Autocorrelation and non-normality of process characteristic variables are two main difficulties that industrial engineers must face when they should implement control charting techniques. This paper presents new issues regarding the probability distribution of wavelets coefficients. Firstly, we highlight that wavelets coefficients have capacities to strongly decrease autocorrelation degree of original data and are normally-like distributed, especially in the case of Haar wavelet. We used AR(1) model with positive autoregressive parameters to simulate autocorrelated data. Illustrative examples are presented to show wavelets coefficients properties. Secondly, the distributional parameters of wavelets coefficients are derived, it shows that wa...
International audienceThe paper addresses the analysis and interpretation of second order random pro...
Introduction We congratulate the three authors for their thought-provoking and original work. We th...
Statistical Processes Monitoring is a collection of statistical-based methodologies and methods for ...
Abstract: In this paper, we present a result regarding the probability distribution of wavelets coef...
In this paper, three new connections between Wavelets analysis and Statistical Quality Control are p...
Because of the process complexity (multi-scale data, large number of characteristics variables and e...
This paper presents an overview of wavelet-based techniques for statistical process monitoring. The ...
I. Int rod uct io n1) The wavelet transform have been used mainly in the fields of signal processing...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
In the paper we review stochastic properties of wavelet coefficients for time series indexed by cont...
This paper develops a new procedure to test the changes in the autocorrelation structure of an AR(1)...
We consider nonparametric estimation of the coefficients a_i(.), i=1,...,p, on a time-varying autore...
[[abstract]]If the process observations are autocorrelated, the performance of control chart is infl...
We consider nonparametric estimation of the parameter functions a(i)(.), i = 1, ..., p, of a time-va...
An approach is presented for conducting multiscale statistical process control (MSSPC), based on a l...
International audienceThe paper addresses the analysis and interpretation of second order random pro...
Introduction We congratulate the three authors for their thought-provoking and original work. We th...
Statistical Processes Monitoring is a collection of statistical-based methodologies and methods for ...
Abstract: In this paper, we present a result regarding the probability distribution of wavelets coef...
In this paper, three new connections between Wavelets analysis and Statistical Quality Control are p...
Because of the process complexity (multi-scale data, large number of characteristics variables and e...
This paper presents an overview of wavelet-based techniques for statistical process monitoring. The ...
I. Int rod uct io n1) The wavelet transform have been used mainly in the fields of signal processing...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
In the paper we review stochastic properties of wavelet coefficients for time series indexed by cont...
This paper develops a new procedure to test the changes in the autocorrelation structure of an AR(1)...
We consider nonparametric estimation of the coefficients a_i(.), i=1,...,p, on a time-varying autore...
[[abstract]]If the process observations are autocorrelated, the performance of control chart is infl...
We consider nonparametric estimation of the parameter functions a(i)(.), i = 1, ..., p, of a time-va...
An approach is presented for conducting multiscale statistical process control (MSSPC), based on a l...
International audienceThe paper addresses the analysis and interpretation of second order random pro...
Introduction We congratulate the three authors for their thought-provoking and original work. We th...
Statistical Processes Monitoring is a collection of statistical-based methodologies and methods for ...