A Type-2 Fuzzy u-Control Chart Considering Probability-Based Average Run Length

N. H. Mohd Razali, Lazim Abdullah, A. T. Ab Ghani, Asyraf Afthanorhan, Mojtaba Zabihinpour
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Abstract

Fuzzy sets are an emerging trend in shaping the development of control charts for statistical process control. The sets are germane to vague data that comes from incomplete or inaccurate measurements. Nevertheless, fuzzy sets are inadequate in some areas of industry since their membership functions are crisp numbers. The fuzzy sets are not fully able to compute higher levels of uncertainty, which might degrade the performance of the analysis. Therefore, type-2 fuzzy sets are proposed to be merged with control charts since these sets are hypothesized to be more capable of detecting a defect in process control. This paper aims to develop interval type-2 fuzzy u (IT2Fu) charts as a new approach to detecting defects. In addition, this paper presents a comparative analysis of performances between traditional u-control charts, type-1 fuzzy u-control charts, and type-2 fuzzy u-control charts. 23 samples of lubricant data with 48 subgroups were examined to identify the defects. The output showed that all of the control charts produced almost similar results except for data 14, which is “out of control” in IT2Fu-control charts but “in control” in traditional u-control charts and “rather in control” in type-1 fuzzy u-control charts. Furthermore, the performances of the charts were compared using a probability-based average run length (ARL), where probability type 1 error is computed. It was found that the ARL value of the IT2Fu-control chart showed the lowest value among the three types of charts. The analysis indicated that the IT2Fu-control chart outperformed the traditional u-control chart and the type-1 fuzzy u-control chart. The results obtained seem to support the idea that IT2Fu-control charts are more sensitive compared to type 1 fuzzy u-control charts and traditional u-control charts, so that IT2Fu-control charts are able to adequately support incomplete and vague data on process control.
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考虑到基于概率的平均运行长度的 2 型模糊 u 控制图
模糊集是为统计过程控制制定控制图的一种新兴趋势。模糊集适用于来自不完整或不准确测量的模糊数据。然而,由于模糊集的成员函数是清晰的数字,因此在某些工业领域并不适用。模糊集不能完全计算更高层次的不确定性,这可能会降低分析的性能。因此,有人提出将 2 型模糊集与控制图合并,因为假设 2 型模糊集更能检测过程控制中的缺陷。本文旨在开发区间 2 型模糊 u (IT2Fu) 控制图,作为检测缺陷的一种新方法。此外,本文还对传统 u 控制图、1 型模糊 u 控制图和 2 型模糊 u 控制图的性能进行了比较分析。研究了 23 个润滑油数据样本,共 48 个子组,以确定缺陷。结果表明,除了数据 14 在 IT2Fu 控制图中处于 "失控 "状态,但在传统 U 控制图中处于 "受控 "状态,而在类型-1 模糊 U 控制图中处于 "相当受控 "状态之外,所有控制图都产生了几乎相似的结果。此外,还使用基于概率的平均运行长度(ARL)对图表的性能进行了比较,其中计算了概率类型 1 误差。结果发现,在三种图表中,IT2Fu 控制图的 ARL 值最低。分析表明,IT2Fu 控制图的性能优于传统 u 控制图和 1 型模糊 u 控制图。得出的结果似乎支持了这样一种观点,即 IT2Fu 控制图与 1 型模糊 U 控制图和传统 U 控制图相比更加灵敏,因此 IT2Fu 控制图能够充分支持过程控制中的不完整和模糊数据。
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