Results 131 to 140 of about 2,311 (163)
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Generalized EWMA-Charts

1992
The control problem of a production process with output Y(t) = M(t) + e(t) (e(t) being a white noise function with E(e(t)) = σ2 for all time points and M(t) := E(Y(t))) can be considered as the problem of monitoring the unknown expectation function M(t).
Joseph J. Hoegel, Hans W. Wolff
openaire   +1 more source

Monitoring Process Variability Using EWMA

2006
During the last decade, the use of the exponentially weighted moving average (EWMA) statistic as a process-monitoring tool has become more and more popular in the statistical process-control field. If the properties and design strategies of the EWMA control chart for the mean have been thoroughly investigated, the use of the EWMA as a tool for ...
CASTAGLIOLA P   +2 more
openaire   +3 more sources

The EWMA Patient Outcome Group

Journal of Wound Care, 2009
Across Europe, clinical experts in wound care and industry representatives have joined forces to propose recommendations for clinical data collection on chronic wound management. Here, the chair of the group, Finn Gottrup, outlines its main objectives
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An adaptive multivariate EWMA chart

Computers & Industrial Engineering, 2019
Abstract The adaptive multivariate EWMA (AMEWMA) and adaptive multivariate CUSUM (AMCUSUM) charts are recently proposed as they provide an overall good detection over a range of mean shift sizes than their non-adaptive conventional counterparts. In this paper, we propose an adaptive MEWMA (AMEWMA) chart for monitoring the infrequent changes in the ...
Abdul Haq, Michael B.C. Khoo
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Optimal hierarchical EWMA forecasting

International Journal of Forecasting
Prediction of demand at different levels of aggregation is a crucial task in many business and industrial activities. This task may be extremely challenging when the number of time series increases together with the number of parameters governing the dynamics of the underlying model. This paper proposes theoretical and empirical contributions providing
Giacomo Sbrana, Matteo Pelagatti
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An Extended EWMA Mean Chart

Quality Technology & Quantitative Management, 2005
AbstractIn this paper, we extend the exponentially weighted moving average (EWMA) technique to double exponentially weighted moving average (DEWMA) technique. We show that DEWMA mean charts perform better than EWMA mean charts in detecting small mean shifts ranging from 0.1 to 0.5 of the process standard deviation, and that the two types of charts ...
Lingyun Zhang, Gemai Chen
openaire   +1 more source

Improved variable EWMA controller design

Proceeding of the 11th World Congress on Intelligent Control and Automation, 2014
The exponentially weighted moving average (EWMA) controller is a popular run-to-run (RtR) control scheme in semiconductor manufacturing because of its effectiveness and simplicity. In this paper we propose an improved variable EWMA controller design method.
Ming-Da Ma, Jia-Yi Li, Kai Zhang
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Estimating Value at Risk: From JP Morgan's Standard-EWMA to Skewed-EWMA Forecasting

SSRN Electronic Journal, 2007
Driven significantly by JP Morgan's RiskMetrics system with exponentially weighted moving average (EWMA) forecasting, value-at-risk (VaR) has become a popularly used measurement of the extent to which a financial asset is subject to the risks present in financial markets.
Zudi LU, Hai Huang
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The MaxMin EWMA tolerance limits

International Journal of Quality & Reliability Management, 2000
When there is a change in a process, the MaxMin exponentially weighted moving average (EWMA) control chart shows which parameters have increased or decreased. The MaxMin EWMA may also be viewed as smoothed tolerance limits. Tolerance limits are limits that include a specific proportion of the population at a given confidence level.
Raid W. Amin, Kuiyuan Li
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CUSUM and EWMA Procedures

2002
A problem with the conventional Shewhart charts is that the decisions are usually based on single observations. Such decision implies a high probability of false alarms. Also, small shifts in the process characteristics, which are of increasing importance from the point of view of efforts for continuous quality improvement, cannot be detected easily ...
M. Xie, T. N. Goh, V. Kuralmani
openaire   +1 more source

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