A design procedure for detecting additive changes in a state-space model is proposed. Since the mean of the observations after the change is unknown, detection algorithms based on the generalized likelihood ratio test, GLR, and on window-limited type GLR, are considered. As Lai (1995) pointed out, it is very difficult to find a satisfactory choice of both window size and threshold for these change detection algorithms. The basic idea of this article is to estimate, through the stochastic approximation of Robbins and Monro, the threshold value which satisfies a constraint on the mean between false alarms, for a specified window size. A convenient stopping rule. based on the first passage time of an F-statistic below a fixed boundary, is used...
In this paper, we model the noise as an autoregressive (AR) process with unknown parameters. A speci...
We design and assess adaptive schemes to detect extended and multiple point-like targets embedded in...
In this dissertation scan statistics for detecting a local change in the scale parameter for gamma a...
International audienceThe problem of detecting changes in a stochastic system is addressed. When the...
In statistics and engineering the problem of change point detection in dynamical systems can be addr...
We consider the problem of the non{sequential detection of a change in the drift coecient of a stoch...
Change detection is the process of announcing, from inspection of the sequence of measured signals, ...
International audienceWe consider the problem of the non-sequential detection of a change in the dri...
International audienceWe address the problem of detecting changes in multivariate Gaussian random si...
The generalized likelihood ratio (GLR) test is a widely used method for detecting abrupt changes in ...
Control charts based on generalized likelihood ratio (GLR) tests are attractive from both theoretica...
The Generalized Likelihood Ratio (GLR) test for fault detection as derived by Willsky and Jones is a...
is often used as a measure of model accuracy. The ∆AIC statistic is defined by the difference betwee...
In many areas there is a need for continual observation of a time series, with the goal of detecting...
he detection of change-points in time series is an important issue especially in economics, finance,...
In this paper, we model the noise as an autoregressive (AR) process with unknown parameters. A speci...
We design and assess adaptive schemes to detect extended and multiple point-like targets embedded in...
In this dissertation scan statistics for detecting a local change in the scale parameter for gamma a...
International audienceThe problem of detecting changes in a stochastic system is addressed. When the...
In statistics and engineering the problem of change point detection in dynamical systems can be addr...
We consider the problem of the non{sequential detection of a change in the drift coecient of a stoch...
Change detection is the process of announcing, from inspection of the sequence of measured signals, ...
International audienceWe consider the problem of the non-sequential detection of a change in the dri...
International audienceWe address the problem of detecting changes in multivariate Gaussian random si...
The generalized likelihood ratio (GLR) test is a widely used method for detecting abrupt changes in ...
Control charts based on generalized likelihood ratio (GLR) tests are attractive from both theoretica...
The Generalized Likelihood Ratio (GLR) test for fault detection as derived by Willsky and Jones is a...
is often used as a measure of model accuracy. The ∆AIC statistic is defined by the difference betwee...
In many areas there is a need for continual observation of a time series, with the goal of detecting...
he detection of change-points in time series is an important issue especially in economics, finance,...
In this paper, we model the noise as an autoregressive (AR) process with unknown parameters. A speci...
We design and assess adaptive schemes to detect extended and multiple point-like targets embedded in...
In this dissertation scan statistics for detecting a local change in the scale parameter for gamma a...