基于神经网络的Ti6Al4V合金切削力估计模型

R. Malagi, Rolvin Barreto, S. R. Chougula
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摘要

不断发展的技术推动了机器学习技术取代人类的智慧。机器学习模型能够像我们的大脑一样学习和复制。采用数据驱动模型对Ti6Al4V切削力进行预测。钛合金由于其优异的性能,通常用于高强度应用。这些特性使得钛合金的加工变得复杂。对最小润滑量下的切削力进行了求解。MQL是一个基于可持续制造的润滑系统。采用田口的方法获得不同参数组合的全因子设计。在此基础上,建立了一种基于训练模型的神经网络模型,用于预测切削力。该模型可以在最短的时间内找到最优参数,从而消除了实验计算的需要。
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Neural network based model for estimating cutting force during machining of Ti6Al4V alloy
The evolving technology has pushed machine learning techniques to replace human smartness. A machine learning model is capable of learning and replicating like our brain. This approach of data-driven model is implemented to predict the cutting force in machining of Ti6Al4V. Titanium alloys are commonly used in high strength applications due to their excellent properties. These same properties make the machining of the titanium alloy complicated. An attempt has been made for finding the cutting force under minimum quantity lubrication (MQL). MQL is a sustainable manufacturing-based lubrication system. Taguchi’s approach was used to attain a full factorial design for combination of different parameters. Accordingly, a neural network (NN) model was developed which was capable of predicting cutting forces based on the trained model. The proposed model could be implemented to find optimal parameters in shortest duration, thereby eliminating the need for experimental computations.
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