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A decision fusion algorithm for tool wear condition monitoring in drilling

机译:钻井工具磨损状态监测的决策融合算法

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摘要

Tool wear monitoring of cutting tools is important for the automation of modern manufacturing systems. In this paper, several innovative monitoring methods for on-line tool wear condition monitoring in drilling operations are presented. Drilling is one of the most widely used manufacturing operations and monitoring techniques using measurements of force signals (thrust and torque) and power signals (spindle and servo) are developed in this paper. Two methods using Hidden Markov models, as well as several other methods that directly use force and power data are used to establish the health of a drilling tool in order to avoid catastrophic failure of the drill. In order to increase the reliability of these methods, a decision fusion center algorithm (DFCA) is proposed which combines the outputs of the individual methods to make a global decision about the wear status of the drill. Experimental results demonstrate the effectiveness of the proposed monitoring methods and the DFCA.
机译:切削刀具的刀具磨损监控对于现代制造系统的自动化非常重要。本文提出了几种创新的监测方法,用于在钻井作业中进行在线工具磨损状态监测。本文开发了使用力信号(推力和扭矩)和功率信号(主轴和伺服)的测量方法来进行钻削的一种最广泛的制造操作和监测技术。为了避免钻机的灾难性故障,使用了两种使用隐马尔可夫模型的方法,以及直接使用力和功率数据的其他几种方法来确定钻具的运行状况。为了提高这些方法的可靠性,提出了一种决策融合中心算法(DFCA),该算法将各个方法的输出进行组合以对钻头的磨损状况做出全局决策。实验结果证明了所提出的监测方法和DFCA的有效性。

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