN achieved a prediction accuracy of 0.0072 MSE and 4.37% MAPE and XGBoost of 0.0084 MSE and 6.34% MAPE. The most accurate prediction was achieved by LSTM with 0.0053 MSE and 3.75% MAPE.
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来源期刊
CiteScore
3.60
自引率
9.50%
发文量
125
审稿时长
>12 weeks
期刊介绍: The Journal of Laser Applications (JLA) is the scientific platform of the Laser Institute of America (LIA) and is published in cooperation with AIP Publishing. The high-quality articles cover a broad range from fundamental and applied research and development to industrial applications. Therefore, JLA is a reflection of the state-of-R&D in photonic production, sensing and measurement as well as Laser safety. The following international and well known first-class scientists serve as allocated Editors in 9 new categories: High Precision Materials Processing with Ultrafast Lasers Laser Additive Manufacturing High Power Materials Processing with High Brightness Lasers Emerging Applications of Laser Technologies in High-performance/Multi-function Materials and Structures Surface Modification Lasers in Nanomanufacturing / Nanophotonics & Thin Film Technology Spectroscopy / Imaging / Diagnostics / Measurements Laser Systems and Markets Medical Applications & Safety Thermal Transportation Nanomaterials and Nanoprocessing Laser applications in Microelectronics.
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