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首页> 外文期刊>Journal of Mechanical Science and Technology >A neural network based approach for background noise reduction in airborne acoustic emission of a machining process
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A neural network based approach for background noise reduction in airborne acoustic emission of a machining process

机译:基于神经网络基于后噪声减排加工过程的机载声学发射的方法

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Tool wear prediction has become an indispensable technique to prevent downtime in manufacturing and production processes. Airborne emission from a machining process using a low-cost microphone may provide a vital signal of tool health. However, the effect of background noise results in anomaly in data that may lead to wrong prediction of tool health. The paper presents an adaptive approach using neural networks for background noise filtration in acoustic signal for a turning process. Acoustic signal of a turning process is mixed with background noise from four different machines and introduced at different RPMs and feed-rate at a constant depth of cut. A comparison of Backpropagation neural network (BPNN), Self-organizing map and k-means clustering algorithm for noise filtration is investigated in this paper. In this regard, back-propagation neural network showed better performance with an average accuracy for all the four sources. It shows 100 % accuracy for grinding machine signal, 94.78 % accuracy for background signal from 3-axis milling machine, 45.57 % and 12.69 % for motor and 4-axis milling machine, respectively. Signal reconstruction is then done using Discrete cosine transform (DCT). The proposed technique shows a promising future for noise filtration in airborne acoustic data of a machining process.
机译:工具磨损预测已成为防止制造和生产过程中停机的不可或缺的技术。使用低成本麦克风的加工过程中的空气传播可以提供工具健康的重要信号。然而,背景噪声的效果导致异常的数据中可能导致刀具健康错误预测。本文介绍了一种自适应方法,使用神经网络进行用于转动过程的声学信号中的背景噪声过滤。转动过程的声学信号与来自四种不同机器的背景噪声混合,并以不同的RPMS和进料速率引入恒定的切割。本文研究了反向化神经网络(BPNN),自组织地图和K-MEATION的噪声过滤聚类算法的比较。在这方面,反向传播神经网络显示出更好的性能,为所有四种源具有平均精度。它显示了磨床信号的100%精度,3轴铣床的背景信号的精度为94.78%,电机和4轴铣床的背景信号为45.57%和12.69%。然后使用离散余弦变换(DCT)进行信号重建。所提出的技术在加工过程的空气声学数据中显示了一个有希望的噪声过滤。

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