Data and code generated for the research paper: Haber–Bosch 2.0 for low-carbon ammonia production: A global techno-economic and environmental assessmentment.
データとコード:低炭素アンモニア生産のためのHaber–Bosch 2.0:グローバルな技術経済・環境評価 (AI 翻訳)
Terlouw, Tom, Bauer, Christian, Burgherr, Peter, McKenna, Russell, Rosa, Lorenzo
🤖 gxceed AI 要約
日本語
本論文は、低炭素アンモニア生産のための統合的・オープンソースの技術経済・環境最適化フレームワークを提示する。エネルギーシステム最適化、ライフサイクル評価、グローバルな空間分析を組み合わせ、13,000以上の分散型アンモニア生産構成を評価した。コストと排出量のトレードオフを明らかにし、2050年シナリオでの展望を示す。
English
This paper presents an integrated, open-source techno-economic and environmental optimization framework for low-carbon ammonia production. It combines energy system optimization, life cycle assessment, and spatially explicit global analysis to evaluate over 13,000 decentralized ammonia production configurations, revealing cost-emission trade-offs and prospective 2050 scenarios.
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
日本は水素・アンモニアのサプライチェーン構築を国家戦略としている。本フレームワークは、国内での低炭素アンモニア生産の経済性と環境負荷を評価するためのツールとして応用可能であり、日本のエネルギー政策や産業戦略に直接的な示唆を与える。
In the global GX context
This work provides a globally applicable, open-source framework for assessing low-carbon ammonia production. It is especially relevant as ammonia emerges as a key hydrogen carrier and decarbonization option for hard-to-abate sectors, informing investment decisions and policy design toward net-zero targets.
👥 読者別の含意
🔬研究者:The open-source framework and global spatial analysis enable researchers to replicate and extend the assessment to other low-carbon fuels or regions.
🏢実務担当者:Companies in the chemical and fertilizer industry can use the levelized cost and LCA results to identify cost-effective, low-carbon ammonia production pathways and optimize plant siting.
🏛政策担当者:Policymakers can leverage the trade-off analysis to design targeted subsidies or regulations that balance emissions reductions and economic viability for decentralized ammonia production.
📄 Abstract(原文)
Integrated, open-source techno-economic and environmental optimization framework to evaluate low-carbon fuels and other energy systems, here applied to decentralized ammonia production . This repository is used for the manuscript: Terlouw, T., Bauer, C., Burgherr, P., McKenna, R., Rosa, L. (2026). Haber–Bosch 2.0 for low-carbon ammonia production: A global techno-economic and environmental assessmentment . Energy & Environmental Science. It provides the full modelling workflow used to evaluate more than 13,000 decentralized ammonia production configurations worldwide under grid-connected, hybrid, and off-grid system designs. Overview This framework integrates energy system modelling, techno-economic assessment, and life cycle assessment (LCA) to evaluate where, how, and under which conditions decentralized ammonia production can contribute to a low-carbon global energy system. The framework combines: Energy system optimization (MILP-based) Techno-economic assessment (Levelized costs of ammonia) Spatially explicit global analysis (1° × 1° resolution) Environmental Life Cycle Assessment (Brightway 2.5) Prospective assessment (2050 scenarios using premise and IAM pathways) The model evaluates trade-offs between: Levelized ammonia production costs (€/tNH₃) Life cycle GHG emissions (tCO₂-eq/tNH₃) Resource requirements (e.g., land and materials) Grid dependence and decarbonization exposure Operational flexibility constraints Technology learning and financing assumptions The framework is modular, scalable, and designed for large-scale scenario analysis and high-performance computing environments. Contributing Contributions are welcome! For major suggestions, collaborations, or structural changes, please contact: Tom Terlouw [email protected] Acknowledgements This repository was developed under the TRANSIENCE project: https://www.transience.eu/
🔗 Provenance — このレコードを発見したソース
- Zenodo https://zenodo.org/records/21066725first seen 2026-07-01 04:13:07 · last seen 2026-07-01 04:17:32
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