Abbas Adel T, Sharma Neeraj, Anwar Saqib, Luqman Monis, Tomaz Italo, Hegab Hussien
Mechanical Engineering Department, Engineering College, King Saud University, Riyadh 11421, P.O. Box 800, Saudi Arabia.
Department of Mechanical Engineering, Maharishi Markandeshwar (Deemed to be University), Mullana, Ambala, Haryana 133207, India.
Materials (Basel). 2020 Mar 2;13(5):1104. doi: 10.3390/ma13051104.
Titanium alloys are widely used in various applications including biomedicine, aerospace, marine, energy, and chemical industries because of their superior characteristics such as high hot strength and hardness, low density, and superior fracture toughness and corrosion resistance. However, there are different challenges when machining titanium alloys because of the high heat generated during cutting processes which adversely affects the product quality and process performance in general. Thus, optimization of the machining conditions while machining such alloys is necessary. In this work, an experimental investigation into the influence of different cutting parameters (i.e., depth of cut, cutting length, feed rate, and cutting speed) on surface roughness (Rz), flank wear (VB), power consumption as well as the material removal rate (MRR) during high-speed turning of Ti-6Al-4V alloy is presented and discussed. In addition, a backpropagation neural network (BPNN) along with the technique for order of preference by similarity to ideal solution (TOPSIS)-fuzzy integrated approach was employed to model and optimize the overall cutting performance. It should be stated that the predicted values for all machining outputs demonstrated excellent agreement with the experimental values at the selected optimal solution. In addition, the selected optimal solution did not provide the best performance for each measured output, but it achieved a balance among all studied responses.
钛合金因其具有诸如高热强度和硬度、低密度以及卓越的断裂韧性和耐腐蚀性等优异特性,而被广泛应用于包括生物医学、航空航天、海洋、能源和化学工业等各个领域。然而,由于在切削过程中会产生高热量,这通常会对产品质量和加工性能产生不利影响,所以在加工钛合金时会面临不同的挑战。因此,在加工此类合金时优化加工条件是必要的。在这项工作中,我们对不同切削参数(即切削深度、切削长度、进给速度和切削速度)对Ti-6Al-4V合金高速车削过程中的表面粗糙度(Rz)、后刀面磨损(VB)、功耗以及材料去除率(MRR)的影响进行了实验研究并展开讨论。此外,采用了反向传播神经网络(BPNN)以及与理想解相似的偏好排序技术(TOPSIS)-模糊集成方法来对整体切削性能进行建模和优化。应当指出的是,在选定的最优解处,所有加工输出的预测值与实验值显示出极好的一致性。此外,选定的最优解并非为每个测量输出都提供了最佳性能,但它在所有研究的响应之间实现了平衡。