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Fault Diagnosis Based on Prior Knowledge for Train Air-Conditioning Unit

机译:基于火车空调单元的先前知识的故障诊断

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The fault diagnosis of train air-conditioning unit is becoming extremely necessity because train is often occupied with many passengers for a long time. However, limited diagnostic accuracy has become a bottleneck of train air-conditioning unit fault diagnosis. In the paper, two new fault diagnosis methods based on prior knowledge (PK) for train air-conditioning unit was proposed. First of all, taking KLD-29 as an example, according to distribution characteristic of data samples from data acquisition scheme on train air-conditioning unit 6 super spheres were constructed. Secondly, every super sphere was incorporated to its responding optimization problem as constraint and six diagnosis models were obtained. At last, we diagnose the fault of train air-conditioning unit by 1-v-6 diagnostic scheme based on the six models. In experiment, we chose a baseline method and the proposed methods as comparisons. Experimental results showed the PSSVM-based ESOP scheme is more appropriate for single-label failure while for fault diagnosis of multi-label, 1-v-6 PSSVM-based scheme is more suitable than 1-v-6 PSSVM-based ESOP scheme.
机译:火车空调单元的故障诊断变得非常必要,因为火车往往很长一段时间占用了许多乘客。然而,有限的诊断准确性已成为火车空调单元故障诊断的瓶颈。在本文中,提出了两种基于现有知识(PK)用于列车空调单元的新故障诊断方法。首先,以KLD-29为例,根据来自列车空调单元6上的数据采集方案的数据样本的分布特性,构造了超级球。其次,每个超级球体都被纳入其响应优化问题,因为获得了约束和六种诊断模型。最后,我们通过基于六种模型的1V-6诊断方案诊断火车空调单元的故障。在实验中,我们选择了基线方法和所提出的方法作为比较。实验结果表明,基于PSSVM的ESOP方案更适合单标记失效,同时用于多标签的故障诊断,基于1-6个PSSVM的方案更适合于基于1-V-6 PSSVM的ESOP方案。

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