Multivariate statistical process monitoring (MSPM) has received a considerable amount of attention in terms of both academic research and industrial applications. Most of these efforts have been focused on fault detection and isolation, while root cause diagnosis has not yet been fully addressed. In recent years, data-driven causality analysis methods have been adopted in order to understand the complex relationship between process variables and to identify the causes of the faults triggering the alarms. Among them, the Granger causality (G-causality) test is a popular method of inferring causal associations between signals based on temporal precedence. