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Autori principali: Li, Qingmeng, Wang, Hao, Xiong, Dongbo, Zhong, Jiajun, Ji, Wenhai, Hu, Hao, Zhang, Yiyu, Zhang, Bolun, Wang, Hong, Zhu, Yongfeng, Du, Rong, Zhang, Zhengde, Qi, Fazhi, Zhang, Junrong
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.13911
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author Li, Qingmeng
Wang, Hao
Xiong, Dongbo
Zhong, Jiajun
Ji, Wenhai
Hu, Hao
Zhang, Yiyu
Zhang, Bolun
Wang, Hong
Zhu, Yongfeng
Du, Rong
Zhang, Zhengde
Qi, Fazhi
Zhang, Junrong
author_facet Li, Qingmeng
Wang, Hao
Xiong, Dongbo
Zhong, Jiajun
Ji, Wenhai
Hu, Hao
Zhang, Yiyu
Zhang, Bolun
Wang, Hong
Zhu, Yongfeng
Du, Rong
Zhang, Zhengde
Qi, Fazhi
Zhang, Junrong
contents Neutron diffraction (ND) is an indispensable technique for determining atomic positions (especially light elements) and thus serves as a critical probe for revealing microscopic structures in materials science. However, traditional Rietveld refinement of ND data relies heavily on manual operation of specialized software, which is time-consuming, labor-intensive, and highly dependent on user expertise, severely hindering automated analysis. The automation of Rietveld refinement has long been a long-standing and challenging problem in crystallography. To address this challenge, this paper presents the Dr.Sai-Rongzai agent, an autonomous refinement assistant based on a large language model (LLM), a specialist knowledge base, and the GSAS-II refinement engine, achieving for the first time an intelligent refinement that integrates knowledge-driven decision-making. The agent accomplishes a fully automated workflow from natural language task parsing to autonomous decision-making, execution of refinement strategies, and report generation. Evaluation on five representative samples shows that the Rongzai agent achieves lower Rwp values than human specialists on three samples (2.88% vs. 4.42%, 5.06% vs. 5.40%, 7.60% vs. 9.00%), while on the other two samples its results are very close to those of the specialists. The agent is currently deployed at the China Spallation Neutron Source (CSNS) and is open for external user registration, providing an intelligent and user-friendly analytical tool for materials research. This work fully leverages the cutting-edge advantages of LLM, offers a new path to solve the long-standing problem of automated refinement, takes a key step toward intelligent and fully automated crystallographic analysis, and holds great potential to accelerate AI for Science discoveries in neutron-based materials characterization.
format Preprint
id arxiv_https___arxiv_org_abs_2605_13911
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Rongzai agent: A Large Language Model-Based Autonomous Assistant for Rietveld Refinement of Neutron Diffraction Data
Li, Qingmeng
Wang, Hao
Xiong, Dongbo
Zhong, Jiajun
Ji, Wenhai
Hu, Hao
Zhang, Yiyu
Zhang, Bolun
Wang, Hong
Zhu, Yongfeng
Du, Rong
Zhang, Zhengde
Qi, Fazhi
Zhang, Junrong
Materials Science
Neutron diffraction (ND) is an indispensable technique for determining atomic positions (especially light elements) and thus serves as a critical probe for revealing microscopic structures in materials science. However, traditional Rietveld refinement of ND data relies heavily on manual operation of specialized software, which is time-consuming, labor-intensive, and highly dependent on user expertise, severely hindering automated analysis. The automation of Rietveld refinement has long been a long-standing and challenging problem in crystallography. To address this challenge, this paper presents the Dr.Sai-Rongzai agent, an autonomous refinement assistant based on a large language model (LLM), a specialist knowledge base, and the GSAS-II refinement engine, achieving for the first time an intelligent refinement that integrates knowledge-driven decision-making. The agent accomplishes a fully automated workflow from natural language task parsing to autonomous decision-making, execution of refinement strategies, and report generation. Evaluation on five representative samples shows that the Rongzai agent achieves lower Rwp values than human specialists on three samples (2.88% vs. 4.42%, 5.06% vs. 5.40%, 7.60% vs. 9.00%), while on the other two samples its results are very close to those of the specialists. The agent is currently deployed at the China Spallation Neutron Source (CSNS) and is open for external user registration, providing an intelligent and user-friendly analytical tool for materials research. This work fully leverages the cutting-edge advantages of LLM, offers a new path to solve the long-standing problem of automated refinement, takes a key step toward intelligent and fully automated crystallographic analysis, and holds great potential to accelerate AI for Science discoveries in neutron-based materials characterization.
title Rongzai agent: A Large Language Model-Based Autonomous Assistant for Rietveld Refinement of Neutron Diffraction Data
topic Materials Science
url https://arxiv.org/abs/2605.13911