1. 上海交通大学材料科学与工程学院机器人焊接智能化实验室,上海,200240
2. 上海交通大学内蒙古研究院,呼和浩特,010010
3. 洛阳船舶材料研究所,洛阳,471000
纸质出版:2025
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张豪, 许燕玲, 王杏华, 等. 基于沙猫群算法和集成学习的可解释数据驱动铝合金电弧增材成形尺寸预测模型研究[J]. 航空制造技术, 2025,68(20).
ZHANG Hao, XU Yanling, WANG Xinghua, et al. Interpretable Data-Driven Dimensional Prediction Model for Aluminum Alloys Wire Arc Additive Manufacturing Based on Sand Cat Swarm Optimization and Ensemble Learning[J]. Aeronautical Manufacturing Technology, 2025, 68(20).
张豪, 许燕玲, 王杏华, 等. 基于沙猫群算法和集成学习的可解释数据驱动铝合金电弧增材成形尺寸预测模型研究[J]. 航空制造技术, 2025,68(20). DOI: 10.16080/j.issn1671-833x.2025.20.068.
ZHANG Hao, XU Yanling, WANG Xinghua, et al. Interpretable Data-Driven Dimensional Prediction Model for Aluminum Alloys Wire Arc Additive Manufacturing Based on Sand Cat Swarm Optimization and Ensemble Learning[J]. Aeronautical Manufacturing Technology, 2025, 68(20). DOI: 10.16080/j.issn1671-833x.2025.20.068.
铝合金电弧增材制造是一个多参数耦合的复杂物理系统,其成形尺寸的精确预测与控制受到多种工艺参数影响。针对现有预测方法在参数耦合效应建模不足、预测精度有限及模型解释性欠缺等问题,提出一种基于数据增强策略和集成学习方法的可解释数据驱动模型,以实现铝合金成形过程中宽度和层高的高精度预测。首先,利用数据增强技术扩充训练数据集,增强模型泛化能力;其次,基于五折交叉验证方法训练多个模型,评估出性能最优的3个基学习器;然后,通过SCSO算法优化基学习器的权重分配,构建高鲁棒性集成学习模型;最后,采用SHAP方法量化并解释工艺参数对成形过程的影响。试验结果表明,基于SCSO优化的集成学习模型在铝合金成形尺寸预测精度和解释性方面显著优于单一模型和传统集成学习方法(预测宽度和层高时RMSE 为0.3518和0.0743,MAPE为0.0229和0.0364)。该研究为铝合金WAAM 的工艺参数优化和成形质量控制提供了理论依据,具有较好的实用性和工程应用价值。
Aluminum alloy WAAM is a complex physical system with multi-parameter coupling
and the accurate prediction and control of its forming dimensions are affected by various process parameters. Aiming at the problems of insufficient modeling of parameter coupling effect
limited prediction accuracy and lack of model interpretability in existing prediction methods
this study proposes an interpretable data-driven model based on data augmentation strategy and ensemble learning method to achieve high-precision prediction of width and layer height in aluminum alloy forming process. First
the training dataset is augmented by data augmentation techniques to enhance the generalization ability of the model. Secondly
multiple models are trained based on the five-fold cross-validation method
and three base learners with the best performance are evaluated. Then
the SCSO algorithm is used to optimize the weight allocation of the basis learner
and a highly robust ensemble learning model is constructed. Finally
the SHAP method is used to quantify and explain the effects of process parameters on the forming process. The experimental results show that the ensemble learning model based on SCSO optimization significantly outperforms the single model and the traditional ensemble learning method in the prediction accuracy and interpretability of aluminum alloy forming dimensions (RMSE is 0.3518 and 0.0743
and MAPE is 0.0229 and 0.0364 when predicting width and layer height). This study provides a heoretical basis for process parameter optimization and forming quality control of aluminum alloy WAAM
with good practicality and engineering application value.
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