Converting Time Series Data into Images: An Innovative Approach to Detect Abnormal Behavior of Progressive Cavity Pumps Deployed in Coal Seam Gas Wells

Fahd Saghir, M. G. Perdomo, P. Behrenbruch
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引用次数: 4

Abstract

Progressive Cavity Pumps (PCPs) are the predominant form of artificial lift method deployed by Australian operators in Coal Seam Gas (CSG) wells. With over five thousand CSG wells [1] operating in Queensland's Bowen and Surat Basins, managing and maintaining PCP supported production becomes a significant challenge for operators. Especially when these pumps face regular failures due to the production of coal fines. It is possible to gauge the holistic production performance of PCPs with the aid of real-time data, as this allows for pro-active and informed management of artificially lifted CSG wells. Based on data obtained from two (2) CSG operators, this paper will discuss in detail how features extracted from time series data can be converted to images, which can then aid in autonomously detecting abnormal PCP behavior.
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将时间序列数据转换成图像:一种检测煤层气井螺杆泵异常行为的创新方法
渐进式空腔泵(pcp)是澳大利亚运营商在煤层气(CSG)井中采用的主要人工举升方法。昆士兰Bowen和Surat盆地有超过5000口CSG井[1]在作业,管理和维护PCP支持的生产成为运营商面临的重大挑战。特别是当这些泵由于生产煤粉而面临定期故障时。在实时数据的帮助下,可以评估pcp的整体生产性能,因为这允许对人工举升CSG井进行主动和明智的管理。基于两(2)个CSG算子获得的数据,本文将详细讨论如何将从时间序列数据中提取的特征转换为图像,从而帮助自主检测异常PCP行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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