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Machine Tool Condition Monitoring System using Tooth Rotation Energy Estimation (TREE) Technique

机译:利用齿旋转能量估计(TREE)技术的机床状态监测系统

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This paper introduces a Tooth Rotation Energy Estimation (TREE) technique and its implementation on a PIC Microcontroller based distributed machine tool condition monitoring system. The technique uses existing machine signals namely; spindle speed and spindle load for the purpose of data acquisition, analysis and decision making thus avoiding the use of any additional sensors. The paper discusses the evolution of this time domain technique, starting from signal acquisition, hardware filtering, the application of moving average for software filtering before going on to explore the signal's variations for different tool conditions. The acquired data is analysed in terms of the energy per tooth. The strength of an energy index in the acquired signals under various cutting conditions can then be used for fault diagnosis and prognosis. The software and hardware system architectures and the test application on a Kondia B500 vertical axis milling machine are described.
机译:本文介绍了一种齿旋转能量估计(TREE)技术及其在基于PIC单片机的分布式机床状态监测系统中的实现。该技术即使用现有的机器信号。用于数据采集,分析和决策的主轴转速和主轴负载,从而避免了使用任何其他传感器。本文讨论了这种时域技术的发展,从信号采集,硬件滤波,移动平均在软件滤波中的应用开始,然后继续探讨信号在不同工具条件下的变化。根据每颗牙齿的能量对获取的数据进行分析。然后可以将在各种切削条件下采集的信号中的能量指数强度用于故障诊断和预后。描述了在Kondia B500立轴铣床上的软件和硬件系统架构以及测试应用程序。

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