Real-Time Drilling Operation Activity Analysis Data Modelling with Multidimensional Approach and Column-Oriented Storage

Basirudin Djamaluddin, P. Prabhakar, Baburaj James, Anas Muzakir, Hussain AlMayad
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引用次数: 3

Abstract

Real-time data stream in the format of WITSML which can have frequency as low as 1 Hz is one of the best candidate to produce KPIs for the drilling operation activity. The KPIs generated from this calculation will have a relationship with other information from other data sources, known as metadata. The question is how can this KPI information be utilized for further analysis, wider/more complex analysis process which needs to be combined with metadata? An OLTP model is not the recommended model for data analytics but OLAP is. Another question is how will this data be stored in terms of the physical storage? We argue to use column-oriented for the physical storage which can perform analytical queries 10x to 30x faster than the row-oriented storage. The implementation of an OLAP model for storing KPIs data is proven to improve the performance of the analytical query significantly and combined with the implementation of column-oriented in the OLAP model improves more performance. This concludes that the implementation of OLAP with column-oriented data model can be used as the solid foundation for storing KPI data.
基于多维方法和面向列存储的实时钻井作业活动分析数据建模
WITSML格式的实时数据流的频率可低至1hz,是为钻井作业活动生成kpi的最佳候选之一。由此计算生成的kpi将与来自其他数据源的其他信息(称为元数据)具有关系。问题是如何将这些KPI信息用于需要与元数据相结合的进一步分析、更广泛/更复杂的分析过程?OLTP模型不是数据分析的推荐模型,但OLAP是。另一个问题是如何将这些数据存储在物理存储中?我们主张使用面向列的物理存储,它执行分析查询的速度比面向行存储快10到30倍。事实证明,用于存储kpi数据的OLAP模型的实现可以显著提高分析查询的性能,并且与OLAP模型中面向列的实现相结合可以提高性能。由此得出结论,使用面向列的数据模型实现OLAP可以作为存储KPI数据的坚实基础。
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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