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Prediction of tool life in end milling of Ti-6Al-4V alloy using artificial neural network and multiple regression models

机译:基于人工神经网络和多元回归模型的Ti-6Al-4V合金立铣刀寿命预测

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摘要

Tool life of the cutting tools is considered as one of the factors which has effects on machining costs and the quality of machined parts. The topic of tool life prediction has been an interesting and important research topic attracting the attention of a wide number of researchers in this particular area. In terms of the suitable methods used in this research topic, it is stated that both statistical and artificial intelligence (AI) approaches can be employed to model tool life. For further justifying the capability of the ANN model in predicting tool life, the current study was based on conducting experimental work for collecting the experimental data. After carrying out the experiment, 17 data sets were collected and they were divided into two subsets; the first one for training and the second for testing. Since the data sets seemed to be lower than the number of data sets used in previous studies, we attempted to make verification of the ability of the ANN model in learning and adapting with low training and testing data. Diverse topologies accompanied with single and two hidden layers were created for modeling the tool life. For choosing the best and most effective network, the study adopted the mean square error function as criteria for the evaluation of the network selection. Thus, based on the data generated from the same experiment, a regression model (RM) was constructed employing the SPSS software. A comparison between the ANN model and RMs in terms of their accuracy was carried out and the findings revealed that the accuracy of the ANN was higher than that of the RM.
机译:切削刀具的刀具寿命被认为是影响加工成本和加工零件质量的因素之一。刀具寿命预测这一主题一直是一个有趣且重要的研究主题,吸引了该特定领域的众多研究人员的关注。就本研究主题中使用的合适方法而言,据指出,统计和人工智能(AI)方法均可用于建模工具寿命。为了进一步证明ANN模型预测工具寿命的能力,本研究基于进行实验工作以收集实验数据。进行实验后,收集了17个数据集,并将它们分为两个子集。第一个用于培训,第二个用于测试。由于数据集似乎比以前的研究中使用的数据集少,因此我们尝试验证ANN模型在学习和适应训练量和测试数据较少的能力。创建了带有单层和两个隐藏层的多种拓扑,以对工具寿命进行建模。为了选择最佳和最有效的网络,本研究采用均方误差函数作为评估网络选择的标准。因此,基于从同一实验生成的数据,使用SPSS软件构建了回归模型(RM)。对ANN模型和RM的准确性进行了比较,结果表明ANN的准确性高于RM。

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