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首页> 外文期刊>Tribology International >Development of advanced quantitative analysis methods for wear particle characterization and classification to aid tribological system diagnosis
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Development of advanced quantitative analysis methods for wear particle characterization and classification to aid tribological system diagnosis

机译:先进的磨损颗粒表征和分类定量分析方法的开发,有助于摩擦系统的诊断

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摘要

Classification of wear particles is performed in two steps, i.e. first a particle to be classified is characterized by surface feature parameters such as roughness, directionality, homogeneity, periodicity, etc. and then, the particle is assigned to a specific class using these parameters. However, a significant limitation of this approach is that surface parameters are often not unique to a specific surface topography and their values may change significantly with scale, orientation angle and position at which the particle data was acquired. Various attempts were made to overcome this limitation by selecting a core set of parameters which ensures that wear particles are accurately classified. However, the parameter selection is usually cumbersome and requires lengthy computation. Furthermore, there is no guarantee that parameters selected are sensitive enough to separate particles belonging to different classes. Thus, a new classification technique based entirely on dissimilarity measures (e.g. Euclidean, Baddeley's distances), calculated between surface images of an unclassified particle and classified particles, was developed. The classification process is based on assigning a particle to a class of particles with the smallest dissimilarity measure. This idea arises naturally from the two facts: (i) compactness, similar objects are in close proximity to each other in their representation space, while different objects are far apart, and (ii) true representation, if objects are close to each other in their representation space they belong to the same class. In this paper, an overview of recent advances and developments in the area of particle classification based on dissimilarity measures is presented with a particular emphasis on constructing a simple and accurate classifier.
机译:磨损颗粒的分类分两个步骤进行,即首先通过表面特征参数(例如粗糙度,方向性,均匀性,周期性等)对要分类的颗粒进行特征化,然后使用这些参数将其分配给特定的类别。但是,此方法的显着局限性是表面参数通常不是特定表面形貌所独有的,并且它们的值可能会随着比例,方向角和获取粒子数据的位置而显着变化。通过选择一组核心参数来确保克服磨损的限制,已进行了各种尝试,以确保对磨损颗粒进行准确分类。然而,参数选择通常很麻烦并且需要冗长的计算。此外,不能保证所选参数足够敏感以分离属于不同类别的粒子。因此,开发了一种完全基于不相似性度量(例如,欧几里得距离,巴德利距离)的新分类技术,该方法是在未分类粒子的表面图像和已分类粒子之间进行计算的。分类过程基于将粒子分配给具有最小相似度度量的一类粒子。这个想法自然是由以下两个事实引起的:(i)紧凑,相似的对象在其表示空间中彼此接近,而不同的对象彼此隔开,以及(ii)真实的表示(如果对象在视图空间中彼此靠近)它们的表示空间,它们属于同一类。在本文中,对基于不相似性度量的粒子分类领域的最新进展和发展进行了概述,特别着重于构造一个简单而准确的分类器。

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