The paper compares recursive methods for detecting change points in environmental time series. Timely identification of peaks and troughs is important for planning defense actions and preventing risks. We consider linear nonparametric methods, such as time-varying coefficients, double exponential smoothers and prediction error statistics. These methods are often used in surveillance, forecasting and control, and their common features are sequential computation and exponential weighting of data. The new approach proposed here is to select their coefficients by maximizing the difference between subsequent peaks and troughs detected on past data. We compare the methods with applications to meteorological, astronomical and ecological data, and ...
Are there significant trends in temperatures and precipitation over the past hundred years? And show...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
In environmental epidemiology, it is often encountered that multiple time series data with a long-te...
Timely identification of turning points in economic time series is important for planning control ac...
Timely identification of turning points in economic time series is important for plan-ning control a...
[1] Empirical studies of climate regime shifts typically use confirmatory statistical techniqueswith...
In this report a method for monitoring time series with cycles is presented. It is a nonparametric a...
A non-linear time series analysis technique, recurrence quantification analysis (RQA) based on recur...
This paper is aimed at atmospheric scientists without formal training in statistical theory. Its goa...
Statistical surveillance is used for monitoring a sequence of data arriving step by step. These tech...
A non-linear time series analysis technique, recurrence quantification analysis (RQA) based on recur...
A large class of estimators including maximum likelihood, least squares and M-estimators are based o...
In this study, the Schwarz Information Criterion (SIC) is applied in order to detect change-points i...
121 pagesThe analysis of numerical sequential data, such as time series, is a frequent practice in b...
Abstract Modern scientific activities, both physical and computational can result in time series of ...
Are there significant trends in temperatures and precipitation over the past hundred years? And show...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
In environmental epidemiology, it is often encountered that multiple time series data with a long-te...
Timely identification of turning points in economic time series is important for planning control ac...
Timely identification of turning points in economic time series is important for plan-ning control a...
[1] Empirical studies of climate regime shifts typically use confirmatory statistical techniqueswith...
In this report a method for monitoring time series with cycles is presented. It is a nonparametric a...
A non-linear time series analysis technique, recurrence quantification analysis (RQA) based on recur...
This paper is aimed at atmospheric scientists without formal training in statistical theory. Its goa...
Statistical surveillance is used for monitoring a sequence of data arriving step by step. These tech...
A non-linear time series analysis technique, recurrence quantification analysis (RQA) based on recur...
A large class of estimators including maximum likelihood, least squares and M-estimators are based o...
In this study, the Schwarz Information Criterion (SIC) is applied in order to detect change-points i...
121 pagesThe analysis of numerical sequential data, such as time series, is a frequent practice in b...
Abstract Modern scientific activities, both physical and computational can result in time series of ...
Are there significant trends in temperatures and precipitation over the past hundred years? And show...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
In environmental epidemiology, it is often encountered that multiple time series data with a long-te...