可加工性
人工神经网络
机械加工
前角
材料科学
耙
淬火钢
机械工程
刀具
热的
氮化硼
计算机科学
复合材料
冶金
人工智能
工程类
气象学
物理
作者
Mirfad Tarić,Pavel Kováč,Bogdan Nedić,Dragan Rodić,Dušan Ješić
出处
期刊:Thermal Science
[Vinča Institute of Nuclear Sciences]
日期:2017-10-03
卷期号:22 (6 Part A): 2605-2614
被引量:3
标识
DOI:10.2298/tsci170606210t
摘要
In this study, cutting tools average temperature was investigated by using thermal imaging camera of FLIR E50-type. The cubic boron nitride inserts with zero and negative rake angles were taken as cutting tools and round bar of EN 90MnCrV8 hardened steel was used as the workpiece. Since the life of the cutting tool material strongly depends upon cutting temperature, it is important to predict heat generation in the tool with intelligent techniques. This paper proposes a method for the identification of cutting parameters using neural network. The model for determining the cutting temperature of hard steel, was trained and tested by using the experimental data. The test results showed that the proposed neural network model can be used successfully for machinability data selection. The effect on the cutting temperature of machining parameters and their interactions in machining were analyzed in detail and presented in this study.
科研通智能强力驱动
Strongly Powered by AbleSci AI