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Use of an automatic data quality control algorithm for crude oil viscosity data

机译:使用自动数据质量控制算法处理原油粘度数据

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When building correlations for physical properties, the data used must be quality controlled to ensure suitable performance of regression procedures and provide acceptable predictions. When using data from different sources and large datasets, this screening could become tedious and laborious unless a systematic and automated consistency check is used.For this study, we had a database of almost 3000 records of PVT properties and black-oil viscosity data coming from 324 differential liberation tests performed in different commercial laboratories.We developed a procedure to "clean up" the data on a test basis, before processing it with a regression routine. We individually screened each test, identified outlying observations and removed those from the regression calculations.The criteria used to discard data relied on the numerical evaluation of the first derivative of selected functions of one variable. If the physical behavior is predicted correctly, these functions should be monotonic. For example oil viscosity (observed function) should always increase as the pressure in the differential liberation tests decreases. Forward and backward derivatives were used to account for the end points. The filtered data resulting from this quality control process consisted of 2324 observations.The data were used to adapt two commonly used compositional viscosity models, Pedersen's and Lohrenz, Bray and Clark (LBC), such that these models can be used for black-oil systems when compositional data are missing. The oil viscosity ranged from 0.13 to 78.3 cp, with pressure from 14.7 to 5602 psia (0.1-38.62 MPa) and temperature from 537 to 766 R (298-425.55 K). The oil specific gravity ranged from 0.389 to 0.921. These models were validated against an independent dataset consisting of 150 observations. The two models had lower statistical errors than currently available correlations. (C) 2004 Elsevier B.V. All rights reserved.
机译:建立物理特性的相关性时,必须对所使用的数据进行质量控制,以确保回归程序的适当性能并提供可接受的预测。当使用来自不同来源和大型数据集的数据时,除非使用系统的自动化一致性检查,否则此筛选可能会变得乏味且费力。对于本研究,我们拥有一个数据库,该数据库包含近3000条PVT特性记录和来自在不同的商业实验室中进行了324次差异解放测试。我们开发了一种程序,以测试为基础“清理”数据,然后使用回归例程进行处理。我们分别筛选了每个测试,确定了偏僻的观察结果并将其从回归计算中删除。用于丢弃数据的标准取决于对一个变量所选函数的一阶导数的数值评估。如果正确预测了物理行为,则这些功能应该是单调的。例如,随着微分解放试验中压力的降低,油的粘度(观察到的功能)应始终增加。向前和向后的导数用于说明端点。从质量控制过程中筛选出的数据包括2324个观测值,这些数据用于适应两种常用的成分粘度模型,即Pedersen和Lohrenz,Bray和Clark(LBC),因此这些模型可用于黑油系统当成分数据丢失时。油的粘度为0.13至78.3 cp,压力为14.7至5602 psia(0.1-38.62 MPa),温度为537至766 R(298-425.55 K)。油的比重为0.389至0.921。这些模型针对包含150个观测值的独立数据集进行了验证。这两个模型的统计误差低于当前可用的相关性。 (C)2004 Elsevier B.V.保留所有权利。

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