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Automatic identification of otologic drilling faults: a preliminary report.

机译:自动识别耳科钻探故障:初步报告。

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BACKGROUND: A preliminary study was carried out to identify parameters to characterize drilling faults when using an otologic drill under various operating conditions. METHODS: An otologic drill was modified by the addition of four sensors. Under consistent conditions, the drill was used to simulate three important types of drilling faults and the captured data were analysed to extract characteristic signals. A multisensor information fusion system was designed to fuse the signals and automatically identify the faults. RESULTS: When identifying drilling faults, there was a high degree of repeatability and regularity, with an average recognition rate of >70%. CONCLUSIONS: This study shows that the variables measured change in a fashion that allows the identification of particular drilling faults, and that it is feasible to use these data to provide rapid feedback for a control system. Further experiments are being undertaken to implement such a system.
机译:背景:进行了一项初步研究,以鉴定在各种操作条件下使用耳科钻时表征钻孔故障的参数。方法:通过增加四个传感器对耳科钻进行了修改。在一致的条件下,使用钻机模拟三种重要的钻探故障类型,并对捕获的数据进行分析以提取特征信号。设计了一个多传感器信息融合系统,以融合信号并自动识别故障。结果:在确定钻探故障时,具有很高的重复性和规律性,平均识别率> 70%。结论:这项研究表明,所测量的变量以允许识别特定钻探故障的方式变化,并且使用这些数据为控制系统提供快速反馈是可行的。正在进行进一步的实验以实现这种系统。

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