He Yuhang, Lu Dehong, Li Zhenming, Lu Donghui
Faculty of Materials and Science Engineering, Kunming University of Science and Technology, Kunming 650500, China.
Yunnan Fuyuan Jinfei Wheel Manufacturing Co., Ltd., Qujing 655000, China.
Materials (Basel). 2023 Sep 15;16(18):6223. doi: 10.3390/ma16186223.
The process parameters in the low-pressure casting of large-size aluminum alloy wheels are systematically optimized in this work using numerical casting simulation, response surface methodology (RSM), and genetic algorithm (NSGA-II). A nonlinear input-output relationship was established based on the Box-Behnken experimental design (BBD) for the crucial casting parameters (pouring temperature, mold temperature, holding pressure, holding time), and response indicators (defect volume fraction, spokes large plane mean secondary dendrite spacing (SDAS)), and a mathematical model was developed by regression analysis. The Isight 2017 Design Gateway and NSGA-II algorithm were used to increase the population and look for the best overall solution for the casting parameters. The significance and predictive power of the model were assessed using ANOVA. Casting numerical simulation was used to confirm the best option. To accomplish systematic optimization in its low-pressure casting process, the mold cooling process parameters were adjusted following the local solidification rate. The results showed that the mathematical model was reliable. The optimal solutions were a pouring temperature of 703 °C, mold temperature of 409 °C, holding pressure of 1086 mb, and holding time of 249 s. The mold cooling process was further optimized, and the sequence solidification of the optimal solution was realized under the optimized cooling process. Finally, the wheel hub was manufactured on a trial basis. The X-ray detection, mechanical property analysis, and metallographic observation showed that the wheel hub had no X-ray defects and its mechanical properties were well strengthened. The effectiveness of the system optimization process scheme was verified.
在这项工作中,利用数值铸造模拟、响应面法(RSM)和遗传算法(NSGA-II)对大型铝合金轮毂低压铸造过程参数进行了系统优化。基于Box-Behnken实验设计(BBD),针对关键铸造参数(浇注温度、模具温度、保压压力、保压时间)和响应指标(缺陷体积分数、辐条大平面平均二次枝晶间距(SDAS))建立了非线性输入输出关系,并通过回归分析建立了数学模型。利用Isight 2017设计网关和NSGA-II算法增加种群数量,寻找铸造参数的最佳整体解决方案。使用方差分析评估模型的显著性和预测能力。通过铸造数值模拟来确认最佳方案。为了在其低压铸造过程中实现系统优化,根据局部凝固速率调整模具冷却过程参数。结果表明,该数学模型可靠。最优解为浇注温度703℃、模具温度409℃、保压压力1086毫巴、保压时间249秒。进一步优化了模具冷却过程,并在优化后的冷却过程下实现了最优解的顺序凝固。最后,试制了轮毂。X射线检测、力学性能分析和金相观察表明,轮毂无X射线缺陷,力学性能得到良好强化。验证了系统优化工艺方案的有效性。