College of Electrical & Mechanical Engineering, National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.
Department of Civil and Structural Engineering, Nottingham Trent University, Burton Street, Nottingham NG1 4BU, UK.
Sensors (Basel). 2021 Dec 1;21(23):8023. doi: 10.3390/s21238023.
Intelligent machining has become an important part of manufacturing systems because of the increased demand for productivity. Tool condition monitoring is an integral part of these systems. Airborne acoustic emission from the machining process is a vital indicator of tool health, however, it is highly affected by background noise. Reducing the background noise helps in developing a low-cost system. In this research work, a feedforward neural network is used as an adaptive filter to reduce the background noise. Acoustic signals from four different machines in the background are acquired and are introduced to a machining signal at different speeds and feed-rates at a constant depth of cut. These four machines are a three-axis milling machine, a four-axis mini-milling machine, a variable speed DC motor, and a grinding machine. The backpropagation neural network shows an accuracy of 75.82% in classifying the background noise. To reconstruct the filtered signal, a novel autoregressive moving average (ARMA)-based algorithm is proposed. An average increase of 71.3% in signal-to-noise ratio (SNR) is found before and after signal reconstruction. The proposed technique shows promising results for signal reconstruction for the machining process.
智能加工已经成为制造系统的重要组成部分,因为生产力的需求增加了。刀具状态监测是这些系统的一个组成部分。加工过程中的空气声发射是刀具健康状况的重要指标,但它受到背景噪声的高度影响。降低背景噪声有助于开发低成本系统。在这项研究工作中,前馈神经网络被用作自适应滤波器来降低背景噪声。从四个不同的机器在背景下采集的声信号,并以不同的速度和进给速度在恒定的切削深度下引入到一个加工信号。这四台机器是三轴铣床、四轴小型铣床、变速直流电机和磨床。反向传播神经网络在分类背景噪声时的准确率为 75.82%。为了重建滤波后的信号,提出了一种新的基于自回归移动平均(ARMA)的算法。在信号重建前后,信噪比(SNR)平均提高了 71.3%。所提出的技术为加工过程中的信号重建显示了有希望的结果。