微钻过程中推力和垂直振动的智能预测模型

Gerardo Beruvides, F. Castaño, R. Haber, Ramón Quiza Sardiñas, M. R. Santana
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引用次数: 2

摘要

本文建立了五种常用合金(钛基、钨基、铝基和invar)微钻过程中推力和垂直振动的模型。采用轻钻法进行加工,考虑了钻头直径、切削速度、进给速度、一步进给长度和总钻进长度等5个参数对推力特性的影响。该模型还考虑了工件材料的一些重要力学和热性能。我们尝试了两种不同的模型:第一种是基于人工神经网络的模型,第二种是基于模糊推理系统的模型。两种方法的结果相互比较并与多元回归模型进行比较。该神经模型不仅具有较好的拟合优度,而且具有较高的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Models for Predicting the Thrust Force and Perpendicular Vibrations in Microdrilling Processes
This paper presents the modeling of thrust force and perpendicular vibrations in micro drilling processes of five commonly used alloys (titanium-based, tungsten-based, aluminum-based and invar). The process was carried out by peck drilling and the influence of five parameters (drill diameter, cutting speed, feed rate, one-step feed length and total drilling length) on the behavior of the thrust force was considered. Some important mechanical and thermal properties of the work piece material were also considered in the model. Two different models were tried: the first one based on artificial neural networks and the second one based on fuzzy inference systems. Outcomes of both approaches were compared to each other and to a multiple regression model. The neural model shows not only a better goodness-of-fit but also a higher generalization capability.
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