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Assessment of Antiwear Properties of Lube Oils Using Online Visual Ferrograph Method

机译:在线视觉铁谱仪法评估润滑油的抗磨性能

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摘要

The four-ball wear test is currently a mainstream method for assessing antiwear properties of lube oil. However, the assessment is normally based on a comparison of the final wear scar diameter and wear progressions cannot be well presented. A new experimental method for assessing antiwear properties of lube oil with near real-time (NRT) wear information was developed. Wear debris from a ball-on-disc tribometer under boundary lubrication was deposited by an online visual ferrograph (OLVF) every 6 min, and NRT information on wear debris generation rate was obtained. Amathematical model of the lubrication system serving the ball-disc tribopair was built, and an index of particle coverage area (IPCA) was approximately proportional to wear rate (by weight) of the ball-disc tribopair. IPCA curves characterized the antiwear performance of lube oil by three indictors, running-in duration, index of runningin wear amount, and index of steady-state wear rate. With the three indictors, a rule assessing the antiwear performance between two oils was proposed. Accordingly, wear tests of eight oils were performed, and their antiwear properties were distinguished by the assessment rule. Under the same setting, the assessing experiment of the same oil was conducted five times. According to the statistical analyses, the experimental method exhibited considerable repeatability.
机译:目前,四球磨损试验是评估润滑油抗磨性能的主流方法。但是,该评估通常基于最终磨损痕直径的比较,因此无法很好地显示磨损进度。开发了一种利用近实时(NRT)磨损信息评估润滑油抗磨性能的新实验方法。每隔6分钟用在线视觉铁谱仪(OLVF)沉积在边界润滑下的圆盘摩擦计上的磨屑,并获得有关磨屑产生率的NRT信息。建立了用于球盘摩擦副的润滑系统的数学模型,颗粒覆盖面积指数(IPCA)与球盘摩擦副的磨损率(按重量计)大致成比例。 IPCA曲线通过三个指标,磨合持续时间,磨合磨损量指数和稳态磨损率指数来表征润滑油的抗磨性能。针对这三个指标,提出了一种评估两种油之间抗磨性能的规则。因此,进行了八种油的磨损测试,并通过评估规则区分了它们的抗磨性能。在相同的设置下,对同一油的评估实验进行了五次。根据统计分析,该实验方法显示出相当大的可重复性。

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