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Research of K-MEANS analysis model on high-speed railway CIR device maintenance

机译:高速铁路CIR设备维修的K-MEANS分析模型研究

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When High-speed train runs, the strength of data field signal determines whether the CIR device on the High-speed train can work normally. While proper functioning of the CIR device affects the normal operation of the train deeply. The K-MEANS-analysis-model proposed in this paper, applies the K-MEANS method of machine learning to train numerous data duplicate which generated by different locomotives that run in the same interval. In this way, we obtain the duplicate of normal field strength values in this interval. We employ it and combine with the mean-algorithm and the difference-algorithm to analysis the malfunction reason accurately. In this way we have reduced the run-times of the field inspection vehicle successfully, so as to cut down the operating costs effectively.
机译:高速列车运行时,数据字段信号的强度决定了高速列车上的CIR设备是否可以正常工作。 CIR设备的正常运行会严重影响火车的正常运行。本文提出的K-MEANS分析模型采用了机器学习的K-MEANS方法来训练由相同时间间隔运行的不同机车生成的大量数据重复。这样,我们在此间隔中获得了正常场强值的副本。我们运用它并结合均值算法和差异算法来准确分析故障原因。通过这种方式,我们成功地减少了现场检查车辆的运行时间,从而有效地降低了运营成本。

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