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An outlier detection approach for water footprint assessments in shale formations: case Eagle Ford play (Texas)

机译:页岩地区水足迹评估的异常检测方法:柴胡福特戏剧(德克萨斯州)

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The increasing trend on water use for hydraulic fracturing (HF) in multiple plays across the U.S. has raised the need to improve the HF water management model. Such approaches require good-quality datasets, particularly in water-stressed regions. In this work, we presented a QA/QC framework for HF data using an outlier detection methodology based on five univariate techniques: two interquartile ranges at 95 and 90% (PCTL95, PCTL90), the median absolute deviation (MAD) and Z score with thresholds of two and three times the standard deviation (2STD, 3STD). The cleaning techniques were tested using multiple variables from two data sources centered on the Eagle Ford play (EFP), Texas, for the period 2011-2017. Results suggest that the PCTL95 and MAD techniques are the best choices to remove long-tailed statistical distributions of different variables, classifying the minimum number of records as outliers. Overall, outliers represent 13-23% of the total HF water volume in the EFP. In addition, outliers highly impacted minimum and maximum HF water use values (min-max range of 0-47 m(3)/m and 5.3-24.6 m(3)/m of frac length, before and after the outlier removal process, respectively), that are frequently used as a proxy to develop future water-energy scenarios in early-stage plays. The data and framework presented here can be extended to other plays to improve water footprint estimates with similar conditions.
机译:液压压裂(HF)在美国跨越液压压裂(HF)的日益趋势提出了改善HF水管理模型的需要。这些方法需要高质量的数据集,特别是在耐水区。在这项工作中,我们使用基于五个单变量技术的异常检测方法为HF数据提出了一个QA / QC框架:两个四分位数在95和90%(PCT195,PCTL90),中位绝对偏差(MAD)和Z分数标准偏差的两个和三倍的阈值(2std,3stdd)。使用来自于2011-2017期间的Eagle Ford Play(EFP)的两个数据源的多个变量测试清洁技术。结果表明,PCTL95和MAD技术是删除不同变量的长尾统计分布的最佳选择,将最小记录数分类为异常值。总体而言,异常值占EFP中总HF水量总量的13-23%。此外,异常值高度影响最小和最大HF水使用值(最小最大范围为0-47米(3)/ m(3)/ m的Frac长度,在异常拆卸​​过程之前和之后,分别是经常被用作在早期戏剧中制定未来的水能情景的代理。这里呈现的数据和框架可以扩展到其他剧本,以改善具有类似条件的水占地面积。

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