Enabling Real-Time Asset Analytics for a Cloud-Based Fiber-Optic Data Management System

Lei Yang, D. Bale, D. Yang, M. Raum, O. Bello, Roberto Failla, David Lerohl, David Knowles, Andy Kwari, Mattew Cannon, S. Ye
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引用次数: 1

Abstract

The distributed nature of fiber-optic measurements such as distributed temperature sensing (DTS), distributed acoustic sensing (DAS), and distributed strain sensing (DSS) enables nearly continuous monitoring of the downhole environment in both space and time. Though continuous monitoring opens the door to a rich new set of asset management applications, it comes with its own set of challenges in terms of data transmission, management, and security. Recently, cloud-based fiber-optic data management services have been successfully introduced to the oil and gas industry as an effective way to collect, transfer, store and display distributed measurement data from the downhole environment. To maximize the value of such cloud-based data management systems, and further improve the return on investment for asset managers, the large volume of distributed sensing data collected must be converted to value in a simple and easy-to-use form, depending on different applications. Traditionally, interpretation of distributed sensing data is a manual process conducted by engineers in a post-job workflow. This paper presents the successful integration of an analytics library into the cloud-based fiber-optic data management system. This integration enables real-time, and in some cases near real-time, asset decision making. The design of the analytics architecture is open to meet the wide range of application requirements by asset managers. A few application examples of the analytics integration will be presented using real-time data streamed directly from the field.
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为基于云的光纤数据管理系统实现实时资产分析
光纤测量的分布式特性,如分布式温度传感(DTS)、分布式声学传感(DAS)和分布式应变传感(DSS),可以在空间和时间上几乎连续地监测井下环境。尽管持续监控为一组丰富的新资产管理应用程序打开了大门,但它在数据传输、管理和安全性方面也带来了一系列挑战。最近,基于云的光纤数据管理服务已成功引入石油和天然气行业,作为收集、传输、存储和显示井下环境分布式测量数据的有效方法。为了最大限度地发挥这种基于云的数据管理系统的价值,并进一步提高资产管理公司的投资回报率,必须根据不同的应用,将收集到的大量分布式传感数据以简单易用的形式转化为价值。传统上,分布式传感数据的解释是工程师在工作后工作流程中进行的手动过程。本文介绍了分析库与基于云的光纤数据管理系统的成功集成。这种集成实现了实时(在某些情况下接近实时)的资产决策。分析体系结构的设计是开放的,以满足资产管理人员广泛的应用程序需求。分析集成的几个应用示例将使用直接来自现场的实时数据流。
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