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Using Large Language Models to Produce Literature Reviews: Usages and Systematic Biases of Microphysics Parametrizations in 2699 Publications

Tianhang Zhang, Shengnan Fu,David M. Schultz, Zhonghua Zheng

arXiv · Artificial Intelligence(2025)

Cited 0|Views4
Abstract
Large language models afford opportunities for using computers for intensive tasks, realizing research opportunities that have not been considered before. One such opportunity could be a systematic interrogation of the scientific literature. Here, we show how a large language model can be used to construct a literature review of 2699 publications associated with microphysics parametrizations in the Weather and Research Forecasting (WRF) model, with the goal of learning how they were used and their systematic biases, when simulating precipitation. The database was constructed of publications identified from Web of Science and Scopus searches. The large language model GPT-4 Turbo was used to extract information about model configurations and performance from the text of 2699 publications. Our results reveal the landscape of how nine of the most popular microphysics parameterizations have been used around the world: Lin, Ferrier, WRF Single-Moment, Goddard Cumulus Ensemble, Morrison, Thompson, and WRF Double-Moment. More studies used one-moment parameterizations before 2020 and two-moment parameterizations after 2020. Seven out of nine parameterizations tended to overestimate precipitation. However, systematic biases of parameterizations differed in various regions. Except simulations using the Lin, Ferrier, and Goddard parameterizations that tended to underestimate precipitation over almost all locations, the remaining six parameterizations tended to overestimate, particularly over China, southeast Asia, western United States, and central Africa. This method could be used by other researchers to help understand how the increasingly massive body of scientific literature can be harnessed through the power of artificial intelligence to solve their research problems.
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要点】:本研究利用大型语言模型GPT-4 Turbo对2699篇关于Weather and Research Forecasting (WRF)模型微物理参数化应用的文献进行系统性分析,揭示了其使用情况和系统性偏差,创新地提出了一种利用人工智能进行科学文献系统性审查的新方法。

方法】:通过Web of Science和Scopus数据库搜索,构建了包含2699篇文献的数据库,并使用GPT-4 Turbo模型从文献中提取有关模型配置和性能的信息。

实验】:实验使用GPT-4 Turbo从2699篇文献中提取数据,发现自2020年前使用单时刻参数化方案较多,而2020年后则更多使用双时刻参数化方案,且除Lin、Ferrier和Goddard参数化方案外,其余六种方案普遍高估降水,不同地区参数化方案的系统性偏差有所不同。