Feng Jingpeng, Zhan Lihua, Ma Bolin, Zhou Hao, Xiong Bang, Guo Jinzhan, Xia Yunni, Hui Shengmeng
State Key Laboratory of Precision Manufacturing for Extreme Service Performance, Central South University, Changsha 410083, China.
Light Alloys Research Institute, Central South University, Changsha 410083, China.
Polymers (Basel). 2023 Oct 14;15(20):4085. doi: 10.3390/polym15204085.
Conventionally, the optimization of bonding process parameters requires multi-parameter repetitive experiments, the processing of data, and the characterization of complex relationships between process parameters, and performance must be achieved with the help of new technologies. This work focused on improving metal-metal bonding performance by applying SLJ experiments, finite element models (FEMs), and the Xgboost machine learning (ML) algorithm. The importance ranking of process parameters on tensile-shear strength (TSS) was evaluated with the interpretation toolkit SHAP (Shapley additive explanations) and it optimized reasonable bonding process parameters. The validity of the FEM was verified using SLJ experiments. The Xgboost models with 70 runs can achieve better prediction results. According to the degree of influence, the process parameters affecting the TSS ranked from high to low are roughness, adhesive layer thickness, and lap length, and the corresponding optimized values were 0.89 μm, 0.1 mm, and 27 mm, respectively. The experimentally measured TSS values increased by 14% from the optimized process parameters via the Xgboost model. ML methods provide a more accurate and intuitive understanding of process parameters on TSS.
传统上,键合工艺参数的优化需要进行多参数重复实验、数据处理以及表征工艺参数之间的复杂关系,并且必须借助新技术来实现性能提升。这项工作聚焦于通过应用表面激光喷丸(SLJ)实验、有限元模型(FEM)和Xgboost机器学习(ML)算法来提高金属-金属键合性能。使用SHAP(Shapley加性解释)解释工具包评估了工艺参数对拉伸剪切强度(TSS)的重要性排名,并优化了合理的键合工艺参数。通过SLJ实验验证了有限元模型的有效性。进行70次运行的Xgboost模型能够取得更好的预测结果。根据影响程度,影响TSS的工艺参数从高到低依次为粗糙度、粘结层厚度和搭接长度,相应的优化值分别为0.89μm、0.1mm和27mm。通过Xgboost模型,实验测得的TSS值相对于优化后的工艺参数提高了14%。机器学习方法能够更准确、直观地理解工艺参数对TSS的影响。