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中国物理学会期刊

核结构数据现代化: 提升评价效率与可用性

CSTR: 32037.14.aps.75.20251528

Modernization of nuclear structure data: Promoting evaluation efficiency and usability

CSTR: 32037.14.aps.75.20251528
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  • 评价核结构数据库(Evaluated Nuclear Structure Data File, ENSDF)作为核物理领域的核心数据资源, 正面临数据量快速增长与传统格式僵化所带来的挑战. 本文旨在系统探讨ENSDF的现代化进程, 深入分析其原始数据格式的历史局限性, 并综述国际核数据中心在数据结构现代化方面的主要努力. 文中重点介绍了JSON Schema、面向对象数据库及机器学习方法在核数据评价中的应用, 以及NuDat网络接口如何借助现代可视化技术实现数据的高效交互与传播. 此外, 本文还介绍了中国核数据团队在该领域的自主探索与实践, 特别是中山大学核数据团队在借鉴国际经验的基础上, 建立了本地化的原子核数据可视化查询系统. 基于这一框架, 本文进一步结合JSON化的核结构与衰变数据, 利用随机森林方法对超重核多种衰变模式的半衰期进行了系统建模与预测. 结果表明, 该模型在捕捉非线性关联、修正经验公式残差及识别主衰变模式方面具有显著优势, 与实验数据的一致率达92.2%, 均方根误差平均降低超过50%. 研究结果显示, 现代化核结构数据库为人工智能在核物理领域的深入应用奠定了基础, 为我国核科学研究提供了坚实的数据支撑, 并体现了我国在核数据基础设施建设方面的自主创新能力. 本文数据集可在https://doi.org/10.57760/sciencedb.30258中访问获取.

     

    The Evaluated Nuclear Structure Data File (ENSDF) serves as the cornerstone database for nuclear structure and decay data, underpinning research in nuclear physics, energy, medicine, and astrophysics. However, its legacy 80-column ASCII format, established decades ago, presents significant challenges in data accessibility, interoperability, and scalability amidst today's data-intensive research environment. This work systematically addresses the urgent need for modernizing ENSDF by analyzing its historical limitations, reviewing international modernization initiatives, and presenting a comprehensive framework that integrates advanced data formats, database technologies, machine learning (ML), and interactive visualization.
    The primary objectives of this study are twofold: first, to articulate a pathway for transforming ENSDF into a FAIR (Findable, Accessible, Interoperable, Reusable)-compliant resource through structural and technological upgrades; and second, to demonstrate the scientific potential of modernized nuclear data by applying ML methods to predict decay properties of superheavy nuclei.
    Methodologically, we propose and implement a multi-faceted modernization framework. This includes the adoption of JSON Schema to replace rigid column-based records with hierarchical, self-describing, and machine-readable data structures. We introduce CouchDB, an object-oriented database, to natively support diverse data types and enable efficient querying via precomputed views. Additionally, we discuss the integration of machine learning both as a tool for enhancing database maintenance—such as automated PDF table extraction and anomaly detection—and as a predictive engine for nuclear properties. Inspired by international efforts like the modernized NuDat interface, we also developed a localized visualization platform using Dash and Plotly, enabling interactive exploration of nuclide charts and level schemes based on locally parsed ENSDF data.
    As a concrete application of modernized nuclear data, we focused on the decay properties of heavy nuclei. Using JSON-formatted structure and decay data derived from ENSDF, we trained a Random Forest (RF) model to predict half-lives and dominant decay modes across α decay, \beta^\pm decay, electron capture, and spontaneous fission. The model was trained to correct residuals from established semi-empirical formulas (e.g., the Universal Decay Law for α decay and a new three-parameter formula for spontaneous fission). Input features included proton number Z, neutron number N, mass number A, parity, decay energies, and fission barriers.
    Our results demonstrate a significant improvement in predictive accuracy. The RF model achieved 92.2% agreement with experimental data in identifying the dominant decay mode and reduced the root-mean-square error (RMSE) by an average of over 50% across all decay channels. Notably, the model successfully reproduced known systematic trends, such as the elongated α decay valley and the competition between α decay and spontaneous fission in the northeast region of the chart. It also predicted an island of enhanced stability southwest of Z = 114, N = 184, correlated with higher fission barriers.
    In conclusion, this work underscores that modernizing ENSDF is not merely a technical upgrade but a paradigm shift toward data-driven nuclear science. By implementing JSON-based structuring, object-oriented databases, ML-aided evaluation, and advanced visualization, we establish a foundation for scalable, interoperable, and intelligent nuclear data infrastructure. The successful application of Random Forest to superheavy nuclear decay validates the synergy between modern data formats and ML, offering a powerful tool for exploring unknown nuclides and constraining theoretical models. These efforts, exemplified by the autonomous development at Sun Yat-sen University, reflect China's growing capacity for innovation in nuclear data infrastructure and its commitment to supporting future discoveries in nuclear physics, astrophysics, and applied nuclear technologies.
    All the data presented in this work can be found at https://doi.org/10.57760/sciencedb.30258.

     

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