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Mining ship deficiency correlations from historical port state control (PSC) inspection data

机译:来自历史港口状态控制(PSC)检查数据的挖掘缺乏相关性

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Early warning on the ship deficiency is crucial for enhancing maritime safety, improving maritime traffic efficiency, reducing ship fuel consumption, etc. Previous studies focused on the ship deficiency exploration by mining the relationships between the ship physical deficiencies and the port state control (PSC) inspection results with statistical models. Less attention was paid to discovering the correlation rules among various parent ship deficiencies and subcategories. To address the issue, we proposed an improved Apriori model to explore the intrinsic mutual correlations among the ship deficiencies from the PSC inspection dataset. Four typical ship property indicators (i.e., ship type, age, deadweight and gross tonnage) were introduced to analyze the correlations for the ship parent deficiency categories and subcategories. The findings of our research can provide basic guidelines for PSC inspections to improve the ship inspection efficiency and maritime safety.
机译:船舶缺陷的预警对于提高海上安全,提高海上交通效率,降低船舶燃料消耗等至关重要。之前的研究专注于船舶物理缺陷与港口国家控制之间的关系(PSC)之间的关系 检查结果统计模型。 在各种父母船舶缺陷和子类别中发现相关规则的支付不太关注。 为了解决这个问题,我们提出了一种改进的APRiori模型,探讨了PSC检查数据集的船舶缺陷中的内在互相关。 引入了四种典型的船舶物质指标(即,船舶类型,年龄,致命和总吨位),分析了船长缺乏类别和子类别的相关性。 我们的研究结果可以为PSC检查提供基本准则,以提高船舶检查效率和海事安全。

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