基于多视角图对比学习的舰载机保障作业应急决策方法

Emergency decision-making method for carrier-based aircraft support operations based on multi-view graph contrastive learning

  • 摘要:
    目的 针对传统舰载机保障作业应急决策方法过于依赖历史案例库和指挥官的经验、数据稀疏性显著、事故特征与子方案关联性挖掘不充分等问题,提出一种多视角图对比学习模型。
    方法 该模型将舰载机保障作业应急决策建模为针对突发事故多属性特征推荐多条子方案的问题。首先,构建无增强和有增强两个视角下的模型辅助视图:基于事故特征和子方案的内在关联构建事故特征协同图和子方案协同图;通过对事故特征−子方案交互图进行近似奇异值分解和噪声掩码增强得到2个有增强类辅助视图。然后,充分利用事故特征−子方案交互图和多角度辅助视图对比学习的自监督信息,提升模型推荐的准确度。采用一种去偏对比损失函数,通过修正负样本采样偏差抑制传统对比损失的假阴性干扰,提升模型推荐的准确性和鲁棒性。
    结果 仿真数据集的实验结果表明,所提模型在方案推荐的召回率、精准率、归一化折损累计增益、平均倒数排名等指标上均优于单一角度的图对比学习类模型和传统的案例推理类方法,当推荐子方案数量为10时,召回率和归一化折损累计增益相较图对比学习类最优对比方法HGCL分别提升了1.14%和2.39%,相较案例推理类方法CBR分别提升了64.36%和43.1%。
    结论 实验结果验证了所提出的多视角图对比学习框架在建模自监督信息、缓解交互数据稀疏性上的有效性。

     

    Abstract:
    Objective  To address the issues of traditional emergency decision-making methods for carrier-based aircraft maintenance operations, such as excessive reliance on historical case databases and commander experience, significant data sparsity, and insufficient mining of correlations between emergency features and sub-plans, this paper proposes a multi-view graph contrastive learning model.
    Method  This study formulates the emergency decision-making problem for carrier-based aircraft support operations as a task of recommending multiple sub-plan based on the multi-attribute characteristics of emergencies. First, the model constructs two types of auxiliary views: non-augmented and augmented. On one hand, it builds an emergency feature collaboration graph and a sub-plan collaboration graph based on the intrinsic relationships between emergency features and sub-plans. On the other hand, it generates two augmented auxiliary views by applying approximate singular value decomposition and noise masking to the emergency feature-sub-plan interaction graph. By fully leveraging the self-supervised information from the interaction graph and multi-view contrastive learning, the model improves recommendation accuracy. Additionally, a debiased contrastive loss function is adopted to mitigate false-negative interference in traditional contrastive loss by correcting negative sample sampling bias, enhancing both the accuracy and robustness of recommendations.
    Results  The experimental results on the simulated dataset demonstrate that the proposed model outperforms both single-perspective graph contrastive learning models and traditional case-based reasoning methods in terms of Recall, Precision, Normalized Discounted Cumulative Gain (NDCG), and Mean Reciprocal Rank (MRR). Specifically, when the number of recommended sub-solutions is 10, the Recall and NDCG of the proposed model show improvements of 1.14% and 2.39%, respectively, compared to the best graph contrastive learning baseline HGCL, and significant enhancements of 64.36% and 43.1%, respectively, over the case-based reasoning method CBR.
    Conclusion  The experimental results validate the effectiveness of the proposed multi-view graph contrastive learning framework in modeling self-supervised information and alleviating the sparsity of interaction data.

     

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