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Application of Exploratory Data Analytics EDA in Coal Seam Gas Wells with Progressive Cavity Pumps PCPs

机译:探索性数据分析EDA在煤层气井PCP中的应用

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Artificial lift methods typically drive Coal Seam Gas (CSG) wells, and Progressive Cavity Pump (PCP) is the preferred method of lift with Australian CSG operators. CSG wells in Australia are typically equipped with necessary instrumentation and automation systems to provide real-time data gathering for monitoring and control purposes. Real-time data gathered from CSG wells presents an opportunity to better understand PCP performance by identifying anomalous pump behavior. However, before undertaking any real-time analytics exercise, it is pertinent to carry out Exploratory Data Analytics (EDA) to understand time series data behavior and extract relevant features; and this exercise is particularly important with multi-variate data sets. Obtaining significant data features from multivariate time series data can help define which analytics and machine learning methods could be exploited to analyze PCP performance in near real time. This paper will discuss EDA methodologies that can help streamline time-series data normalization and feature extraction techniques. A three (3) year time-series dataset, gathered from forty-two (42) CSG wells, will be used to showcase EDA methodologies utilized as part of this research. All EDA activities covered in this paper are based on the Python programming language and its supporting libraries.
机译:人工升降方法通常驱动煤层气(CSG)孔,渐进式腔泵(PCP)是澳大利亚CSG运营商提升的首选方法。澳大利亚CSG Wells通常配备了必要的仪器和自动化系统,以提供用于监控和控制目的的实时数据。从CSG Wells收集的实时数据呈现出通过识别异常泵行为而更好地了解PCP性能的机会。但是,在进行任何实时分析练习之前,它有关探索数据分析(EDA)以了解时间序列数据行为并提取相关特征;这种练习对于多变化数据集尤其重要。从多变量时间序列数据获取显着的数据特征可以帮助定义可以利用哪种分析和机器学习方法来分析近实时的PCP性能。本文将讨论EDA方法,可以帮助简化时序序列数据标准化和特征提取技术。从四十二(42)个CSG井收集的三(3)年的时间序列数据集将用于展示作为本研究的一部分使用的EDA方法。本文涵盖的所有EDA活动都是基于Python编程语言及其支持库。

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