商业/经济学

评论:人工智能如何激发人们对天然气的渴望,从而开辟新的市场

到 2030 年,数据中心可能会使美国天然气需求增加 60 亿立方英尺/天,这将为生产商创造新的机遇,并重塑石油公司对电力供应的看法。

用于发电的燃气轮机
燃气轮机用于发电,已成为推动全球人工智能数据中心发展的关键技术。它也成为石油和天然气公司参与这一蓬勃发展行业的切入点。
资料来源:GE Vernova/雪佛龙。

近十年来,上游行业一直在期待人工智能(AI)的崛起及其重塑油气作业的潜力。其中最大的愿景是开启油田优化的新时代。

人们很少讨论人工智能也可能从需求端影响上游业务的可能性。但随着为进一步推进人工智能商业化而建设的数据中心逐渐成形,这种情况显然已经发生了改变。

美国被广泛认为是这项活动的中心,许多人将其称为“I革命”。

尤其值得注意的是,这种技术变革的影响在德克萨斯州和美国东北部地区日益显现,这些地区的数据中心正在快速发展。衡量这种变化最便捷的方式是查看这些设施预计在未来几年产生的电力需求。

今年 3 月,美国能源信息署 (EIA)指出,自 2020 年以来,美国年均电力需求增长率约为 1.7%,而 2005 年至 2019 年的年均增长率仅为 0.1%。

一个关键的转折点似乎是大型语言模型(LLM)的引入和广泛应用,例如ChatGPT和Claude,它们分别于2022年和2023年问世。迄今为止,美国能源信息署(EIA)指出,数据中心运行和开发LLM技术所需的电力消耗是推动这一需求激增的主要因素。

但今年增速将进一步加快。美国能源信息署表示,预计2026年增速将加速至1.9%,2027年将达到2.5%。

区域层面的增长更为显著。据美国能源信息署(EIA)预测,到2027年,德克萨斯州的年度电力负荷需求将比2025年水平增长约10%。这是EIA的基准预测。在高需求情景下,EIA表示,到2027年,德克萨斯州的电力需求增长可能达到15%。

在覆盖华盛顿特区以及13个州(特拉华州、伊利诺伊州、印第安纳州、肯塔基州、马里兰州、密歇根州、新泽西州、北卡罗来纳州、俄亥俄州、宾夕法尼亚州、田纳西州、弗吉尼亚州和西弗吉尼亚州)全部或部分地区的区域网格中,预计需求将增长约3.2%。与德克萨斯州相比,这一增幅较为温和,但仍几乎是近年来全国平均水平的两倍。

美国能源信息署(EIA)也发出了警告。该机构表示,如果需求增长过快,超过供应,“电网压力将表现为批发电力价格飙升,甚至出现轮流停电。”

随着这一话题日益受到公众关注,3月初,美国总统唐纳德·特朗普甚至促使美国七家最大的科技公司(亚马逊、谷歌、Meta、微软、OpenAI、甲骨文和xAI)签署承诺书,保证承担所有新增发电成本,以保护消费者免受电价上涨的影响。白宫还表示,希望确保人工智能公司也能成为电力公司。

那么,这对石油和天然气公司意味着什么呢?答案似乎对拥有庞大天然气资产组合的生产商有利。

美国能源信息署(EIA)预测,人工智能蓬勃发展所需的新增电力大部分将来自天然气发电厂的更多使用,而天然气发电厂目前已占美国发电量的约40%。EIA补充说,所有这些增长将导致2025年至2027年间天然气发电量预计增长1.7%。在需求更高的情景下,EIA表示,这一数字将上升至7.3%。

响应这一趋势的上游企业包括二叠纪盆地能源巨头雪佛龙公司。该公司去年宣布与通用电气Vernova公司和投资集团Engine No. 1合作,建设“表后”发电厂。这些独立于电网运行的专用设施旨在为美国数据中心提供高达4吉瓦的电力。雪佛龙表示,通用电气制造的燃气轮机预计将于2027年投入运营。

雪佛龙在其网站上还指出,到 2030 年,数据中心可能会消耗美国全部电力的 9%,这将比 2024 年的份额增长 350%。

各种分析预测,到 2030 年,数据中心驱动的天然气需求将达到 30 亿至 60 亿立方英尺/天,约占目前美国天然气总需求的 3% 至 6%。

美国公用事业供应商 NextEra Energy 于 12 月宣布,正在建设一座 1.2 吉瓦的专用于数据中心的发电厂,并且正在与埃克森美孚合作,以确保该 2500 英亩场地具备碳捕获和储存能力。

去年年底,哈里伯顿公司与VoltaGrid公司(哈里伯顿持有VoltaGrid 20%的股份)宣布达成协议,将在全球范围内开发数据中心发电系统,首先从中东地区的设施入手。该项目将涉及建造和运营燃气轮机和往复式发动机,以支持大规模数据中心的扩建。

今年3月,美国最大的天然气生产商EQT公司参与了一项由私募股权基金主导的交易,以334亿美元收购了电力公司AES公司。市场普遍认为,这笔交易是对美国数据中心电力需求增长的一次重大押注。

EQT 在该领域的投资远不止于此。这家总部位于匹兹堡的公司旗下的股权投资项目之一 Scale 于今年 2 月收购了 Reload。Reload 专注于收购和开发数据中心用地。EQT 为该项目注入的资金预计将支持 Scale 的离网数据中心业务实现数吉瓦级的发电量。

然而,涌入数据中心行业的热潮也造成了潜在的供应链瓶颈。Rystad Energy 最近的一份研究报告指出,需求的激增在某些情况下已导致发电设备价格上涨高达 300%,而高效燃气轮机的交货周期则延长至 5 年。

然而,随着人工智能迅速成为现代经济和全球商业格局的核心要素,石油和天然气公司似乎也加入了与人工智能公司相同的竞争,力图转型为行业领军者。或许,这一发展还能为二叠纪盆地的石油公司提供一条解决天然气燃烧问题的全新途径,而天然气燃烧正是非常规油气行业最棘手、最持久的挑战之一。

原文链接/JPT
Business/economics

Comments: How AI’s Power Appetite Is Opening a New Market for Natural Gas

Data centers could add up to 6 Bcf/D of US gas demand by 2030, creating a new opportunity for producers and reshaping how oil companies think about electricity supply.

