勘探与生产聚焦:实现动态气举优化的愿景

随着数据收集的增加和改进,气举优化可以在整个领域实现自动化,并带来操作发现,使经济举升类型更具成本效益。

Venkat Putcha 和 Jon Snyder,OspreyData

虽然杆式泵是最明显的人工举升形式,而电动潜油泵 (ESP) 以其高生产率而闻名,但许多运营商正在转向气举在非常规油藏中进行生产。

2018 年 10 月,WTI 进入大幅抛售期,并于 2018 年 12 月下旬从超过 76 美元/桶跌至不足 43 美元/桶。这种下跌给 LOE 带来了压力,至今仍在继续。到年底,油价稳定在 40 多美元的低位,与 2020 年第二季度的当前价格持平。

在 2018 年油价急剧下滑期间,西方石油公司首席生产工程师汤姆·沃克 (Tom Walker)在 Hart Energy 之前的一篇文章中表示,“目前,我们正在资源区中增加越来越多的气举井。”那一年,西方石油公司 7% 的生产井使用了气举,但占西方石油公司桶/日产量的 31%。

独立生产商和主要生产商都选择气举,因为这种举升类型故障率低、移动部件最少、实施成本低并且能够轻松处理固体。气举具有与自然流动生产相似的特征,如果在油井生命周期的早期阶段实施,可以实现无缝过渡。最近采用了高压气举 (HPGL) 等新型气举技术,其生产速度可与 ESP 相当。此外,在适用的情况下,气举可以是一种经济的人工举升,当每桶石油的盈亏平衡点接近石油价格时,它就会派上用场。

由于气举具有较宽的生产率和气液比 (GLR) 可操作性,通常在 ESP 上启动一口井,并在后期递减阶段改用气举。GLR 增加,而该井仍每天生产数千桶。随着井底压力进一步下降,液体产量降至数百桶/天,操作员可以实施气举和柱塞举升的组合,或使用可编程逻辑控制器 (PLC) 间歇性地操作气举。 

气举优化

气举井确实会遇到维护问题,例如管道中的孔、阀门泄漏或堵塞、注入管线冻结、石蜡或水垢堵塞以及压缩机停机。在大多数情况下,与 ESP 和有杆泵故障相比,这些维护问题相对较少发生,且纠正起来既简单又便宜。由于维护成本相对较低且停机时间最少,生产/现场管理的重点转向优化以最大限度地减少 LOE。气举优化具有针对性;它的变化是为了满足运营商与租赁经济、水库管理和定价相关的主要目标。如果注入天然气成本和/或销售天然气价格较高,目标将是最大化每单位净注入天然气成本的石油收入。

在低天然气价格环境下,气举优化将侧重于产量最大化。在页岩井或具有高递减率的非常规井中,由于 GLR、生产率、井压以及与相邻井和联网井的相互作用频繁变化,实现这些目标的最佳注气速率成为一个不断变化的目标。

从历史上看,现场工作人员密切监控每口井,每天记录压力、温度、流量和生产率。这很快就会在数百口井的油田中变得不可扩展,特别是在行为高度可变的非常规井中。这使得在数周或数月内对井使用通用的静态注气速率是很常见的,而 GLR、生产率和井下压力则从注入速率上次优化时的值迁移。不幸的是,这意味着许多井并未以最佳状态运行,因为分析单口井并观察所实施的优化更改的效果需要大量时间。 

通过数字孪生进行优化

采用基于物理的模拟的节点分析是一种广泛用于理解井行为、历史匹配、设计、分析和优化的工具。在大数据时代,可以利用收集的传感器、生产和油井数据来构建油井的数字孪生,并运行大规模的基于物理的模拟。 OspreyData在其生产智能系统中为寻求统一监控、故障检测和缓解的人工举升生产商实施数字孪生取得了早期成功。在该公司提供基于机器学习的分析的生产分析系统中,OspreyData 已开始为油井组的生产商实施自动气举优化。

生产分析支持实时设施网络模拟模型,适应并反映现场观察到的变化。这些模拟旨在在整个油田范围内扩展,以提供响应井行为持续变化的优化建议。以下基本概念实现了这一完整愿景:

1. 传感器放置和数据频率。为了进行节点分析,以下是了解油井流量的关键指标:

  • 流入性能:从地层流入井筒;
  • 油管或流出性能:从井筒至井口的流动;
  • 地面设施和管网:从井口到设施的地面流动,产生来自井口的背压,影响井底压力。

节点分析软件需要与所有这三个组件相关的输入。在 OspreyData 与运营商的互动中,该公司观察到压力和流量传感器最常放置在靠近井口的套管、油管和注入管线上。观察分离器和其他地面设施的井下压力表和传感器并不常见。数据收集实践多种多样,包括早期采用者在井下、井口、地面设施和管网传感器中以 15 秒到 1 分钟的频率放置和收集数据。

