Application Of Univariate And Multivariate Process Control Procedures In Industry
نویسندگان
چکیده
Traditional statistical process control charts used to monitor key process variables are based on the assumption that measurements are independent and identically distributed about a target value. In practice they are not and often are actually correlated. Reliance on univariate charts can lead to misleading conclusions. This paper addresses the methods for improving the quality of industrial products using T Multivariate Quality Control charts. In practice, one of the main problems in implementing the T 2 multivariate process control chart is that it only identifies the sample that causes the out-of-control situation. However, T 2 control chart is unable to identify the quality characteristic(s) that caused the out-of-control signal which is regarded as a major disadvantage in the implementation of this control chart. In this paper, Murphy’s method is implemented which not only identifies the sample, but also selects and prioritise the out-of-control variables using the T 2 control procedures. The results are compared with the performance of the individual charts. The practical example using the data provided by ESSAR Steel Limited, clearly shows the superiority of multivariate control charts over the univariate charts.
منابع مشابه
Generalized Variance Chart for Multivariate Quality Control Process Procedure with Application
Generalized variance|S|quality control chart is very powerful way to detect small shifts in the mean vector. The main purpose of this paper, presents an improved the generalized variance |S|quality control chart for multivariate process. Generalized variance chart allow us to simultaneously monitor whether joint variability of two or more related variables is in control. In addition, a control ...
متن کاملSimultaneous Monitoring of Multivariate Process Mean and Variability in the Presence of Measurement Error with Linearly Increasing Variance under Additive Covariate Model (RESEARCH NOTE)
In recent years, some researches have been done on simultaneous monitoring of multivariate process mean vector and covariance matrix. However, the effect of measurement error, which exists in many practical applications, on the performance of these control charts is not well studied. In this paper, the effect of measurement error with linearly increasing variance on the performance of ELR contr...
متن کاملThe Effect of Gauge Measurement Capability and Dependency Measure of Process Variables on the MCp
It has been proved that process capability indices provide very efficient measures of the capability of processes from many different perspectives. These indices have been widely used in the manufacturing industry for measuring process reproduction capability according to manufacturing specifications. In the past few years, univariate capability indices have been introduced and used to characte...
متن کاملMcusum Control Chart Procedure: Monitoring the Process Mean with Application
Multivariate cumulative sum (MCUSUM) control charts are widely used in industry because they are powerful and easy to use. They cumulate recent process data to quickly detect out-of-control situations. MCUSUM procedures will usually give tighter process control than classical quality control charts. A MCUSUM signal does not mean that the process is producting bad product. Rather it means that a...
متن کاملRepeated Record Ordering for Constrained Size Clustering
One of the main techniques used in data mining is data clustering, which has many applications in computer science, biology, and social sciences. Constrained clustering is a type of clustering in which side information provided by the user is incorporated into current clustering algorithms. One of the well researched constrained clustering algorithms is called microaggregation. In a microaggreg...
متن کامل