Antonio De Santis, Marco Balduini, Federico De Santis, Andrea Proia, Arsenio Leo, Marco Brambilla, Emanuele Della Valle
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引用次数: 0
摘要
航空航天制造公司(如泰雷兹阿莱尼亚宇航公司)设计、开发、集成、验证和确认的产品具有高复杂性和低产量的特点。他们仔细记录每个产品的所有阶段,但由于文档中数据的异质性和非结构化性质,跨产品分析具有挑战性。在本文中,我们提出了一种混合方法,利用知识图谱(KG)和大型语言模型(LLM)来提取和验证文档中包含的数据。我们考虑的案例研究侧重于与卫星电子板相关的测试数据。为此,我们扩展了语义传感器网络本体。我们将报告的元数据存储在 KG 中,而实际测试结果则存储在可通过虚拟知识图谱访问的 parquet 中。验证过程采用基于 LLM 的方法进行管理。我们还进行了一项enchmarking 研究,以评估最先进的 LLM 在执行这项任务时的性能。最后,我们分析了将现有的人工数据提取和验证流程自动化以进行后续交叉报告分析的成本和收益。
Integrating Large Language Models and Knowledge Graphs for Extraction and Validation of Textual Test Data
Aerospace manufacturing companies, such as Thales Alenia Space, design,
develop, integrate, verify, and validate products characterized by high
complexity and low volume. They carefully document all phases for each product
but analyses across products are challenging due to the heterogeneity and
unstructured nature of the data in documents. In this paper, we propose a
hybrid methodology that leverages Knowledge Graphs (KGs) in conjunction with
Large Language Models (LLMs) to extract and validate data contained in these
documents. We consider a case study focused on test data related to electronic
boards for satellites. To do so, we extend the Semantic Sensor Network
ontology. We store the metadata of the reports in a KG, while the actual test
results are stored in parquet accessible via a Virtual Knowledge Graph. The
validation process is managed using an LLM-based approach. We also conduct a
benchmarking study to evaluate the performance of state-of-the-art LLMs in
executing this task. Finally, we analyze the costs and benefits of automating
preexisting processes of manual data extraction and validation for subsequent
cross-report analyses.