首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture >Prediction of surface roughness in magnetic abrasive finishing using acoustic emission and force sensor data fusion
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Prediction of surface roughness in magnetic abrasive finishing using acoustic emission and force sensor data fusion

机译:利用声发射和力传感器数据融合预测磁性磨料表面粗糙度

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摘要

The configuration of automated polishing systems requires the implementation of monitoring schemes to estimate surface roughness. In this study, a precision polishing process – magnetic abrasive finishing (MAF) – was investigated together with an in-process monitoring set-up. A specially designed magnetic quill was connected to a CNC machining center to polish the surface of Stavax (S136) die steel workpieces. During finishing experiments, both acoustic emission (AE) signals and force signals were sampled and analyzed. The finishing results show that MAF has nanoscale finishing capability (up to 8nm in surface roughness), and the sensor signals have strong correlations with parameters such as the gap between the tool and workpiece, feed rate, and abrasive size. In addition, the signals were utilized as input parameters of artificial neural networks (ANNs) to predict generated surface roughness. To increase accuracy and resolve ambiguities in decision making/prediction from the vast amount of data generated, sensor data fusion (AE + force)-based ANN and sensor information-based ANN were constructed. Among the three types of networks, the ANN constructed using sensor fusion produced the most stable outcomes. The results of this analysis demonstrate that the proposed sensor (fusion) scheme is appropriate for monitoring and prediction of nanoscale precision finishing processes.
机译:自动抛光系统的配置要求实施监控方案以估计表面粗糙度。在这项研究中,对精密抛光工艺-磁性研磨抛光(MAF)-以及过程中的监控装置进行了研究。特别设计的磁性套筒连接到CNC加工中心,以抛光Stavax(S136)模具钢工件的表面。在完成实验期间,采样并分析了声发射(AE)信号和力信号。精加工结果表明,MAF具有纳米级精加工能力(表面粗糙度可达8nm),并且传感器信号与诸如刀具与工件之间的间隙,进给速度和磨料尺寸等参数具有很强的相关性。此外,信号被用作人工神经网络(ANN)的输入参数,以预测生成的表面粗糙度。为了提高准确性,并从生成的大量数据中解决决策/预测中的歧义,构建了基于传感器数据融合(AE +力)的ANN和基于传感器信息的ANN。在这三种类型的网络中,使用传感器融合构建的人工神经网络产生了最稳定的结果。分析结果表明,提出的传感器(融合)方案适用于监测和预测纳米级精密精加工过程。

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