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Classification of Seemingly Random Failures using Similarity Analysis

机译:使用相似性分析的看似随机失败的分类

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摘要

Companies in the commercial vehicle industry use various quality methods to reduce the appearance of failures in the field. However, increasing reliability, continuous improvement of the products, and additionally, the growing number of possible failure patterns of commercial vehicles lead to the appearance of seemingly random failures. These failures and their causes are not comparable with others considering obvious features at the first sight, but a closer look with expert knowledge enables a grouping of similar failure cases. This paper presents a concept for the classification of seemingly random failures by using the general ideas of case-based reasoning (CBR). Occurred field failures are described with defined features in a so called "failure case description". AH these case descriptions are collected in a data base. The data base has to be analyzed to get an impression of the general failure distribution and the extent of random failures. On this basis, the failure data can be assigned according to logical correlations and similar failure patterns. Further comparison algorithms can be used to assign the pre-grouped failure cases depending on what the user wants to know. By using this concept, the companies can avoid high investment of time and money in the troubleshooting process and realize a more effective way of avoiding random failures.
机译:公司在商用车行业使用各种质量的方法来减少现场失败的外观。然而,增加可靠性,持续改进产品,另外,商用车辆的可能失效模式的越来越多地导致看似随机失败的外观。这些故障及其原因与考虑到一见钟情的明显特征,但与专家知识仔细看起来可以进行类似的故障情况。本文通过使用基于案例的推理(CBR)的一般思路来说,看似随机失败的分类概念。发生了现场故障,以所谓的“故障案例描述”中的定义功能描述。 AH在数据库中收集这些情况说明。必须分析数据库以获得一般故障分布的印象和随机故障的程度。在此基础上,可以根据逻辑相关性和类似的故障模式来分配故障数据。进一步的比较算法可用于分配预先分组的故障情况,具体取决于用户想要知道的内容。通过使用这一概念,这些公司可以避免在故障排除过程中避免时间和金钱的高投资,并实现更有效的方式来避免随机失败。

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