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Probabilistic resource adequacy assessment of ERCOT under high data center load growth and high renewable energy potential through 2050

高データセンターロード増加と高再エネポテンシャル下でのERCOTの確率的供給力評価:2050年まで (AI 翻訳)

Chen Chen, Chen Chen, Joseph Nyangon, Tarek Ibrahim, Talha Ali

Environmental Research: Energy📚 査読済 / ジャーナル2026-07-02#エネルギー転換Origin: US対象セクター: power
DOI: 10.1088/2753-3751/ae854a
原典: https://doi.org/10.1088/2753-3751/ae854a
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🤖 gxceed AI 要約

日本語

ERCOT(テキサス州電力系統)を対象に、データセンターや暗号通貨による高負荷増加と高再エネ導入下での2050年までの供給力を確率的に評価。PLEXOSを用いたフレームワークでLOLEやEUEなどの信頼性指標を算出。2021年冬のウリ嵐を再現し、送電増強やアンシラリーサービス向上が信頼性改善に有効であることを示した。

English

This study develops a probabilistic resource adequacy (RA) framework for ERCOT through 2050, considering high load growth from data centers and crypto, and high renewable penetration. Using PLEXOS, it quantifies LOLE, LOLP, and EUE. Results show that rapid load growth intensifies RA risks but transmission upgrades and enhanced ancillary services improve adequacy. Validated against Winter Storm Uri, the framework supports coordinated generation, transmission, and demand-side planning.

Unofficial AI-generated summary based on the public title and abstract. Not an official translation.

📝 gxceed 編集解説 — Why this matters

日本のGX文脈において

テキサス州ERCOTは日本とは系統構成が異なるが、再生可能エネルギー大量導入時の供給力評価手法は、日本でも電力広域的運営推進機関(OCCTO)や系統整備計画において参考になる。特にデータセンター需要の急増は日本でも課題であり、需給バランス評価に示唆を与える。

In the global GX context

This paper offers a probabilistic RA methodology applicable to any grid undergoing high renewables and load growth. While ERCOT-specific, it demonstrates how transmission and ancillary services mitigate risks from data center demand, relevant for global system operators facing similar electrification trends.

👥 読者別の含意

🔬研究者:Provides a validated probabilistic RA framework integrating capacity expansion and reliability metrics for high-renewable grids.

🏢実務担当者:Demonstrates importance of transmission upgrades and ancillary services in mitigating reliability risks from rapid data center load growth; useful for grid operators planning resource adequacy.

🏛政策担当者:Highlights need for coordinated planning across generation, transmission, and demand flexibility to maintain reliability under high renewables.

📄 Abstract(原文)

The Electric Reliability Council of Texas (ERCOT) faces mounting reliability challenges as electrification, large flexible loads (e.g., data centers, hydrogen, crypto, and industrial demand), and high renewable penetration reshape system dynamics. Traditional reserve margin–based planning is increasingly inadequate, as periods of highest risk are shifting to net peak hours and extended low-renewable events. To address these challenges, we developed a probabilistic resource adequacy (RA) framework using PLEXOS to evaluate ERCOT’s long-term RA outlook through 2050. We modeled baseline growth, high load growth from data centers and cryptocurrency, enhanced ancillary service requirements, and targeted transmission expansion, with sensitivities to technology costs, fuel prices, and policy uncertainty (e.g., Inflation Reduction Act repeal). We quantified reliability outcomes through probabilistic metrics, including Loss of Load Expectation (LOLE), Loss of Load Probability (LOLP), and Expected Unserved Energy (EUE), to capture the marginal contribution of conventional, renewable, and storage resources. Our results show that rapid load growth, particularly from data centers, intensifies RA risks absent complementary transmission and resource expansion; however, transmission upgrades and enhanced ancillary services improve adequacy by mitigating congestion and stabilizing net load variability. We benchmarked our framework against the February 2021 Winter Storm Uri through hourly operational simulations, which validate the framework's capability to replicate observed stress conditions and unserved energy outcomes. These findings collectively underscore that ERCOT’s future reliability hinges on coordinated planning across generation, transmission, and demand-side flexibility. This study provides a novel integration of long-term capacity expansion and probabilistic RA modeling, offering actionable insights for system operators, policymakers, and market stakeholders navigating ERCOT’s transition to a high-renewable, high-load future.

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