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Multi-label classification for simultaneous fault diagnosis of marine machinery: A comparative study

机译:海洋机械同时故障诊断的多标签分类:比较研究

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摘要

Fault diagnosis of marine machinery is of utmost importance in modern ships. The widely used machine learning techniques have made it possible to realize intelligent diagnosis by using large amounts of sensory data. However, the detection of simultaneous faults is still a challenge in the absence of simultaneous fault data. Multi-label classification has recently gained popularity in simultaneous fault diagnosis with promising results. The contribution of this work is to carry out a comparative study of several state-of-the-art multi-label classification algorithms for simultaneous fault diagnosis of marine machinery based on single fault data. The proposed method is experimentally validated with a dataset generated from a real data validated simulator of a Frigate. The experimental results show the effectiveness of the proposed method, which can provide decision support for the application of multi-label classification in the simultaneous fault diagnosis of similar marine systems.
机译:海洋机械故障诊断在现代船舶中至关重要。 广泛使用的机器学习技术使得通过使用大量的感官数据实现智能诊断。 然而,在没有同时故障数据的情况下,同时故障的检测仍然是挑战。 多标签分类最近在同时出现故障诊断中获得了普及,具有前景的结果。 这项工作的贡献是对几种最先进的多标签分类算法进行比较研究,用于基于单个故障数据同时诊断海洋机械的故障诊断。 所提出的方法是通过从Riave的真实数据验证的模拟器生成的数据集进行实验验证。 实验结果表明了该方法的有效性,可以为在类似海洋系统同时诊断中应用多标签分类的决策支持。

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