Interoperability of Real-Time Drilling Signals at the Rig Site: An Example Based on Mechanical Specific Energy

E. Cayeux, B. Daireaux, J. Macpherson, F. Florence, Espen Solbu
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引用次数: 1

Abstract

Digitalization of the drilling process has the potential to improve drilling data quality and consistency, providing support for drilling optimization, safety and efficiency. A significant barrier to realizing this potential is the data streams from the multitude of service companies, which changes almost daily, with variable definition of each of the real-time signals. This paper provides a solution to this problem: a method describing the semantics of real-time drilling signals in a computer readable format. For illustration, consider the calculation of mechanical specific energy (MSE) in drilling. It is possible to calculate a simple MSE signal in many ways, by using surface or downhole measurements, by applying corrections to the raw data, or by interpreting the equation in alternate ways. There is typically only a delivered value – the underlying details are lost. Semantic graphs bring transparency to the calculation by describing facts about drilling signals that are interpretable by computer systems. This semantic information encompasses details about signal measurement, and about signal calculation, correction, or conversion, yet all without exposing proprietary mathematical methods of calculation. It is possible, using semantic graphs, to assess the meaning and potential application of a signal, and whether or not the quality of the signal is suitable for its intended purpose. A semantic network relies on a vocabulary that defines a specific language dedicated to a particular topic, here drilling signals. The semantic network language is versatile: an existing language can describe new information and newly created signals. This provides a method meeting future needs without having to modify a standard constantly. In practice, each data provider exposes the meaning of its signals in the form of individual semantic networks. Merging these distinct semantic graphs provides a larger set of facts. This opens the possibility for synergies between independent data providers. For instance, applying logical rules infers new information. Since it is possible to query the semantic graph for signals that have certain properties, discovery of the most relevant signals at any time is feasible. By keeping track of modifications made to the semantic network during the drilling operation, it is also possible to post-analyze facts known about the available drilling signals, in an historic perspective. This is essential information for interpreting real-time data during offline data mining. This work is part of the D-WIS initiative (Drilling and Wells Interoperability Standards), a cross-industry workgroup providing solutions to facilitate interoperability of computer systems at the rig site and beyond. The D-WIS workgroup continues to develop the semantic vocabulary. The benefit of a computer interpretable description of the meaning of real-time signal is not limited to signals in real-time. Indeed, the method allows automatic data mining of historical data sets, facilitating the application of machine learning methods.
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钻井现场实时钻井信号的互操作性:以机械比能为例
钻井过程的数字化有可能提高钻井数据的质量和一致性,为钻井优化、安全和效率提供支持。实现这一潜力的一个重大障碍是来自众多服务公司的数据流,这些数据流几乎每天都在变化,每个实时信号的定义都是可变的。本文提供了一个解决这个问题的方法:一种用计算机可读格式描述实时钻井信号语义的方法。为了说明这一点,可以考虑钻井中机械比能(MSE)的计算。计算简单MSE信号的方法有很多种,可以使用地面或井下测量数据,对原始数据进行修正,或者用其他方法解释方程。通常只有一个交付的值——底层的细节丢失了。语义图通过描述可由计算机系统解释的钻井信号的事实,使计算透明化。这些语义信息包含有关信号测量、信号计算、校正或转换的详细信息,但都没有公开专有的数学计算方法。使用语义图可以评估信号的含义和潜在应用,以及信号的质量是否适合其预期目的。语义网络依赖于定义特定主题的特定语言的词汇表,这里是钻取信号。语义网络语言是通用的:现有的语言可以描述新的信息和新产生的信号。这提供了一种满足未来需求的方法,而不必经常修改标准。在实践中,每个数据提供者以单独的语义网络的形式暴露其信号的含义。合并这些不同的语义图可以提供更大的事实集。这为独立数据提供者之间的协同增效提供了可能性。例如,应用逻辑规则推断新信息。由于可以查询具有某些属性的信号的语义图,因此在任何时候发现最相关的信号是可行的。通过跟踪钻井作业期间对语义网络的修改,还可以从历史的角度对已知的可用钻井信号进行事后分析。这是离线数据挖掘过程中解释实时数据的必要信息。这项工作是D-WIS计划(钻井和油井互操作性标准)的一部分,该计划是一个跨行业工作组,提供解决方案,以促进钻井现场及其他地方计算机系统的互操作性。D-WIS工作组继续开发语义词汇。实时信号含义的计算机可解释描述的好处不限于实时信号。实际上,该方法允许对历史数据集进行自动数据挖掘,方便了机器学习方法的应用。
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