A Comparative Study on Prediction of Cutting Force using Artificial Neural Network and Genetic Algorithm during Machining of Ti-6Al-4V

Rolvin Barreto, Malagi R R, Chougula S R
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Abstract

The purpose of this comparative study is to improve the predictive accuracy of the cutting force during the turning of Ti-6Al-4V on a lathe machine. By optimizing the machining process parameters such as cutting speed, feed rate, and depth of cut, the cutting force in the machining process can be improved significantly. Cutting force is one of the crucial characteristics that must be monitored during the cutting process in order to enhance tool life and the surface finish of the workpiece. This paper is based on the experimental dataset of cutting forces collected during the turning of titanium alloy under the Minimum Quantity Lubrication (MQL) condition. To predict the cutting forces, two machine learning techniques are explored. Firstly, a black-box model called an Artificial Neural Network (ANN) is proposed to predict cutting force. Using the Levenberg-Marquardt algorithm, a two-layered feedforward neural network is built in MATLAB to predict cutting force. The second model to be implemented was the Genetic Algorithm (GA), a white-box model. GA is an optimization technique which is based on Darwinian theories. It is a probabilistic method of searching, unlike most other search algorithms, which require definite inputs. Using symbolic regression in HeuristicLab, a GA model is developed to estimate cutting force. The anticipated values of cutting forces for both models were compared. Since the ANN model had fewer errors, it was ascertained that the particular model is preferable for machining process optimization.
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人工神经网络与遗传算法在Ti-6Al-4V切削力预测中的对比研究
本对比研究的目的是提高在车床上车削Ti-6Al-4V时切削力的预测精度。通过优化切削速度、进给速度、切削深度等加工工艺参数,可以显著提高加工过程中的切削力。为了提高刀具寿命和工件表面光洁度,切削力是切削过程中必须监测的关键特性之一。本文基于最小量润滑条件下钛合金车削过程中切削力的实验数据集。为了预测切削力,探索了两种机器学习技术。首先,提出了一种称为人工神经网络(ANN)的黑盒模型来预测切削力;利用Levenberg-Marquardt算法,在MATLAB中构建了一个两层前馈神经网络来预测切削力。第二个要实现的模型是遗传算法(GA),一个白盒模型。遗传算法是一种基于达尔文理论的优化技术。它是一种概率搜索方法,不像大多数其他搜索算法,需要明确的输入。利用HeuristicLab中的符号回归,建立了一种估计切削力的遗传模型。比较了两种模型的切削力期望值。由于人工神经网络模型误差较小,确定了特定模型更适合加工工艺优化。
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来源期刊
Academic Journal of Manufacturing Engineering
Academic Journal of Manufacturing Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
0.40
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