A gas-fired turbine used to generate electricity
A gas-fired turbine used to generate electricity, which has become a key technology to enable the rise of artificial intelligence data centers worldwide. It has also become the entry point for oil and gas companies to take part in this booming business.
Source: GE Vernova/Chevron.

For about a decade, the upstream industry has anticipated the rise of artificial intelligence (AI) and its potential to reshape oil and gas operations. The big promise was a new era of field optimization.

Far less discussed was the possibility that AI could also affect the upstream business from the demand side. That is clearly no longer the case as the buildout of data centers needed to further the commercialization of AI takes shape.

The US is widely considered to represent the center of this activity, which many have dubbed the “AI revolution.”

In particular, the impact of this technological shift is becoming visible in Texas and the US northeast, where data centers are being developed at a rapid pace. The change is easiest to measure through the electricity demand that these facilities are projected to generate in the coming years.

In March, the US Energy Information Administration (EIA) noted that since 2020, annual US electric demand growth averaged about 1.7%, up from just 0.1% annually from 2005 to 2019.

A key inflection point appears to be the introduction and widespread adoption of large language models (LLMs) such as ChatGPT and Claude, which debuted in 2022 and 2023, respectively. To this point, the EIA cites electricity use by data centers needed to run and develop LLM technology as the main driver of this demand surge.

But this year, the pace will pick up even more. The EIA said growth is now expected to accelerate to 1.9% in 2026 and 2.5% by 2027.

The growth becomes more pronounced at the regional level. In Texas, annual electricity load demand is projected to increase by about 10% from 2025 levels by 2027. That’s the EIA’s baseline prediction. In a high-demand scenario, it said demand growth in Texas could reach 15% by 2027.

In the regional grid covering Washington, DC, and all or parts of 13 states (Delaware, Illinois, Indiana, Kentucky, Maryland, Michigan, New Jersey, North Carolina, Ohio, Pennsylvania, Tennessee, Virginia, and West Virginia), demand is expected to grow by about 3.2%. Modest compared with Texas, but still nearly double the national average seen in recent years.

The EIA has issued a caution, too. If demand rises too fast, outstripping supply, the US government agency said, “the stresses on the grid would be evident in spikes in wholesale power prices or even periods of rolling blackouts.”

With this topic moving further into the public consciousness, in early March, US President Donald Trump went so far as to get the commitment of seven of the country’s largest tech firms (Amazon, Google, Meta, Microsoft, OpenAI, Oracle, and xAI) to sign a commitment that they will cover the costs of all the new power generation to protect consumers from rising electricity prices. The White House added that it wants to ensure AI companies also become power companies.

So, where does this leave oil and gas companies? The answer appears to favor producers with large natural gas portfolios.

The EIA predicts that much of the additional power required to support the AI boom will come from greater use of natural gas-fired power plants, which already account for about 40% of US electricity generation. It added that all this growth will lead to an estimated 1.7% increase in gas-fired power generation from 2025 to 2027. In its higher-demand scenario, the EIA said this figure rises to 7.3%.

Among the upstream companies responding to this trend is Permian Basin supermajor Chevron, which last year announced a partnership with GE Vernova and investment group Engine No. 1 to build “behind-the-meter” power plants. The dedicated facilities, which will operate outside the grid, are designed to supply up to 4 GW of electricity to US data centers. Chevron said the GE‑built gas turbines are expected to begin operating in 2027.

Chevron also notes on its website that data centers could consume as much as 9% of all US electricity by 2030, which would be a 350% increase from their share in 2024.

Various analyses peg data center-driven natural gas demand by 2030 in the range of 3 to 6 Bcf/D, equivalent to roughly 3 to 6% of total US gas demand today.

US utility provider NextEra Energy announced in December that it was building a 1.2 GW power plant dedicated for data center use and that it is working with ExxonMobil to secure carbon capture and storage capabilities for the 2,500-acre site.

Also announced at the end of last year was an agreement between Halliburton and VoltaGrid, in which the service company holds a 20% stake, to develop power-generation systems for data centers on a global scale, beginning with facilities in the Middle East. The project would involve building and operating gas turbines and reciprocating engines to support large-scale data center expansion.

In March, the largest natural gas producer in the US, EQT Corp., participated in a private-equity-led deal to acquire power company AES Corp. for $33.4 billion. The deal was widely viewed by markets as a major bet on rising electricity demand from US data centers.

EQT’s involvement in the sector does not end there. One of the Pittsburgh-based company’s equity investments, Scale, acquired Reload in February. Reload specializes in acquiring and developing land for data centers. The capital EQT is bringing to the venture is expected to support multi-gigawatt power generation for Scale’s off-grid data center business.

However, the rush to enter the data center business is also creating potential supply chain bottlenecks. A recent research note from Rystad Energy said the surge in demand has in some cases inflated prices for power-generation equipment by as much as 300%, while lead times for high-efficiency gas turbines are stretching to 5 years.

Nevertheless, with AI on the fast track to becoming a central element of the modern economy and global business landscape, oil and gas companies appear to be joining the same race as AI firms to become power companies. And perhaps this development could also offer oil companies in the Permian another pathway to address flaring, which is one of the unconventional sector’s most stubborn and lingering challenges.