这种强大的数据收集水平可以全面了解油井的行为及其与相连油井的相互作用。更传统的玩家每天监测和记录套管压力、油管压力以及注入速率和压力。节点分析软件确实提供了一种方法,可以通过有限的输入对油井性能进行建模和匹配,这需要对丢失的数据做出某些假设。这可能会导致通用解决方案导致错误匹配、误诊和潜在的管理不善。在 OspreyData 的统一监控系统中,传统运营商可以构建更强大的数据骨干,通过分析数据来突出显示差距和扩大覆盖范围的机会,从而实现节点分析。

2. 对现场数据进行初步分析。在气体注入速率变化的分析中,观察到 72 个变化。数据通过 OspreyData 的统一监控系统摄取,以方便对历史事件的监控和标记。该图显示了一次注射速率变化的影响。蓝色条和阴影区域代表变化,而井的套管压力和油管压力如下图所示。

OspreyData历史变化图表
在OspreyData的统一监测系统中,可以检查和分析注气量变化对单井的影响以及由此产生的对油管压力、套管压力和流量的影响。(来源:OspreyData)

注气速率的变化常常与干扰井条件重叠。对油井动态相对稳定和正常的时间段进行分析是有帮助的。这些理想条件通常持续几个小时或几天,如果分析窗口未精确隔离,则可能会受到噪声的影响。为了利用可用时间窗口捕获事件详细信息,流量和压力数据频率最好每 15 分钟发送一次,最多每两小时发送一次。较高频率的数据有助于阐明分析期间井行为的稳定性。如果数字孪生还旨在使用瞬态模拟来模拟段塞或振荡井行为,则可能需要更高频率的数据。 

运营见解和新知识 

blox 绘图图像(此处放置绘图图像)显示了一组井的井口压力、注入压力、井下压力、销售气表压力、分离器压力和气举注入速率的百分比变化。 
从这些井来看,井下压力对注气变化最不敏感,中位百分比变化低于0.3%,而中位分离器压力、井口压力和销售气表压力变化为4.3%分别为 10.4% 和 16.2%,导致中位气举流量百分比变化为 32%。

OspreyData 绘图
分析注入速率变化对某些井的影响表明,有关降低井底压力的传统假设可能需要受到质疑,并且消除地面瓶颈可能是一个有用的优化步骤。(来源:OspreyData)

气举设计和节点分析期间流行的简化假设之一是将最下游节点(通常是井口压力、销售气体压力或分离器压力)设置为常数。从上图中可以看出,这可能是一个有问题的假设。还可以推断,这些井的井底压力对注气量变化不太敏感。

气举优化的典型方法是通过最小化流体梯度来降低井底流动压力,从而提高生产率。与井底压力相比,考虑到井口和表面压力节点的灵敏度更高,可以通过消除地面设备的瓶颈来降低背压来进行优化。

由于井通常共享地面设施和管道,因此有必要观察井之间的相互作用,因为相连井上潜在的天然气产量或注入增加可能会产生额外的背压。这种洞察力之所以成为可能,是因为安装在井下、井口和地面的传感器提供了高频数据。 

3. 使用数字孪生作为注气推荐引擎。除了敏感性分析和识别瓶颈之外,历史匹配的模拟模型还可以提供及时的注气建议。推荐引擎需要自动数据收集、转换和清理,然后进行模拟和历史匹配。该模拟具有多个未知输入,例如静态井底压力和生产率指数,因为这些元素往往会随着时间而变化。还有不可测量的输入,例如管道/环空摩擦系数,可能会或可能不会随时间变化。实时生成的模拟的自动历史匹配提出了非唯一性的挑战,因为早期生成了许多可能性,并且多个参数具有瞬态性质,包括 GLR、含水率和生产率。 

完全可扩展的系统

OspreyData 生产分析系统背后的数据科学家和人工举升专家正在开发机器学习和概率模型,这些模型可以自适应地从油井历史中学习,以确定优化建议最有效的区域。借助其产品提供的内置反馈回路,模型可以继续从油井对后续注气速率变化的响应中学习。该方法提供实时建议,并更好地了解井底静态压力、生产率指数、摩擦系数和其他先前未知因素的潜在趋势。这种方法将使生产商能够优化整个油田具有高可变性的气举井,并朝着全自动油田优化的愿景迈进。生产商将受益于产量的增加和 LOE 的降低,同时实现高运营效率。 

原文链接/hartenergy

E&P Spotlight: Enabling the Vision of Dynamic Gas-lift Optimization

With increased and improved data collection, gas-lift optimization can be automated across the full field and lead to operational discoveries that make an economical lift type even more cost effective.

