Altuğ Mehmet, Söyler Hasan
Malatya Organized Industrial Zone (OIZ) Vocational High School, Inonu University, Malatya, Turkey.
Faculty of Economics and Administrative Sciences Econometrics Department, Inonu University, Malatya, Turkey.
Sci Rep. 2023 Aug 29;13(1):14100. doi: 10.1038/s41598-023-40710-8.
In this study, different process types were processed on Hardox 400 steel. These processes were carried out with five different samples as heat treatment, cold forging, plasma welding, mig-mag welding and commercial sample. The aim here is to determine the changes in properties such as microstructure, microhardness and conductivity that occur in the structure of hardox 400 steel when exposed to different processes. Then, the samples affected by these changes were processed in WEDM with the box-behnken experimental design. Ra, Kerf, MRR and WWR results were analyzed in Minitab 21 program. In the continuation of the study, using these data, a prediction models were created for Ra, Kerf, MRR and WWR with Deep Learning (DL) and Extreme Learning Machine (ELM). Anaconda program Python 3.9 version was used as a program in the optimization study. In addition, a linear regression models are presented to comparison the results. According to the results the lowest Ra values were obtained in heat-treated, cold forged, master sample, plasma welded and mig-mag welded processes, respectively. The best Ra (surface roughness) value of 1.92 µm was obtained in the heat treated sample and in the experiment with a time off of 250 µs. Model F value in ANOVA analysis for Ra is 86.04. Model for Ra r value was obtained as 0.9534. The lowest kerf values were obtained in heat-treated, cold forged, master sample, plasma welded and mig-mag welded processes, respectively. The best kerf value of 200 µ was obtained in the heat treated sample and in the experiment with a time off of 200 µs. Model F value in ANOVA analysis for Kerf is 90.21. Model for Kerf r value was obtained as 0.9555. Contrary to Ra and Kerf, it is desirable to have high MRR values. On average, the highest MRR values were obtained in mig-mag welded, plasma welded, cold forged, master sample and heat-treated processes, respectively. The best mrr value of 200 g min was obtained in the mig-mag welded sample and in the experiment with a time off of 300 µs. Model for MRR r value was obtained as 0.9563. The lowest WWR values were obtained in heat-treated, cold forged, master sample, plasma welded and mig-mag welded processes, respectively. The best wwr value of 0.098 g was obtained in the heat treated sample and in the experiment with a time off of 200 µs. Model F value in ANOVA analysis for WWR is 92.12. Model for wwr r value was obtained as 0.09561. In the analysis made with artificial intelligence systems; The best test MSE value for Ra was obtained as 0.012 in DL and the r squared value 0.9274. The best test MSE value for kerf was obtained as 248.28 in ELM and r squared value 0.8676. The best MSE value for MRR was obtained as 0.000101 in DL and the r squared value 0.9444. The best MSE value for WWR was obtained as 0.000037 in DL and the r squared value 0.9184. As a result, it was concluded that different optimization methods can be applied according to different outputs (Ra, Kerf, MRR, WWR). It also shows that artificial intelligence-based optimization methods give successful estimation results about Ra, Kerf, MRR, WWR values. According to these results, ideal DL and ELM models have been presented for future studies.
在本研究中,对Hardox 400钢进行了不同的加工工艺。这些工艺以五个不同的样本进行,分别是热处理、冷锻、等离子焊接、熔化极气体保护焊和商业样本。这里的目的是确定Hardox 400钢在经受不同工艺时,其组织结构中发生的诸如微观结构、显微硬度和电导率等性能变化。然后,采用Box-Behnken实验设计对受这些变化影响的样本进行电火花线切割加工。在Minitab 21软件中分析了表面粗糙度(Ra)、切口宽度(Kerf)、材料去除率(MRR)和加工速度比(WWR)的结果。在研究的后续阶段,利用这些数据,通过深度学习(DL)和极限学习机(ELM)为Ra、Kerf、MRR和WWR创建了预测模型。在优化研究中,使用了Anaconda软件的Python 3.9版本。此外,还给出了线性回归模型以比较结果。根据结果,分别在热处理、冷锻、标准样本、等离子焊接和熔化极气体保护焊工艺中获得了最低的Ra值。在热处理样本以及放电时间为250微秒的实验中获得了最佳的Ra(表面粗糙度)值1.92微米。Ra的方差分析中的模型F值为86.04。Ra的模型r值为0.9534。分别在热处理、冷锻、标准样本、等离子焊接和熔化极气体保护焊工艺中获得了最低的切口宽度值。在热处理样本以及放电时间为200微秒的实验中获得了最佳的切口宽度值200微米。切口宽度的方差分析中的模型F值为90.21。切口宽度的模型r值为0.9555。与Ra和切口宽度相反,材料去除率值越高越好。平均而言,分别在熔化极气体保护焊、等离子焊接、冷锻、标准样本和热处理工艺中获得了最高的材料去除率值。在熔化极气体保护焊样本以及放电时间为300微秒的实验中获得了最佳的材料去除率值200克/分钟。材料去除率的模型r值为0.9563。分别在热处理、冷锻、标准样本、等离子焊接和熔化极气体保护焊工艺中获得了最低的加工速度比值。在热处理样本以及放电时间为200微秒的实验中获得了最佳的加工速度比值0.098克。加工速度比的方差分析中的模型F值为92.12。加工速度比的模型r值为0.09561。在用人工智能系统进行的分析中;DL中Ra的最佳测试均方误差值为0.012,r平方值为0.9274。ELM中切口宽度的最佳测试均方误差值为248.28,r平方值为0.8676。DL中材料去除率的最佳均方误差值为0.000101,r平方值为0.9444。DL中加工速度比的最佳均方误差值为0.000037,r平方值为0.9184。结果得出,可以根据不同的输出(Ra、切口宽度、材料去除率、加工速度比)应用不同的优化方法。这也表明基于人工智能的优化方法能够对Ra、切口宽度、材料去除率、加工速度比的值给出成功的估计结果。根据这些结果,为未来的研究给出了理想的DL和ELM模型。