This paper proposes a method to detect abnormal data segments from historical multivariate time series, which are common prerequisites for rationalization of industrial alarm systems. Correlation directions among process variables are taken as the features to detect abnormal conditions. To find time instants of changing correlation directions, key turning points (KTPs) are determined by a piecewise linear representation of multivariate time series. Correlation directions in each data segment between adjacent KTPs are calculated from Spearman's rank correlation coefficients and associated hypothesis tests. Data segments are classified into normal or abnormal ones by comparing the calculated correlation directions with their counterparts...
Cycle-based signals are generally obtained through automatic sensing of critical process variables d...
Surveillance systems aim to detect sudden changes or aberrations in data series which might signal t...
The determination of abnormal behavior at process industries gains increasing interest as strict reg...
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...
This paper proposes a new method to detect correlated alarms and quantify the correlation level to i...
This paper studies the correlation analysis for bivariate alarm signals in order to indicate whether...
In modern industrial processes, it is easier and less expensive to configure alarms by software sett...
This paper studies the statistical analysis for alarm signals in order to detect whether two alarm s...
Highly-advanced systems, such as mobile telecommunication networks, characterized by increased compl...
International audienceThis paper proposes a new methodology inspired from pattern matching and able ...
A method, system, and computer program product for fault data correlation in a diagnostic system are...
Recent developments in network technologies have led to the application of cloud computing and big d...
A methodology based on statistical process control was examined for the data mining problem of anoma...
This paper aims to provide an in-depth study of the detection of historical alarm subsequences, whic...
Time series analysis is the key task in several domains such as health diagnosis (for example, elect...
Cycle-based signals are generally obtained through automatic sensing of critical process variables d...
Surveillance systems aim to detect sudden changes or aberrations in data series which might signal t...
The determination of abnormal behavior at process industries gains increasing interest as strict reg...
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...
This paper proposes a new method to detect correlated alarms and quantify the correlation level to i...
This paper studies the correlation analysis for bivariate alarm signals in order to indicate whether...
In modern industrial processes, it is easier and less expensive to configure alarms by software sett...
This paper studies the statistical analysis for alarm signals in order to detect whether two alarm s...
Highly-advanced systems, such as mobile telecommunication networks, characterized by increased compl...
International audienceThis paper proposes a new methodology inspired from pattern matching and able ...
A method, system, and computer program product for fault data correlation in a diagnostic system are...
Recent developments in network technologies have led to the application of cloud computing and big d...
A methodology based on statistical process control was examined for the data mining problem of anoma...
This paper aims to provide an in-depth study of the detection of historical alarm subsequences, whic...
Time series analysis is the key task in several domains such as health diagnosis (for example, elect...
Cycle-based signals are generally obtained through automatic sensing of critical process variables d...
Surveillance systems aim to detect sudden changes or aberrations in data series which might signal t...
The determination of abnormal behavior at process industries gains increasing interest as strict reg...