基于相关度的铁路故障数据频繁模式挖掘算法

Jiaxu Guo , Ding Ding , Peihan Yang , Qi Zou , Yaping Huang
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引用次数: 0

摘要

通过高效的数据挖掘算法实现故障知识关联,对提高铁路生产运营效率具有重要意义。然而,数据挖掘领域的高效用定量频繁模式挖掘算法仍存在时间-内存性能低、不易扩展等问题。在此背景下,我们提出了一种基于关联度的频繁模式挖掘算法,命名为关联高效用定量项集挖掘(RHUQI-Miner),以实现对铁路故障数据的有效挖掘。该算法构建了故障数据的项相关度结构,并给出了剪枝优化策略,以找到相关度较高的频繁模式,减少冗余和无效频繁模式。随后,在挖掘过程中采用固定模式长度策略修改项的效用信息,使算法能根据实际数据情况控制输出频繁模式的长度,进一步提高算法的性能和实用性。在真实故障数据集上的实验结果表明,RHUQI-Miner 可以有效减少挖掘过程中的时间和内存消耗,从而为差异化精准维护策略提供数据支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A related degree-based frequent pattern mining algorithm for railway fault data

It is of great significance to improve the efficiency of railway production and operation by realizing the fault knowledge association through the efficient data mining algorithm. However, high utility quantitative frequent pattern mining algorithms in the field of data mining still suffer from the problems of low time-memory performance and are not easy to scale up. In the context of such needs, we propose a related degree-based frequent pattern mining algorithm, named Related High Utility Quantitative Item set Mining (RHUQI-Miner), to enable the effective mining of railway fault data. The algorithm constructs the item-related degree structure of fault data and gives a pruning optimization strategy to find frequent patterns with higher related degrees, reducing redundancy and invalid frequent patterns. Subsequently, it uses the fixed pattern length strategy to modify the utility information of the item in the mining process so that the algorithm can control the length of the output frequent pattern according to the actual data situation and further improve the performance and practicability of the algorithm. The experimental results on the real fault dataset show that RHUQI-Miner can effectively reduce the time and memory consumption in the mining process, thus providing data support for differentiated and precise maintenance strategies.

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