基于鲁棒聚类的第一阶段广义线性剖面监测方法

Davood Saremian, R. Noorossana, S. Raissi, P. Soleimani
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引用次数: 0

摘要

概要监控是一种新的统计质量控制方法,用于评价描述变量和响应变量之间的函数关系,以度量过程质量。该领域的大多数研究关注的是响应变量服从正态分布函数的过程,但在许多行业和服务中,这种假设并不成立。历史数据集中异常值的存在可能对阶段I参数估计产生有害影响。因此,本文提出了一种基于鲁棒聚类的广义线性轮廓参数估计方法。该方法降低了数据污染对广义线性模型参数估计的影响,从而提高了T^2控制图的性能。对两种基于阶跃变换的广义线性曲线,包括logistic曲线和泊松曲线,进行了性能评价。仿真结果表明,与非聚类方法相比,基于聚类的方法具有优越性,可以更准确地估计参数。
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Robust Cluster-Based method for monitoring generalized linear profiles in phase I
Profile monitoring is one of the new statistical quality control methods used to evaluate the functional relationship between the descriptive and response variables to measure the process quality. Most of the studies in this field concern processes whose response variables follow the normal distribution function, but in many industries and services, this assumption is not true. The presence of outliers in the historical data set could have a deleterious effect on phase I parameter estimation. Therefore, in this paper, we propose a robust cluster-based method for estimating the parameters of generalized linear profiles in phase I. In this method, the effect of data contamination on estimating the generalized linear model parameters is reduced and as a result, the performance of T^2 control charts is improved. The performance of this method has been evaluated for two specific modes of generalized linear profiles, including logistic and Poisson profiles, based on a step shift. The simulation results indicate the superiority of this cluster-based method in comparison to the non-clustering method and provide a more accurate estimation of the parameters.
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来源期刊
Journal of Industrial Engineering International
Journal of Industrial Engineering International Engineering-Industrial and Manufacturing Engineering
CiteScore
4.20
自引率
0.00%
发文量
0
审稿时长
12 weeks
期刊介绍: Journal of Industrial Engineering International is an international journal dedicated to the latest advancement of industrial engineering. The goal of this journal is to provide a platform for engineers and academicians all over the world to promote, share, and discuss various new issues and developments in different areas of industrial engineering. All manuscripts must be prepared in English and are subject to a rigorous and fair peer-review process. Accepted articles will immediately appear online. The journal publishes original research articles, review articles, technical notes, case studies and letters to the Editor, including but not limited to the following fields: Operations Research and Decision-Making Models, Production Planning and Inventory Control, Supply Chain Management, Quality Engineering, Applications of Fuzzy Theory in Industrial Engineering, Applications of Stochastic Models in Industrial Engineering, Applications of Metaheuristic Methods in Industrial Engineering.
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