Gajera Hiren, Djavanroodi Faramarz, Kumari Soni, Abhishek Kumar, Bandhu Din, Saxena Kuldeep K, Ebrahimi Mahmoud, Prakash Chander, Buddhi Dharam
Department of Mechanical Engineering, L D College of Engineering, Ahmedabad 380015, India.
Department of Mechanical Engineering, College of Engineering, Prince Mohammad Bin Fahd University, Al Khobar 31952, Saudi Arabia.
Materials (Basel). 2022 Nov 15;15(22):8092. doi: 10.3390/ma15228092.
In this study, the hardness and surface roughness of selective laser-melted parts have been evaluated by considering a wide variety of input parameters. The Invar-36 has been considered a workpiece material that is mainly used in the aerospace industry for making parts as well as widely used in bimetallic thermostats. It is the mechanical properties and metallurgical properties of parts that drive the final product's quality in today's competitive marketplace. The study aims to examine how laser power, scanning speed, and orientation influence fabricated specimens. Using ANOVA, the established models were tested and the parameters were evaluated for their significance in predicting response. In the next step, the fuzzy-based JAYA algorithm has been implemented to determine which parameter is optimal in the proposed study. In addition, the optimal parametric combination obtained by the JAYA algorithm was compared with the optimal parametric combination obtained by TLBO and genetic algorithm (GA) to establish the effectiveness of the JAYA algorithm. Based on the results, an orientation of 90°, 136 KW of laser power, and 650 mm/s scanning speed were found to be the best combination of process parameters for generating the desired hardness and roughness for the Invar-36 material.
在本研究中,通过考虑多种输入参数,对选择性激光熔化零件的硬度和表面粗糙度进行了评估。因瓦合金36被视为一种工件材料,主要用于航空航天工业制造零件,也广泛应用于双金属恒温器。在当今竞争激烈的市场中,零件的机械性能和冶金性能决定了最终产品的质量。该研究旨在考察激光功率、扫描速度和方向如何影响加工后的试样。使用方差分析对建立的模型进行了测试,并评估了参数在预测响应方面的显著性。下一步,实施了基于模糊的JAYA算法,以确定在所提出的研究中哪个参数是最优的。此外,将JAYA算法获得的最优参数组合与通过TLBO和遗传算法(GA)获得的最优参数组合进行比较,以确定JAYA算法的有效性。根据结果,发现90°的方向、136千瓦的激光功率和650毫米/秒的扫描速度是为因瓦合金36材料生成所需硬度和粗糙度的最佳工艺参数组合。