Treffer: SEQUENTIAL ALGORITHM FOR DISORDER DETECTION IN MULTIVARIATE TIME SERIES

Title:
SEQUENTIAL ALGORITHM FOR DISORDER DETECTION IN MULTIVARIATE TIME SERIES
Source:
Bulletin of the Saint Petersburg State Institute of Technology (Technical University). 63:93-99
Publisher Information:
St Petersburg State Institute of Technology (Technical University), 2022.
Publication Year:
2022
Document Type:
Fachzeitschrift Article
ISSN:
1998-9849
DOI:
10.36807/1998-9849-2022-63-89-93-99
Accession Number:
edsair.doi...........b861bab9159a48b2ad94dcb8be7af673
Database:
OpenAIRE

Weitere Informationen

The paper considers a set of issues related to the construction and sequential algorithms use for detecting spontaneous changes in multidimensional time series probabilistic characteristics (disorder). The study is motivated by the mathematical support problems for decision-making processes based on data from large systems multi-channel monitoring and is devoted to the analysis of the measurements multidimensional time series spatio-temporal dynamics. As an alternative to traditional approaches, new technologies for analyzing inter-channel communications are proposed. Dimension reduction technologies are used based on the data matrices presentation in the first singular basis and multiple regression in the projection space. The considered approach can be applied for interventions early detection in computer networks. The developed approach application in the analyzing the characteristics problem of a turbulent flow based on the pressure deviations measurement data at various points in the volume is demonstrated.