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Research on risk decision-making generation method for water conservancy project based on multimodal knowledge graph and large language model

Author

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  • Libo Yang
  • Yuan Li
  • Junhua Tan
  • Libo Mao

Abstract

Traditional knowledge graphs of water conservancy project risks have supported risk decision-making. However, they are constrained by limited data modalities and low accuracy in information extraction. A multimodal water conservancy project risk knowledge graph is proposed in this study, along with a synergistic strategy involving multimodal large language models Risk decision-making generation is facilitated through a multi-agent agentic retrieval-augmented generation framework. To enhance visual recognition, a DenseNet-based image classification model is improved by incorporating single-head self-attention and coordinate attention mechanisms. For textual data, risk entities such as locations, components, and events are extracted using a BERT-BiLSTM-CRF architecture. These extracted entities serve as the foundation for constructing the multimodal knowledge graph. To support generation, a multi-agent agentic retrieval-augmented generation mechanism is introduced. This mechanism enhances the reliability and interpretability of risk decision-making outputs. In experiments, the enhanced DenseNet model outperforms the original baseline in both precision and recall for image recognition tasks. In risk decision-making tasks, the proposed approach—combining a multimodal knowledge graph with a multi-agent agentic retrieval-augmented generation method—achieves strong performance on BERTScore and ROUGE-L metrics. This work presents a novel perspective for leveraging multimodal knowledge graphs in water conservancy project risk management.

Suggested Citation

  • Libo Yang & Yuan Li & Junhua Tan & Libo Mao, 2025. "Research on risk decision-making generation method for water conservancy project based on multimodal knowledge graph and large language model," PLOS ONE, Public Library of Science, vol. 20(8), pages 1-21, August.
  • Handle: RePEc:plo:pone00:0330258
    DOI: 10.1371/journal.pone.0330258
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