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Neural networks tool condition monitoring in single-point dressing operations

机译:单点敷料操作中神经网络工具条件监测

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Cognitive modeling of tool wear progress is employed to obtain a dependable trend of tool wear curves for optimal utilization of tool life and productivity improvement, while preserving the surface integrity of the ground parts. This paper describes a method to characterize the dresser wear condition utilizing vibration signals by applying a cognitive paradigm, such as Artificial Neural Networks (ANNs). Dressing tests with a single-point dresser were performed in a surface grinding machine and tool wear measurements taken along the experiments. The results show that ANN processing offers an effective method for the monitoring of grinding wheel wear based on vibration signal analysis.
机译:工具磨损进展的认知建模是采用刀具磨损曲线的可靠趋势,以实现刀具寿命的最佳利用和生产率改进,同时保持地面部分的表面完整性。本文介绍了一种利用振动信号来施加认知范例,例如人工神经网络(ANNS)来表征梳妆台磨损条件的方法。用单点梳妆台进行敷料测试在表面研磨机和沿着实验中拍摄的工具磨损测量。结果表明,基于振动信号分析,ANN处理提供了一种监测研磨轮磨损的有效方法。

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