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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >Using a data fusion neural network in the tool wear monitoring of a computer numerical control turning machine
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Using a data fusion neural network in the tool wear monitoring of a computer numerical control turning machine

机译:在计算机数控车床的刀具磨损监测中使用数据融合神经网络

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摘要

The cutting force and the vibration signal of a computer numerical control (CNC) turning machine centre are detected for on-line tool wear monitoring. The feature elements are first extracted from the detected signals. The feature indices are obtained from the feature elements through data preprocessing. Six data fusion methods are used for integrating the feature indices to obtain the fusion indices. The obtained fusion indices are used as the input data of a neural network for on-line tool wear monitoring. The feasibility of coupling a neural network algorithm with different data fusion methods is investigated, based on the monitored data. The research results show that using a data fusion neural network in tool wear monitoring is feasible.
机译:检测计算机数控(CNC)车床中心的切削力和振动信号,以在线监测刀具磨损。首先从检测到的信号中提取特征元素。通过数据预处理从特征元素获得特征索引。使用六种数据融合方法对特征指标进行积分以获得融合指标。所获得的融合指数用作神经网络的输入数据,用于在线工具磨损监测。基于监视的数据,研究了将神经网络算法与不同的数据融合方法结合使用的可行性。研究结果表明,将数据融合神经网络用于刀具磨损监测是可行的。

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