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Data fusion for automating condition monitoring of wooden railway sleepers

机译:数据融合,可自动监测木制轨枕的状态

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Wooden railway sleeper inspections in Sweden are currently done by hand. That is to say, a human inspector in charge of the maintenance activities visually examines each structure in turn for the presence of cracks on the sleeper. Where necessary some deeper inspection may be carried out on site, for example using an axe to hit and judge the condition of the sleeper by listening to the sound produced. Though the manual procedure uses non-destructive testing methods (visual and sound analysis), decision-making is largely based on intuition; moreover the process is rather slow, expensive and also requires skilled and trained staff. Maintaining an even quality standard is another serious issue. Hence, it is desired to automate the human inspection process by proposing automatic testing procedures for future inspections concerning the condition of the sleeper.rnStudies based on emulation of the human inspection process have been considered a promising route of enquiry for automation. Such an emulation process is achieved by selecting and evaluating two non-destructive inspection methods. The first method (impact acoustic analysis) aims to build an automatic system to replace the usage of an axe for distinguishing sounds. The second method (visual analysis) is to develop an appropriate machine vision algorithm to replicate the visual examination.rnFurther, the above-mentioned methods were fused (data fusion) to generate a single output condition concerning the condition of the sleeper. In the current work, fusion has been achieved in mainly three levels, namely sensor-level, feature-level and classifier-level. Experimental results achieved in this work indicate that data fusion has achieved superior performance when compared with using data from one method at a time.
机译:目前,瑞典的木制铁路卧铺检查是手工完成的。也就是说,负责维护活动的人员检查员依次目视检查每个结构是否在轨枕上有裂纹。如有必要,可在现场进行更深入的检查,例如使用斧头敲打并通过听所产生的声音判断卧铺的状况。尽管手动程序使用非破坏性测试方法(视觉和声音分析),但决策很大程度上基于直觉。此外,该过程相当缓慢,昂贵,并且还需要熟练且训练有素的人员。维持均匀的质量标准是另一个严重的问题。因此,期望通过提出自动测试程序来提出关于卧铺状况的自动测试程序,以使人类检查程序自动化。基于模拟人类检查程序的研究已被认为是自动化研究的有希望的途径。通过选择和评估两种无损检查方法可以实现这种仿真过程。第一种方法(碰撞声学分析)旨在建立一个自动系统,以代替使用斧头来区分声音。第二种方法(视觉分析)是开发一种合适的机器视觉算法来复制视觉检查。此外,将上述方法融合(数据融合)以生成与卧铺条件有关的单个输出条件。在当前的工作中,融合主要在三个级别上实现,即传感器级别,特征级别和分类器级别。在这项工作中获得的实验结果表明,与一次使用一种方法的数据相比,数据融合已实现了卓越的性能。

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