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Analyzing Abnormal Cycles of Pilot Tube Microtunneling through Pattern Recognition in Time-Series Data of Hydraulic Pressure

机译:通过液压时间序列数据中的模式识别分析先导管微隧道的异常循环

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Abnormally long operation cycles of Pilot Tube Microtunneling (PTMT) can cause construction delays, difficulties of project coordination, and equipment maintenances costs due to improper operations. Manually logging and analyzing abnormal operation cycles is tedious and time consuming. This paper presents an approach that enables automated identification and analysis of abnormal cycles of PTMT based on automatically logged PTMT operational data. The data collection instrument is a data logger that automatically records time series of hydraulic pressures of boring machines from pressure transducers attached to their hydraulic lines. Different PTMT operations (e.g., boring, retracting) result in different patterns in these time-series. The authors developed an approach that automatically recognizes time series patterns representing operation cycles of three phases of PTMT installation. This approach uses Artificial Neural Network (ANN) to classify a time series as belonging to a certain PTMT phase, and then applies an Adaptive Anomaly Detection Algorithm (AADA) to clean and split the time series into operation cycles. The results from a case study show that this automated approach enables users to analyze abnormal cycles of PTMT and gain insights about how to improve PTMT productivity.
机译:飞行管微管(PTMT)的异常长时间的操作循环可能导致施工延误,项目协调困难,以及由于操作不当导致的设备维持成本。手动记录和分析异常操作周期是乏味且耗时的。本文介绍了一种方法,可以基于自动记录的PTMT运行数据自动识别和分析PTMT的异常周期。数据收集仪器是一种数据记录器,可从附着于其液压管路的压力传感器自动记录钻孔机的液压压力的时间序列。不同的PTMT操作(例如,镗孔,缩回)导致这些时间序列中的不同模式。作者开发了一种方法,它自动识别表示PTMT安装三个阶段的操作周期的时间序列模式。这种方法使用人工神经网络(ANN)将时间序列分类为属于某个PTMT阶段,然后应用自适应异常检测算法(AADA)以清洁并将时间序列分成运行周期。案例研究的结果表明,这种自动化方法使用户能够分析PTMT的异常周期,并了解如何提高PTMT生产率的洞察。

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