Venkat Putcha and Jon Snyder, OspreyData

While rod pumps are easily the most visible form of artificial lift and electric submersible pumps (ESPs) are known for their high production rates, many operators are turning to gas lift to produce in unconventional reservoirs.

In October 2018, WTI entered a sharp sell-off period and declined from over $76/bbl to less than $43/bbl by late December 2018. This decline put pressure on LOE, as it continues to do today. Oil settled in by year’s end in the low $40s, matching current prices in second-quarter 2020.

During that steep decline in 2018, Tom Walker, chief production engineer at Occidental Petroleum Corp., said in a previous Hart Energy article, “Right now we’re adding more and more wells in our resource plays to gas lift.” That year, gas lift was used on 7% of Occidental’s producing wells but accounted for 31% of Occidental’s bbl/d production.

Both independent and major producers choose gas lift because the lift type has low failure rates, minimal moving parts, low implementation cost and the ability to handle solids with few problems. Gas lift, having close characteristics to natural flow production, offers a seamless transition if implemented in the early stages of a well’s life. New gas-lift implementations such as high-pressure gas lift (HPGL) have recently been adopted for producing at rates comparable to ESPs. Also, when applicable, gas lift can be an economical type of artificial lift, which comes in handy when the break-even point for a barrel of oil is close to the price of oil.

As a result of gas lift’s wide production rate and gas-liquid ratio (GLR) operability, it is common to start a well on an ESP and switch to gas lift at a later decline stage. The GLR increases while the well is still producing several thousand barrels per day. As bottomhole pressures decline further, and liquid production rates lower to hundreds of bbl/d, operators may implement a combination of gas lift and plunger lift or operate gas lift intermittently with a programmable logic controller (PLC). 

Gas-lift optimization

Gas-lift wells do encounter maintenance issues such as holes in tubing, leaking or clogged valves, frozen injection lines, paraffin or scale obstructions and compressor shutdowns. In most cases, these maintenance issues are relatively infrequent and easy and inexpensive to correct compared to ESP and rod pump failures. Due to these relatively low maintenance costs and minimal downtime, production/field management’s focus shifts toward optimization to minimize LOE. Gas-lift optimization has a targeted nature; it changes to meet the operator’s main objectives as they relate to lease economics, reservoir management and pricing. If injection gas costs and/or sales gas prices are high, the objective will be to maximize the oil revenue per unit cost of net injected gas.

In a low gas price environment, gas-lift optimization will focus on maximizing production. In shale-based or unconventional wells with high decline rates, the optimum gas injection rate to achieve either of these objectives becomes a moving target as a result of frequently changing GLRs, production rates, well pressures and interactions with adjacent and networked wells.

Historically, field personnel monitor individual wells closely, taking daily recordings of pressure, temperature, flow rate and production rate. This quickly becomes unscalable across a field of several hundred wells, especially in unconventionals with highly variable behavior. This makes it common to use generic and static gas injection rates on wells over several weeks or months, while the GLRs, production rates and downhole pressures migrate from values at which the injection rate was last optimized. Unfortunately, this means many wells are not operating optimally, as it takes significant time to analyze a single well and observe the effects of the optimization changes enacted. 

Optimization through digital twins

Nodal analysis that employs physics-based simulations is a tool used extensively for understanding well behavior, history matching, design, analysis and optimization. In the era of Big Data, it is possible to build digital twins of wells that leverage collected sensor, production and well data and run massive scale physics-based simulations. OspreyData has seen early success implementing digital twins within its Production Intelligence system for artificial lift producers seeking unified monitoring, failure detection and mitigation. Within the company’s Production Analytics system, which provides machine learning-based analytics, OspreyData has begun implementing automated gas-lift optimization for producers on groupings of wells.

Production Analytics enables live facility network simulation models that adapt with and reflect changes observed in the field. These simulations are intended to scale field-wide to provide optimization recommendations that respond to ongoing changes in well behavior. The following underlying concepts enable this full vision:

1.    Sensor placement and data frequency. To enable nodal analysis, these are key metrics to understand a well’s flow:

  • Inflow performance: flow from the formation into the wellbore;
  • Tubing or outflow performance: flow from the wellbore to the wellhead; and
  • Surface facilities and pipeline network: flow on the surface from the wellhead to facilities, creating back-pressure from the wellhead that impacts bottomhole pressure.

Nodal analysis software expects inputs related to all three of these components. In OspreyData’s interactions with operators, the company has observed that pressure and flow rate sensors are most commonly placed on the casing, tubing and injection lines close to the wellhead. It is less common to observe downhole pressure gauges and sensors for separators and other surface facilities. There is a spectrum of data collection practices, including early adopters who place and collect data downhole, and from the wellhead, surface facility and pipeline network sensors with 15-second to 1-minute frequency.

