1. 武汉科技大学冶金装备及其控制教育部重点实验室,武汉,430081
2. 中国科学院合肥物质科学研究院智能机械研究所,常州,213164
纸质出版:2025
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段现银,彭可为,朱锟鹏,王齐胜,彭宽宝. 基于机器学习的选区激光熔化过程熔池类别预测[J]. 航空制造技术, 2025, 68(10): 58-67.
DUAN Xianyin, PENG Kewei, ZHU Kunpeng, WANG Qisheng, PENG Kuanbao. Prediction of Melt Pool Category in Selective Laser Melting Process Based on Machine Learning[J]. Aeronautical Manufacturing Technology, 2025, 68(10): 58-67.
段现银,彭可为,朱锟鹏,王齐胜,彭宽宝. 基于机器学习的选区激光熔化过程熔池类别预测[J]. 航空制造技术, 2025, 68(10): 58-67. DOI: 10.16080/j.issn1671-833x.2025.10.058.
DUAN Xianyin, PENG Kewei, ZHU Kunpeng, WANG Qisheng, PENG Kuanbao. Prediction of Melt Pool Category in Selective Laser Melting Process Based on Machine Learning[J]. Aeronautical Manufacturing Technology, 2025, 68(10): 58-67. DOI: 10.16080/j.issn1671-833x.2025.10.058.
选区激光熔化(Selective laser melting,SLM)作为最实用的金属激光增材制造技术之一,凭借在复杂薄壁件快速成形中的显著优势,在航空、航天和能源等领域中得到广泛应用。然而,成形过程中的一致性问题限制了构件质量的进一步提升,该问题与熔池尺寸和形状的不断变化导致的缺陷密切相关。为更有效地监控熔池动态变化,本文提出了一种基于高维熔池运动特征提取和长短期记忆(Long short-term memory,LSTM)模型的熔池熔化状态类别预测方法。首先,利用U-net模型从熔池图像中提取熔池形貌特征,计算熔池质心到边界的距离,并沿轮廓展开为高维矢量,以此来表征熔池运动特征。然后,应用k-means聚类算法对不同工艺参数下的熔池运动特征进行聚类分析,构建出4种熔池熔化状态类别,并通过LSTM 模型开展了熔化状态类别的时间序列预测。最后,以典型航空用高温合金材料Inconel 625的SLM过程为例,进行熔池状态类别预测验证。结果显示,预测准确率达到85.92%,本文为SLM过程的实时监控和质量控制提供了新的方法和思路。
As one of the most practical metal laser additive manufacturing technologies
selective laser melting (SLM) has been widely adopted in aviation
aerospace
and energy sectors due to its advantages in rapid forming of complex thin-walled components. However
the consistency issue during the forming process still limits further improvements in component quality
which is closely related to defects arising from the constant variations in melt pool size and shape. Therefore
to more effectively monitor the dynamic changes of the melt pool
a method for predicting melt pool melting state categories based on extraction of high-dimensional melt pool motion features and a long short-term memory (LSTM) model is proposed. Firstly
the U-net model is utilized to extract melt pool morphology features from melt pool images
and the distances from the melt pool centroid to its boundary are calculated and unfolded along the contour into highdimensional vectors to represent the motion features of the melt pool. Subsequently
the k-means clustering algorithm is applied to perform clustering analysis on the melt pool motion features under different process parameters
leading to the construction of four categories of melt pool melting states. Time series prediction of the melting state categories is then conducted using the LSTM model. Taking the SLM process of Inconel 625
a typical high-temperature alloy material for aviation
as an example
verification of melt pool state category prediction was conducted. The results demonstrate a prediction accuracy of 85.92%
providing a novel approach and insight for real-time monitoring and quality control in the SLM process.
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