Automated Validation of Textual Constraints Against AutomationML via LLMs and SHACL
Automated Validation of Textual Constraints Against AutomationML via LLMs and SHACL
AutomationML (AML) enables standardized data exchange in engineering, yet existing recommendations for proper AML modeling are typically formulated as informal and textual constraints. These constraints cannot be validated automatically within AML itself. This work-in-progress paper introduces a pipeline to formalize and verify such constraints. First, AML models are mapped to OWL ontologies via RML and SPARQL. In addition, a Large Language Model translates textual rules into SHACL constraints, which are then validated against the previously generated AML ontology. Finally, SHACL validation results are automatically interpreted in natural language. The approach is demonstrated on a sample AML recommendation. Results show that even complex modeling rules can be semi-automatically checked -- without requiring users to understand formal methods or ontology technologies.
Tom Westermann、Aljosha K?cher、Felix Gehlhoff
自动化基础理论自动化技术、自动化技术设备
Tom Westermann,Aljosha K?cher,Felix Gehlhoff.Automated Validation of Textual Constraints Against AutomationML via LLMs and SHACL[EB/OL].(2025-06-12)[2025-06-22].https://arxiv.org/abs/2506.10678.点此复制
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