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Fault Diagnosis Based on Data Mining: A Case Study in Nanjing

机译:基于数据挖掘的故障诊断:南京的案例研究

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Nowadays, metro is playing an important role in our life all over the world. People like travelling or going to work by metro for its advantages such as avoiding traffic jam and saving money, but there are many accidents every year, so the fault diagnosis of the metro is very important because it is closely related to the safety of passengers. And the fault diagnosis of the door control system is the most important among the metro systems because it will injure passengers most if the door has some faults. In this paper, we will attempt to apply the data mining to get fault diagnosis of the door control system online. Firstly, we will give one method for association analysis based on the characteristics of the door control system, and then apply it online to predict the fault of the door control system. Lastly, the experiments show the efficiency of the proposed algorithm.
机译:如今,地铁在世界各地的生活中发挥着重要作用。人们喜欢旅行或通过地铁工作的优势,例如避免交通堵塞和省钱,但每年有许多事故,因此地铁的故障诊断非常重要,因为它与乘客的安全密切相关。门控制系统的故障诊断是地铁系统中最重要的,因为如果门有一些故障,它将伤害乘客。在本文中,我们将尝试应用数据挖掘以在线诊断门控制系统。首先,我们将基于门控制系统的特性提供一种用于关联分析的方法,然后在线将其应用于预测门控制系统的故障。最后,实验表明了所提出的算法的效率。

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