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Deep convolutional neural network-based in-process tool condition monitoring in abrasive belt grinding

机译:基于深度卷积神经网络的磨料带式研磨过程中的过程

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Abrasive belt grinding has attracted attention in recent years in both industry and academia due to the rapid development of abrasive belts. In-process tool condition monitoring in abrasive belt grinding is difficult due to the large and unknown number of abrasive grains with variable and stochastic cutting geometries especially when the monitoring utilizes complicated sound signal for functionality. To monitor the wear of an abrasive belt, a new method using the deep convolutional neural network(DCNN) is proposed to identify the wear state of an abrasive belt based on sound signals. To comprehensively evaluate the recognition result of the belt wear state, one-level accuracy and precision are proposed, and the accuracy, one-level accuracy and precision of the method proposed in this paper are 82.2%, 97.6%, and 0.863, respectively. Compared with traditional methods, the results of this study infer that this method based on the DCNN can automatically and simultaneously search for the features of grinding sounds that are sensitive to belt wear in two dimensions, the time-domain and frequency-domain. The above characteristics of the DCNN are very suitable for extracting the features of the nonstationary sound signals that are produced by the alternate cutting process of multiple abrasive grains. (C) 2018 Elsevier B.V. All rights reserved.
机译:由于磨料皮带的快速发展,近年来,磨料皮带磨削引起了行业和学术界的关注。由于具有可变和随机切割几何形状的大且未知数量的磨粒,特别是当监控利用复杂声号的功能时,磨料带磨的内部磨料带磨削的监测是困难的。为了监测研磨带的磨损,提出了一种新方法,使用深卷积神经网络(DCNN)基于声音信号识别研磨带的磨损状态。为了综合评价皮带磨损状态的识别结果,提出了一种级别的精度和精度,以及本文提出的方法的精度,单级精度和精度分别为82.2%,97.6%和0.863。与传统方法相比,本研究的结果推断,基于DCNN的该方法可以自动且同时搜索磨削声音的特征,这些声音对皮带磨损有两个维度,时域和频域。上述DCNN的特性非常适合于提取由多个研磨颗粒的交替切割过程产生的非间断声音信号的特征。 (c)2018 Elsevier B.v.保留所有权利。

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