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Multi-Sensor Data Fusion for Real-Time Surface Quality Control in Automated Machining Systems

机译:多传感器数据融合用于自动化加工系统中的实时表面质量控制

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摘要

Multi-sensor data fusion systems entail the optimization of a wide range of parameters related to the selection of sensors, signal feature extraction methods, and predictive modeling techniques. The monitoring of automated machining systems enables the intelligent supervision of the production process by detecting malfunctions, and providing real-time information for continuous process optimization, and production line decision-making. Monitoring technologies are essential for the reduction of production times and costs, and an improvement in product quality, discarding the need for post-process quality controls. In this paper, a multi-sensor data fusion system for the real-time surface quality control based on cutting force, vibration, and acoustic emission signals was assessed. A total of four signal processing methods were analyzed: time direct analysis (TDA), power spectral density (PSD), singular spectrum analysis (SSA), and wavelet packet transform (WPT). Owing to the nonlinear and stochastic nature of the process, two predictive modeling techniques, multiple regression and artificial neural networks, were evaluated to correlate signal parametric characterization with surface quality. The results showed a high correlation of surface finish with cutting force and vibration signals. The signal processing methods based on signal decomposition in a combined time and frequency domain (SSA and WPT) exhibited better signal feature extraction, detecting excitation frequency ranges correlated to surface finish. The artificial neural network model obtained the highest predictive power, with better behavior for the whole data range. The proposed on-line multi-sensor data fusion provided significant improvements for in-process quality control, with excellent predictive power, reliability, and response times.
机译:多传感器数据融合系统需要优化与传感器选择,信号特征提取方法和预测建模技术相关的各种参数。自动化加工系统的监视可通过检测故障并提供实时信息,以进行连续过程优化和生产线决策,从而对生产过程进行智能监控。监控技术对于减少生产时间和成本以及提高产品质量至关重要,而无需进行后期质量控制。本文评估了一种基于切削力,振动和声发射信号的实时表面质量控制的多传感器数据融合系统。总共分析了四种信号处理方法:时间直接分析(TDA),功率谱密度(PSD),奇异谱分析(SSA)和小波包变换(WPT)。由于该过程的非线性和随机性质,因此对两种预测建模技术(多元回归和人工神经网络)进行了评估,以将信号参数表征与表面质量相关联。结果表明,表面光洁度与切削力和振动信号高度相关。基于时域和频域组合(SSA和WPT)的信号分解的信号处理方法表现出更好的信号特征提取,可以检测与表面光洁度相关的激励频率范围。人工神经网络模型获得了最高的预测能力,在整个数据范围内具有更好的行为。所提出的在线多传感器数据融合为过程质量控制提供了显着改进,具有出色的预测能力,可靠性和响应时间。

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