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    On the monitoring of multi-attributes high-quality production processes

    , Article Metrika ; Volume 66, Issue 3 , 2007 , Pages 373-388 ; 00261335 (ISSN) Akhavan Niaki, S. T ; Abbasi, B ; Sharif University of Technology
    2007
    Abstract
    Over the last decade, there have been an increasing interest in the techniques of process monitoring of high-quality processes. Based upon the cumulative counts of conforming (CCC) items, Geometric distribution is particularly useful in these cases. Nonetheless, in some processes the number of one or more types of defects on a nonconforming observation is also of great importance and must be monitored simultaneously. However, there usually exist some correlations between these two measures, which obligate the use of multi-attribute process monitoring. In the literature, by assuming independence between the two measures and for the cases in which there is only one type of defect in... 

    Bootstrap method approach in designing multi-attribute control charts

    , Article International Journal of Advanced Manufacturing Technology ; Volume 35, Issue 5-6 , 2007 , Pages 434-442 ; 02683768 (ISSN) Akhavan Niaki, T ; Abbasi, B ; Sharif University of Technology
    2007
    Abstract
    In a production process, when the quality of a product depends on more than one correlated characteristic, multivariate quality control techniques are used. Although multivariate statistical process control is receiving increased attention in the literature, little work has been done to deal with multi-attribute processes. In monitoring the quality of a product or process in multi-attribute environments in which the attributes are correlated, several issues arise. For example, a high number of false alarms (type I error) occur and the probability of not detecting defects (type II error) increases when the process is monitored by a set of independent uni-attribute control charts. In this... 

    Skewness reduction approach in multi-attribute process monitoring

    , Article Communications in Statistics - Theory and Methods ; Volume 36, Issue 12 , 2007 , Pages 2313-2325 ; 03610926 (ISSN) Akhavan Niaki , S. T ; Abbasi, B ; Sharif University of Technology
    2007
    Abstract
    Since the product quality of many industrial processes depends upon more than one dependent variable or attribute, they are either multivariate or multi-attribute in nature. Although multivariate statistical process control is receiving increased attention in the literature, little work has been done to deal with multi-attribute processes. In this article, we develop a new methodology to monitor multi-attribute processes. To do this, first we transform multi-attribute data in a way that their marginal probability distributions have almost zero skewness. Then, we estimate the transformed covariance matrix and apply the well-known T2 control chart. In order to illustrate the proposed method... 

    A hybrid method of artificial neural networks and simulated annealing in monitoring auto-correlated multi-attribute processes

    , Article International Journal of Advanced Manufacturing Technology ; Volume 56, Issue 5-8 , 2011 , Pages 777-788 ; 02683768 (ISSN) Niaki, S. T. A ; Akbari Nasaji, S ; Sharif University of Technology
    Abstract
    The quality characteristics of both manufacturing and service industries include not only the variables but the attributes as well. While a substantial research have been performed on auto-correlated variables, little attempt has been fulfilled for auto-correlated attributes. Ignoring the imbedded autocorrelation structure in constructing control charts cause not only the in-control run length to decrease, but also the false alarms to increase. To overcome these shortcomings, in this research, an autoregressive vector first models the autocorrelation structure of the process data. Then, a modified Elman neural network is developed to generate simulated data using the ARTA algorithm. Next, a... 

    Artificial neural network in applying multi attribute control chart for AR processes

    , Article 2010 The 2nd International Conference on Computer and Automation Engineering, ICCAE 2010, 26 February 2010 through 28 February 2010, Singapore ; Volume 5 , 2010 , Pages 216-220 ; 9781424455850 (ISBN) Akhavan Niaki, S. T ; Akbari Nasaji, S ; Sharif University of Technology
    2010
    Abstract
    Quality characteristics are subject of both manufacturing and service industries, which include not only the variables but the attributes as well. In Quality Control area substantial research has been done for Auto-correlated variables; however, no attempt was done for Auto-correlated attributes. Ignoring the autocorrelation structure in constructing control charts cause the in-control run length to decrease, and the false alarms to increase as such. In this article we develop a new methodology based upon the modified Elman neural network capabilities to overcome this problem. Moreover, instead of back propagation, simulated annealing is suggested as an alternative training technique that is... 

    Monitoring multi-attribute processes based on NORTA inverse transformed vectors

    , Article Communications in Statistics - Theory and Methods ; Volume 38, Issue 7 , 2009 , Pages 964-979 ; 03610926 (ISSN) Akhavan Niaki, T ; Abbasi, B ; Sharif University of Technology
    2009
    Abstract
    Although multivariate statistical process control has been receiving a well-deserved attention in the literature, little work has been done to deal with multi-attribute processes. While by the NORTA algorithm one can generate an arbitrary multi-dimensional random vector by transforming a multi-dimensional standard normal vector, in this article, using inverse transformation method, we initially transform a multi-attribute random vector so that the marginal probability distributions associated with the transformed random variables are approximately normal. Then, we estimate the covariance matrix of the transformed vector via simulation. Finally, we apply the well-known T2 control chart to the...