This robust level of data collection enables a holistic understanding of a well’s behavior and its interactions with connected wells. More traditional players monitor and record casing pressure, tubing pressure, and injection rate and pressure once a day. Nodal analysis software does provide a method to model and match well performance with this limited input, which requires making certain assumptions related to the missing data. This may result in generic solutions leading to false matches, misdiagnosis and potential mismanagement. Within OspreyData’s Unified Monitoring system, traditional operators can build a stronger data backbone to enable nodal analysis by profiling their data to highlight gaps and opportunities to increase coverage.

2.    Conducting an initial analysis of field data. In this analysis of gas injection rate changes, 72 changes were observed. Data was ingested through OspreyData’s Unified Monitoring system to facilitate monitoring and labeling of historical events. The graphic shows the impact of one injection rate change. The blue bars and shaded regions represent the changes, while the well’s casing pressure and tubing pressure is visualized below.

OspreyData Historic changes Chart
Within OspreyData’s Unified Monitoring system, it is possible to inspect and analyze the impact of gas injection rate changes on individual wells and the resulting effect on tubing pressure, casing pressure and flow. (Source: OspreyData)

Gas injection rate changes often overlap with interfering well conditions. It is helpful to perform analysis on time periods where well performance is relatively stabilized and normal. These ideal conditions often last for a few hours or fractions of days which may be affected by noise if the analysis window is not precisely isolated. To capture event details with usable time windows, flow rate and pressure data frequencies should ideally be sent every 15 minutes to a maximum of every two hours. Higher frequency data helps clarify the stability of the well behavior during the analysis period. If the digital twin is also intended to mimic slugging or oscillatory well behavior using a transient simulation, higher frequencies of data may be necessary. 

Operational insights and new knowledge 

The blox plot image (place Plots image here) illustrates the percentage change of wellhead pressure, injection pressure, downhole pressure, sales gas gauge pressure, separator pressure and gas-lift injection rate on a grouping of wells. 
In case of these wells, it can be see that downhole pressure is the least sensitive to gas injection changes, with the median percentage change being lower than 0.3%, while the median separator pressure, wellhead pressure and sales gas gauge pressure change by 4.3%, 10.4% and 16.2 %, respectively, resulting in a median gas-lift flow percentage change of 32%.

OspreyData Plot Chart
Analyzing the effect of injection rate changes on certain wells shows that traditional assumptions about reducing bottomhole pressure may need to be questioned and that debottlenecking at the surface can be a useful optimization step. (Source: OspreyData)

One of the popular simplifying assumptions during gas-lift design and nodal analysis is to set the most downstream node (usually the wellhead pressure, sales gas pressure or separator pressure) as a constant. Learnings from the plots above indicate that this may be a questionable assumption. It can also be inferred that bottomhole pressure is less sensitive to gas injection rate changes on these wells.

A typical approach to gas-lift optimization looks to increase production rates by reducing flowing bottomhole pressure by minimizing the fluid gradient. Given the higher sensitivity of wellhead and surface pressure nodes when compared to bottomhole pressure, an alternative opportunity is possible to optimize by debottlenecking the surface equipment to reduce backpressure.

As wells often share surface facilities and pipelines it is necessary to observe the interaction between wells, as a potential gas production or injection increase on a connected well may create additional backpressure. This insight was made possible due to the availability of high-frequency data from sensors placed downhole as well as at the wellhead and surface. 

3.    Using the digital twin as a gas Injection recommendation engine. Beyond sensitivity analysis and identifying bottlenecks, a history matched simulation model can provide timely gas injection recommendations. A recommendation engine would require automated data collection, transformation and clean-up followed by simulation and history matching. The simulation has multiple unknown inputs such as static bottomhole pressure and productivity index because these elements tend to change with time. There are also immeasurable inputs such as the tubing/annulus friction factor that may or may not change with time. Automated history matching of live generated simulations presents the challenge of non-uniqueness with many possibilities being generated early on and multiple parameters having a transient nature including GLRs, water cuts and production rates. 

A fully scalable system

The data scientists and artificial lift experts behind OspreyData’s Production Analytics system are developing machine learning and probabilistic models that adaptively learn from the well’s history to identify zones in which optimization recommendations can be most effective. With the built-in feedback loop its product provides, models continue to learn from the well’s response to subsequent gas injection rate changes. This methodology provides real-time recommendations as well as creates a better understanding of the underlying trends in static bottomhole pressure, productivity index, friction factor and other previous unknowns. This approach will allow producers to optimize gas-lift wells with high variability across the full field and move toward the vision of fully automated field-wide optimization. Producers will benefit from increased production with lowered LOE while achieving a high operational efficiency.