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Application of Data Mining Techniques to Identify Data Anomalies: A Case Study in the Oil and Gas Industry

机译:数据挖掘技术在识别数据异常中的应用 - 以石油和天然气工业为例

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This paper presents the application of the AgentMiner~(TM) tool suite to improve the efficiency of detecting data anomalies in oil well log and production data sets, which have traditionally been done by hand or through the use of database business rules. There was a need to verify the data sets, once cleansed and certified to ensure that the existing data certification process was effective. There was also a need to identify more complex relational data anomalies that cannot be addressed by simple business rules. Analysis techniques including statistical clustering, correlation and 3-D data visualization techniques were successfully utilized to identify potential complex data anomalies. A data-preprocessing tool was also applied to automatically detect simple data errors such as missing, out of range, and null values. The pre-processing tools were also used to prepare the data sets for further statistical and visualization analyses. To enhance the discovery of data anomalies two different data visualization tools for the data clusters were applied.
机译:本文介绍了Agentminer〜(TM)工具套件的应用,提高了对油井日志和生产数据集中的数据异常的效率,传统上由手动或使用数据库业务规则进行。需要验证数据集,一旦清理和认证,以确保现有数据认证过程有效。还需要确定更复杂的关系数据异常,这是简单的业务规则无法解决的数据异常。成功地利用了包括统计聚类,相关性和3-D数据可视化技术的分析技术来识别潜在的复杂数据异常。还应用数据预处理工具以自动检测简单的数据错误,例如丢失,超出范围和空值。预处理工具还用于准备数据集以进行进一步的统计和可视化分析。为了增强数据的发现,异常应用了两个不同的数据可视化工具。

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