大小模型协同驱动的舰载机消防特情可解释应急决策方法

Explainable Emergency Decision-making Method for Carrier-based Aircraft Fire Incidents Driven by Large-Small Model Collaboration

  • 摘要: 【目的】舰载机消防特情处置具有高度复杂性与耦合性,而消防特情决策模型的“黑箱”特性导致指挥员难以理解其决策逻辑,从而产生信任障碍。为解决上述问题,本文提出一种大小模型协同的可解释应急决策框架。【方法】首先,该框架利用基于Conv2D的意图解耦小模型,从消防特情处置特征中自适应分离出“资源调度”、“风险控制”等潜在意图;随后,通过线性映射将解耦后的意图嵌入对齐至大语言模型的表示空间,并通过预先构造好的提示词将上述意图嵌入注入到大模型中进行协同微调,以增强模型对舰载机复杂火灾场景的理解;最终,在推理阶段,通过预先构造的提示词将火灾事件特征和小模型推荐的处置措施来引导大模型,使其生成结构明确、条理清晰的可解释应急处置方案。【结果】实验结果表明,在舰载机火灾应急处置数据集上,所提框架的方案推荐准确率(Recall@7)提升了5.8%;在GPTScore、BERTScore等可解释性评估指标上,其生成结果的一致性与合理性均优于同参数规模的基线模型。【结论】相关实验表明,该方法可以有效缓解舰载机消防特情处置决策中的黑箱问题,提升了应急决策推荐的准确性和可解释性,为舰载机消防特情处置及相关研究提供有力支撑。

     

    Abstract: ObjectivesEmergency response for carrier-based aircraft fires is characterized by high complexity and strong coupling. However, the “black-box” nature of firefighting emergency decision-making models makes it difficult for commanders to understand the underlying decision logic, leading to trust barriers. To address this issue, this study proposes an interpretable emergency decision-making framework based on the collaboration between a small model and a large model.MethodsFirst, the framework employs a Conv2D-based intent-disentanglement small model to adaptively separate latent intents—such as “resource allocation” and “risk control”—from the features of firefighting emergency response. These disentangled intent embeddings are then aligned to the representation space of a large language model through linear mapping. Using carefully designed prompts, the aligned intent embeddings are injected into the large model for collaborative fine-tuning, enhancing its understanding of complex carrier-based aircraft fire scenarios. During inference, the predefined prompts incorporate both fire-event features and the small model’s recommended response actions to guide the large model in generating structured and logically coherent interpretable emergency response plans.Results Experimental results on a carrier-based aircraft fire emergency response dataset show that the proposed framework improves action-recommendation accuracy (Recall@7) by 5.8%. Furthermore, on interpretability evaluation metrics such as GPTScore and BERTScore, the generated responses demonstrate greater consistency and rationality compared with baseline models of similar parameter size.ConclusionsThe findings indicate that the proposed method effectively alleviates the black-box issue in carrier-based aircraft firefighting emergency decision-making, improving both the accuracy and interpretability of emergency response recommendations. This provides strong support for carrier-based aircraft firefighting operations and related research.

     

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