raybet体育在线 院报 ›› 2025, Vol. 42 ›› Issue (8): 179-187.DOI: 10.11988/ckyyb.20250455

• 水利信息化 • 上一篇    下一篇

DeepSeek在工程水文领域的应用探索与展望

高子轩(), 宋昕熠()   

  1. 长沙理工大学 水利与海洋工程学院,长沙 410114
  • 收稿日期:2025-05-20 修回日期:2025-06-19 出版日期:2025-08-01 发布日期:2025-08-01
  • 通信作者:
    宋昕熠(1990-),男,湖南娄底人,讲师,博士,主要从事流域水文、优化调度、深度学习、水文统计方面的研究。E-mail:
  • 作者简介:

    高子轩(2004-),女,湖北武汉人,主要从事人工智能、工程水文方面的研究。E-mail:

Exploration and Prospects of DeepSeek Applications in Engineering Hydrology

GAO Zi-xuan(), SONG Xin-yi()   

  1. School of Hydraulic and Ocean Engineering, Changsha University of Science and Technology, Changsha 410114, China
  • Received:2025-05-20 Revised:2025-06-19 Published:2025-08-01 Online:2025-08-01

摘要:

DeepSeek作为先进的人工智能技术平台,给水利领域带来新的变革。基于工程水文的专业特点,分析了DeepSeek模型与工程水文分析计算的适配性,并选择水位频率分析作为评估DeepSeek在工程水文中应用前景的案例。结果表明通过采用结构化提问、合理拆分任务等技巧,DeepSeek能够准确地识别用户需求,其代码生成、解释、纠错、调优、改写功能极大地提升了工作效率,减小了学习成本,具有变革性潜力,未来结合洪水预测、水资源优化调度等相关专业技术将进一步拓展DeepSeek的应用场景与应用深度。

关键词: DeepSeek, 人工智能, 大语言模型, 工程水文, 水文分析计算, 工作效率, 应用场景

Abstract:

[Objectives] This study aims to explore the feasibility of employing DeepSeek, a large language model, to promote intelligent hydrological analysis through its natural language interaction and code generation functions. This research innovatively applies DeepSeek to engineering hydrological analysis, promoting intelligent development in the field of engineering hydrology. [Methods] First, based on the core concepts and characteristics of engineering hydrology discipline, it was concluded that DeepSeek’s application scenarios such as code generation, code rewriting, and code explanation were highly suitable for engineering hydrology, a field heavily dependent on data. Focusing on the typical task of frequency analysis of hydrological data, this study used a case-driven method and designed a two-stage experiment. During the data cleaning phase, daily water level data incorporating compound water level recording methods were fed into the system, and MATLAB cleaning code was iteratively generated using structured prompts. In the data analysis phase, the annual maximum water levels, 3-day and 5-day moving average maximum sequences during the flood season were generated, and the Pearson Type III (P-III) distribution was used to calculate key frequency design values such as 1% and 5%. Finally, a quantitative comparison was conducted between DeepSeek’s calculated results and conventional eye-fitting curve outcomes to evaluate the accuracy of the results. [Results] In terms of efficiency, the processing time for multiple prompts ranged from 33 to 109 seconds. Standardized tasks (such as moving average calculations) achieved “prompt as code”, substantially reducing programming time and significantly enhancing workflow efficiency. Additionally, the automated optimization of existing inefficient code notably improved efficiency. Regarding accuracy, DeepSeek could accurately identify user requirements and precisely interpret professional concepts. It achieved a 100% accuracy rate in the first attempt when interpreting key concepts such as the P-III distribution and flood season averages. However, for low-frequency terms (e.g., compound recording method), 2-3 rounds of prompt iteration were required. Additionally, DeepSeek’s calculated average and Cv parameters were consistent with those obtained using conventional methods, further demonstrating its high precision. [Conclusions] DeepSeek significantly lowers the technical barriers to engineering hydrological analysis. Its natural language interaction capability serves as an “intelligent bridge” between professional requirements and code implementation, while its automated data processing and model calculation alleviate practitioners’ workload, promoting the integration of AI technology from academic research into engineering practice. In the future, with in-depth research and expanded applications, DeepSeek is expected to evolve from an auxiliary tool into a core engine driving the transformation of engineering hydrology from “experience-based decision-making” to “knowledge-data collaborative decision-making,” thereby providing foundational support for intelligent water conservancy.

Key words: DeepSeek, artificial intelligence, large language model, engineering hydrology, hydrological analysis and calculation, work efficiency, application scenarios

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