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Wear particle classification in a fuzzy grey system

机译:模糊灰色系统中的磨损颗粒分类

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The analysis and identification of wear particles for machine condition monitoring is usually conducted by experienced inspectors, and, thus, the process is usually very time-consuming. To overcome this obstacle, grey system theory has been applied in this study. The theory of grey systems is a new technique to perform prediction, relational analysis and decision making in many areas. In this paper, the theory of grey relational grades has been used to classify six types of metallic wear debris whose three-dimensional images are acquired from laser scanning confocal microscopy. Their boundary morphology and surface topology are then described by certain numerical parameters. Since the parameters have different levels of significance for different types of wear debris for particle identification, weighting factors of the parameters have been taken into consideration. To determine the weighting factors for the study, fuzzy logic has been applied. This study has demonstrated that a grey system combined with fuzzy logic can be used to classify wear particles satisfactorily.
机译:用于机器状态监测的磨损颗粒的分析和识别通常由经验丰富的检查员进行,因此该过程通​​常非常耗时。为了克服这一障碍,本研究应用了灰色系统理论。灰色系统理论是在许多领域中进行预测,关系分析和决策的新技术。本文使用灰色关联度理论对六种类型的金属磨损碎片进行分类,这些碎片的三维图像是通过激光扫描共聚焦显微镜获得的。然后通过某些数值参数描述它们的边界形态和表面拓扑。由于参数对于用于颗粒识别的不同类型的磨损碎片具有不同的重要性水平,因此已经考虑了参数的加权因子。为了确定研究的加权因子,已经应用了模糊逻辑。这项研究表明,结合模糊逻辑的灰色系统可用于对磨损颗粒进行令人满意的分类。

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