Monitoring of the Average Cutting Forces from Controller Signals using Artificial Neural Networks

Q2 Engineering Journal of Machine Engineering Pub Date : 2022-10-07 DOI:10.36897/jme/154801
Nevzat Bircan Bugdayci, K. Wegener, M. Postel
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Abstract

A new approach is presented to monitor the average cutting forces that are used for the calculation of the average cutting coefficients through neural networks using available controller signals. The cutting forces and the relevant controller signals are measured using a dynamometer and commercially available software supplied by the controller manufacturer in the calibration stage. Then a neural network is trained, which treats these controller signals as inputs and the cutting forces as the outputs. Finally, the average cutting forces for a new milling operation are predicted using the trained neural network without using a dynamometer. The proposed approach is validated using an experimental study, where a good match between predictions and measured forces is achieved. It is also shown that cutting coefficients can be calibrated and stability lobe diagrams can be generated using this method.
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利用人工神经网络从控制器信号中监测平均切削力
提出了一种新的方法来监测平均切削力,该方法通过使用可用控制器信号的神经网络来计算平均切削系数。在校准阶段,使用测功机和控制器制造商提供的商用软件测量切削力和相关控制器信号。然后训练一个神经网络,将这些控制器信号作为输入,将切削力作为输出。最后,在不使用测功机的情况下,使用训练的神经网络预测新铣削操作的平均切削力。使用实验研究验证了所提出的方法,在实验研究中,预测和测量力之间实现了良好的匹配。还表明,使用该方法可以校准切割系数,并可以生成稳定波瓣图。
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来源期刊
Journal of Machine Engineering
Journal of Machine Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.70
自引率
0.00%
发文量
36
审稿时长
25 weeks
期刊介绍: ournal of Machine Engineering is a scientific journal devoted to current issues of design and manufacturing - aided by innovative computer techniques and state-of-the-art computer systems - of products which meet the demands of the current global market. It favours solutions harmonizing with the up-to-date manufacturing strategies, the quality requirements and the needs of design, planning, scheduling and production process management. The Journal'' s subject matter also covers the design and operation of high efficient, precision, process machines. The Journal is a continuator of Machine Engineering Publisher for five years. The Journal appears quarterly, with a circulation of 100 copies, with each issue devoted entirely to a different topic. The papers are carefully selected and reviewed by distinguished world famous scientists and practitioners. The authors of the publications are eminent specialists from all over the world and Poland. Journal of Machine Engineering provides the best assistance to factories and universities. It enables factories to solve their difficult problems and manufacture good products at a low cost and fast rate. It enables educators to update their teaching and scientists to deepen their knowledge and pursue their research in the right direction.
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