Leveraging Large Language Models for Tradespace Exploration

Gabriel Apaza, Daniel Selva
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Abstract

This paper proposes a method for leveraging large language models (LLMs) to improve the question-answering capabilities of artificial intelligence (AI) assistants for tradespace exploration. The method operates by querying an information space composed of fused data sources encompassing the tradespace exploration process and responding based on the gathered information. The information retrieval process is modeled as an internal dialog where an LLM-based dialog agent converses with a subquery answering agent. A case study is conducted on a next-generation soil moisture mission (SM-NG), and a generative AI assistant (named Daphne-G) is configured on it. The effect of the dialog agent and the choice of LLM are assessed by comparing the performance of three different system configurations on a validation question set. A second validation effort is conducted, comparing Daphne-G’s responses to those of a baseline template-based AI assistant, Daphne-VA. Results show that the dialog-based system is necessary for answering complex questions requiring multiple documents. Furthermore, results show that Daphne-G can correctly answer all the questions Daphne-VA can answer, while simultaneously being able to answer a greater number of questions than Daphne-VA. The results suggest that LLMs could significantly improve the outcomes of the tradespace exploration process, which may result in better and more cost-effective mission concepts being implemented.
利用大型语言模型探索贸易空间
本文提出了一种利用大型语言模型(LLM)来提高人工智能(AI)助手在贸易空间探索中的问题解答能力的方法。该方法通过查询由融合数据源组成的信息空间(包含贸易空间探索过程)来运行,并根据收集到的信息做出响应。信息检索过程被建模为内部对话,其中基于 LLM 的对话代理与子查询应答代理进行对话。对下一代土壤水分任务(SM-NG)进行了案例研究,并在其上配置了一个生成式人工智能助手(命名为 Daphne-G)。通过比较三种不同系统配置在验证问题集上的表现,评估了对话代理和 LLM 选择的效果。我们还进行了第二次验证,将 Daphne-G 的回答与基于模板的基准人工智能助手 Daphne-VA 的回答进行了比较。结果表明,基于对话的系统对于回答需要多个文档的复杂问题是必要的。此外,结果表明 Daphne-G 可以正确回答 Daphne-VA 可以回答的所有问题,同时比 Daphne-VA 能回答更多的问题。这些结果表明,LLM 可以显著改善贸易空间探索过程的结果,从而使任务概念得到更好、更具成本效益的实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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