优化管道运营

通过使用分析来增强和增强劳动力,管道运营商可以优化运营并提高资产可用性。 (图片来源:Adobe Stock)

技术

AVEVA 石油和天然气行业负责人 Stuart Parker 解释了智能管道如何提高卓越运营、效率和安全性

全球管道市场的情况比历史上任何时期都更加微妙和不可预测。该行业面临着复杂的新挑战,也面临着巨大的机遇。

对能源安全的需求增加正在推动对扩大石油和天然气管道基础设施的需求。现在,行业高管必须平衡利益相关者的期望,包括负担得起且灵活的能源、盈利能力和环境可持续性——特别是强制性的脱碳目标。更重要的是,公司必须努力降低复杂价值链(包括不断增长的业务合作伙伴生态系统)的运营成本和碳足迹。

因此,越来越多的公司寻求数字化转型来提高有效产能,不仅通过资本支出,还通过运营支出投资。通过使用分析来增强和增强劳动力,管道运营商可以优化运营并提高资产可用性,以更短的交付时间创建可扩展的业务模型,同时快速响应市场变化。

如今,具有前瞻性的石油和天然气公司正在安装智能管道框架,以快速将海量数据转化为产生商业价值的智慧。通过使用现有的运营数据以及新的数据源,公司可以采用以模型为中心的方法,从而走上卓越运营的道路。

当组织成功执行这些数字化转型战略时,团队可以发现显着提高设备可靠性、运营效率、安全性和整体业务绩效的机会。

并非所有数据都是平等的


早在“工业物联网”(IIoT) 一词被创造之前,石油和天然气管道公司就已经收集了大量的运营数据。然而,将来自 SCADA、管道应用程序、ERP 系统等的大量原始数据转化为有关设备和流程的上下文信息通常具有挑战性。将这些数据置于上下文中最终可以改善运营。

缺乏背景、结构或质量的大量原始数据不仅很少带来好处,而且那些负责利用这些数据的人常常发现提取见解既困难又麻烦。如果用户开发和实施可持续解决方案的速度太慢,公司将损失巨大的机会成本。当非结构化运营数据在数据湖中积累时,传统 IT 技术可能会产生比其解决的问题更多的问题,因为企业必须花费更多的时间来处理数据,而不是使用数据来提供业务价值。

不幸的是,许多公司在构建正确的数据和分析基础之前,急于采用云、机器学习、边缘、工业物联网和预测分析等新技术和解决方案。采用这些新解决方案可能会带来新的、有价值的见解,但管道公司必须首先制定可靠的数据管理和分析策略。部署企业级实时数据管理平台为未来技术成功奠定基础。

了解您的数据

为了产生可操作的情报,数据必须是结构化的,并且可供那些最能利用数据的人访问,特别是拥有将数据洞察付诸行动的知识和经验的主题专家。

数字化转型的成功取决于拥有单一事实来源。运营数据必须首先标准化和情境化,然后才能进行分析和可视化。全面的数据管理系统可以为运营数据集成、数据验证和分析奠定基础。例如,AVEVA 的 PI System 是一种不可知数据管理平台,它将来自多个控制系统和信息孤岛的不同数据源组合、抽象和规范化到一个集中位置。

然后,集中式运营数据管理平台使用标准化和模板化的标签命名约定,并以灵活的层次结构对资产进行编目。该平台成为一个记录操作系统,为跨任何管道业务模型的见解民主化奠定了基础。

使用数据模型,公司可以通过将运营数据合并到物理资产的数字副本中来加速数字化转型。这可以通过使用图纸、3D 模型、材料、工程分析、尺寸分析、实时管道数据和操作历史等信息开发整个系统的“数字孪生”来实现。

在运营生命周期中,数字孪生会使用当前数据、工作记录和工程信息自动实时更新,以优化维护和运营活动。工程师和操作员可以轻松搜索资产标签以访问关键的最新工程和工作信息,从而诊断特定资产的运行状况。

以前,此类任务需要花费大量时间和精力,并且经常会遗漏问题,导致故障或管道中断。借助数字孪生,可以尽早标记和解决运营和资产问题,并且工作流程变得主动而不是被动。管道公司可以轻松对管道吞吐量和能源消耗等运营绩效进行基准测试,以发现差距并提高管道效率。


有关 AVEVA 的 Stuart Parker 关于管道数字化的更多信息,请参阅最新一期的《中东石油评论》,网址为 https://oilreviewmiddleeast.com/magazines/orme_2024_03_22/spread/?page=26

原文链接/oilreviewmiddleeast

Optimising pipeline operations

By using analytics to augment and empower the workforce, pipeline operators can optimise operations and improve asset availability. (Image source: Adobe Stock)

Technology

Stuart Parker, Oil and Gas Industry principal, AVEVA, explains how an intelligent pipeline can elevate operational excellence, efficiency and safety

The global pipeline market picture is more nuanced and unpredictable than at any time in history. The industry is presented with complex new challenges, as well as vast opportunities.

