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首页> 外文期刊>Applied Soft Computing >A PNN self-learning tool breakage detection system in end milling operations
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A PNN self-learning tool breakage detection system in end milling operations

机译:立铣操作中的PNN自学习工具破损检测系统

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摘要

With the advance of technology over the years, computer numerical control (CNC) has been utilized in end milling operations in many industries such as the automotive and aerospace industry. As a result, the need for end milling operations has increased, and the enhancement of CNC end milling technology has also become an issue for automation industry. There have been a considerable number of researches on the capability of CNC machines to detect the tool condition. A traditional tool detection system lacks the ability of self-learning. Once the decision-making system has been built, it cannot be modified. If error detection occurs during the detection process, the system cannot be adjusted. To overcome these shortcomings, a probabilistic neural network (PNN) approach for decision-making analysis of a tool breakage detection system is proposed in this study. The fast learning characteristic of a PNN is utilized to develop a real-time high accurate self-learning tool breakage detection system. Once an error occurs during the machining process, the new error data set is sent back to the PNN decision-making model to re-train the network structure, and a new self-learning tool breakage detection system is reconstructed. Through a self-learning process, the result shows the system can 100% monitor the tool condition. The detection capability of this adjustable tool detection system is enhanced as sampling data increases and eventually the goal of a smart CNC machine is achieved. (C) 2015 Elsevier B.V. All rights reserved.
机译:多年来,随着技术的进步,计算机数控(CNC)已被用于许多行业(例如汽车和航空航天行业)的立铣刀操作中。结果,对端铣削操作的需求增加了,而CNC端铣削技术的增强也已成为自动化行业的问题。数控机床检测刀具状态的能力已有大量研究。传统的刀具检测系统缺乏自我学习的能力。一旦建立了决策系统,就无法对其进行修改。如果在检测过程中发生错误检测,则无法调整系统。为了克服这些缺点,本研究提出了一种用于刀具破损检测系统决策分析的概率神经网络(PNN)方法。利用PNN的快速学习特性来开发实时,高精度的自学习工具破损检测系统。一旦在加工过程中发生错误,新的错误数据集将被发送回PNN决策模型以重新训练网络结构,并重建新的自学习工具破损检测系统。通过自学习过程,结果表明系统可以100%监视工具状态。随着采样数据的增加,此可调式刀具检测系统的检测能力得到增强,最终实现了智能CNC机床的目标。 (C)2015 Elsevier B.V.保留所有权利。

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