A two-stage approach for modeling inverse S-shaped wear processes of cutting tools

R. Jiang
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Abstract

Wear is one of major failure causes of cutting tools. Monitoring the wear process of a cutting tool and predicting its residual life have attracted wide attentions. A stochastic wear process model that relates the wear amount to cumulative cutting time is needed so as to make the inspection and replacement decisions of the cutting tool. The wear amount as a function of cutting time is often inverse S-shaped. That is, the wear rate curve is bathtub-shaped. The works that explicitly model inverse S-shaped wear processes are rare. This paper presents a two-stage approach for modeling this type of wear processes. The proposed approach divides the process into two stages with the inflection point of the wear curve as the boundary of stages. The task in the first stage is to collect data and the tasks in the second stage are to predict residual life and make inspection and replacement decisions. The stochastic wear process model obtained from the proposed approach is simple and realistic, and does not need many data. A real-world example is included to illustrate the simplicity and appropriateness of the proposed approach.
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刀具反s形磨损过程的两阶段建模方法
磨损是切削刀具失效的主要原因之一。刀具磨损过程的监测和刀具剩余寿命的预测已经引起了广泛的关注。需要建立一个将磨损量与累积切削时间联系起来的随机磨损过程模型,以便对刀具进行检查和更换决策。磨损量作为切削时间的函数通常呈反s形。也就是说,磨损率曲线呈浴缸形。明确地模拟反s形磨损过程的工作是罕见的。本文提出了一个两阶段的方法来建模这种类型的磨损过程。该方法以磨损曲线的拐点为边界,将磨损过程分为两个阶段。第一阶段的任务是收集数据,第二阶段的任务是预测剩余寿命并做出检查和更换决策。该方法得到的随机磨损过程模型简单、真实,不需要太多的数据。其中包括一个真实世界的示例,以说明所建议的方法的简单性和适当性。
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