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Main Authors: Li, Ziwei, Zhu, Liujun, Liu, Yuchen, Zhao, Yichen, Li, Birk, Wu, Ruiqi, Jin, Junliang, Zhang, Jianyun
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.17856
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author Li, Ziwei
Zhu, Liujun
Liu, Yuchen
Zhao, Yichen
Li, Birk
Wu, Ruiqi
Jin, Junliang
Zhang, Jianyun
author_facet Li, Ziwei
Zhu, Liujun
Liu, Yuchen
Zhao, Yichen
Li, Birk
Wu, Ruiqi
Jin, Junliang
Zhang, Jianyun
contents Process-based simulation models encode decades of scientific understanding across the Earth sciences, yet the communities most exposed to climate risk and resource scarcity are the least able to use them. Here, we introduce knowledge infrastructure (KI), an agent-actionable scaffold that externalizes expertise into validated modelling operators, staged domain protocols, and diagnostic recovery mechanisms. Across a 3,000-trial coupled-hydrology benchmark, agents equipped with KI produced physically plausible, verifiable end-to-end simulations in up to 84% of trials, while agents without KI plateaued below 40%. KI generalizes across disciplines. We packaged its construction into a Knowledge Dissection Toolkit (KDT) that autonomously produced KI enabling end-to-end agent execution of 117 additional process-based models across 14 Earth-science domains. Across all 119 KIs, modelling decisions and failure remedies converged despite different underlying physics, showing that operational expertise is structured and extractable rather than ad hoc. Demonstrations show KI-equipped agents lowering both the access barrier between non-specialist users and process-based simulation, and the integration barrier between modelling communities. Through this scaffold, process-based science can then evolve as a living scientific commons, answerable to whoever needs to know and extendable by whoever can contribute.
format Preprint
id arxiv_https___arxiv_org_abs_2605_17856
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle KISS - Knowledge Infrastructure for Scientific Simulation: A Scaffolding for Agentic Earth Science
Li, Ziwei
Zhu, Liujun
Liu, Yuchen
Zhao, Yichen
Li, Birk
Wu, Ruiqi
Jin, Junliang
Zhang, Jianyun
Artificial Intelligence
Process-based simulation models encode decades of scientific understanding across the Earth sciences, yet the communities most exposed to climate risk and resource scarcity are the least able to use them. Here, we introduce knowledge infrastructure (KI), an agent-actionable scaffold that externalizes expertise into validated modelling operators, staged domain protocols, and diagnostic recovery mechanisms. Across a 3,000-trial coupled-hydrology benchmark, agents equipped with KI produced physically plausible, verifiable end-to-end simulations in up to 84% of trials, while agents without KI plateaued below 40%. KI generalizes across disciplines. We packaged its construction into a Knowledge Dissection Toolkit (KDT) that autonomously produced KI enabling end-to-end agent execution of 117 additional process-based models across 14 Earth-science domains. Across all 119 KIs, modelling decisions and failure remedies converged despite different underlying physics, showing that operational expertise is structured and extractable rather than ad hoc. Demonstrations show KI-equipped agents lowering both the access barrier between non-specialist users and process-based simulation, and the integration barrier between modelling communities. Through this scaffold, process-based science can then evolve as a living scientific commons, answerable to whoever needs to know and extendable by whoever can contribute.
title KISS - Knowledge Infrastructure for Scientific Simulation: A Scaffolding for Agentic Earth Science
topic Artificial Intelligence
url https://arxiv.org/abs/2605.17856