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首页> 外文期刊>Bulletin of the Polish Academy of Sciences. Technical Sciences >Artificial neural network based tool wear estimation on dry hard turning processes of AISI4140 steel using coated carbide tool
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Artificial neural network based tool wear estimation on dry hard turning processes of AISI4140 steel using coated carbide tool

机译:基于人工神经网络的带涂层硬质合金刀具对AISI4140钢干硬车削过程的刀具磨损估计

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摘要

Nowadays, finishing operation in hardened steel parts which have wide industrial applications is done by hard turning. Cubic boron nitride (CBN) inserts, which are expensive, are used for hard turning. The cheaper coated carbide tool is seen as a substitute for CBN inserts in the hardness range (45–55 HRC). However, tool wear in a coated carbide tool during hard turning is a significant factor that influences the tolerance of machined surface. An online tool wear estimation system is essential for maintaining the surface quality and minimizing the manufacturing cost. In this investigation, the cutting tool wear estimation using artificial neural network (ANN) is proposed. AISI4140 steel hardened to 47 HRC is used as a work piece and a coated carbide tool is the cutting tool. Experimentation is based on full factorial design (FFD) as per design of experiments. The variations in cutting forces and vibrations are measured during the experimentation. Based on the process parameters and measured parameters an ANN-based tool wear estimator is developed. The wear outputs from the ANN model are then tested. It was observed that as the model using ANN provided quite satisfactory results, and that it can be used for online tool wear estimation.
机译:如今,在具有广泛工业应用的淬硬钢零件中,精加工操作是通过硬车削完成的。昂贵的立方氮化硼(CBN)刀片用于硬车削。廉价的涂层硬质合金刀具被视为可替代硬度范围(45–55 HRC)的CBN刀片。但是,硬质车削时带涂层硬质合金刀具的刀具磨损是影响机加工表面公差的重要因素。在线工具磨损估计系统对于保持表面质量和最大程度地降低制造成本至关重要。在这项研究中,提出了使用人工神经网络(ANN)进行刀具磨损估计的方法。 AISI4140钢经淬火至47 HRC用作工件,涂层硬质合金刀具为切削刀具。根据实验设计,实验基于全因子设计(FFD)。在实验过程中测量切削力和振动的变化。基于过程参数和测量参数,开发了基于ANN的刀具磨损估算器。然后测试来自ANN模型的磨损输出。据观察,由于使用ANN的模型提供了非常令人满意的结果,并且可以将其用于在线工具磨损估计。

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