A heightened demand for energy security is driving demand for expanded oil and gas pipeline infrastructure. Now, industry executives must balance stakeholder expectations, including affordable and flexible energy, profitability, and environmental sustainability – particularly mandated decarbonisation targets. What’s more, companies must strive to reduce operational costs and their carbon footprints across complex value chains, including a growing and ecosystem of business partners.

As a result, more companies are looking to digital transformation to drive effective capacity, not only through CAPEX, but also OPEX investments. By using analytics to augment and empower the workforce, pipeline operators can optimise operations and improve asset availability, creating scalable business models with shorter lead time, all while swiftly responding to market changes.

Today’s forward-looking oil and gas companies are installing intelligent pipeline frameworks to quickly turn massive amounts of data into wisdom that generates business value. By using existing operational data as well as new data sources, companies can take a model-focused approach that puts them on the path to operational excellence.

When organisations successfully execute these digital transformation strategies, teams can uncover opportunities to significantly improve equipment reliability, operational efficiency, safety, and overall business performance.

Not all data is equal


Oil and gas pipeline companies were collecting huge amounts of operational data long before the term ‘Industrial Internet of Things’ (IIoT) was coined. However, turning vast amounts of raw data from SCADA, pipeline applications, ERP systems, and more into contextualised information around equipment and processes is often challenging. Contextualising this data ultimately enables operational improvement.

Not only does a wealth of raw data, devoid of context, structure, or quality, rarely pay dividends, those tasked with utilising that data often find it difficult and cumbersome to extract insights. If users are too slow to develop and implement sustainable solutions, the company will accrue significant lost opportunity costs. When unstructured operational data builds up in data lakes, traditional IT technologies can create more problems than they solve, as businesses must spend more time wrangling data than using it to deliver business value.

Unfortunately, many companies are rushing to layer in new technologies and solutions such as cloud, machine learning, edge, IIoT, and predictive analytics before building the right data and analytics foundation. Adopting these new solutions can potentially deliver new and valuable insights, but pipeline companies must first enact solid data management and analytics strategies. Deploying an enterprise-level, real-time data management platform lays the foundation for future technology success.

Know your data

To produce actionable intelligence, data must be structured and accessible to those who can best use it, particularly subject matter experts who have the knowledge and experience to put data insights into action.

Digital transformation success hinges on having a single source of truth. Operations data must first be standardised and contextualised before it can be analysed and visualised. Comprehensive data management systems can lay the foundation for operations data integration, data validation, and analytics. AVEVA’s PI System, for an example, is an agnostic data management platform that combines, abstracts, and normalises disparate data sources from multiple control systems and information silos into one centralised location.

A centralised operations data management platform then uses standardised and templatised tag-naming conventions and assets are cataloged in a flexible hierarchy. This platform becomes an operational system of record, creating the foundation to democratise insights across any pipeline business model.

Using the data model, companies can accelerate digital transformation by combining operational data into a digital replica of physical assets. This can be enabled by developing a ‘digital twin’ of the entire system using information such as drawings, 3D models, materials, engineering analysis, dimensional analysis, real-time pipeline data, and operational history.

During the operational life cycle, the digital twin is updated automatically, in real time, with current data, work records, and engineering information, to optimise maintenance and operational activities. Engineers and operators can easily search the asset tags to access critical up-to-date engineering and work information in order to diagnose the health of a particular asset.

Previously, such tasks would take considerable time and effort, and issues were often missed, leading to failures or pipeline outages. With the digital twin, operational and asset issues are flagged and addressed early-on and the workflow becomes proactive instead of reactive. Pipeline companies can easily benchmark operational performance, such as pipeline throughput and energy consumption, to uncover gaps and improve pipeline efficiencies.


For more from AVEVA’s Stuart Parker on digitising the pipeline, see the latest issue of Oil Review Middle East, at https://oilreviewmiddleeast.com/magazines/orme_2024_03_22/spread/?page=26