Department of Statistics, Faculty of Science, King Abdulaziz University, Jeddah 21551, Saudi Arabia.
Department of Mathematics and Statistics, CNMS, The University of Dodoma, Dodoma, PO Box: 259, Tanzania.
Comput Math Methods Med. 2021 Apr 22;2021:6634887. doi: 10.1155/2021/6634887. eCollection 2021.
More recently in statistical quality control studies, researchers are paying more attention to quality characteristics having nonnormal distributions. In the present article, a generalized multiple dependent state (GMDS) sampling control chart is proposed based on the transformation of gamma quality characteristics into a normal distribution. The parameters for the proposed control charts are obtained using in-control average run length (ARL) at specified shape parametric values for different specified average run lengths. The out-of-control ARL of the proposed gamma control chart using GMDS sampling is explored using simulation for various shift size changes in scale parameters to study the performance of the control chart. The proposed gamma control chart performs better than the existing multiple dependent state sampling (MDS) based on gamma distribution and traditional Shewhart control charts in terms of average run lengths. A case study with real-life data from ICU intake to death caused by COVID-19 has been incorporated for the realistic handling of the proposed control chart design.
最近,在统计质量控制研究中,研究人员越来越关注具有非正态分布的质量特性。在本文中,提出了一种基于伽马质量特性转换为正态分布的广义多重相关状态(GMDS)抽样控制图。使用控制图在指定形状参数值下的指定平均运行长度(ARL)来获得建议控制图的参数。使用仿真探索了使用 GMDS 抽样的提议伽马控制图的失控 ARL,以研究控制图的性能。在不同的规模参数变化下,提议的伽马控制图的失控 ARL 与基于伽马分布的现有多重相关状态抽样(MDS)和传统的休哈特控制图相比,在平均运行长度方面表现更好。纳入了 ICU 入院到 COVID-19 死亡的真实数据的案例研究,以实现对提议的控制图设计的实际处理。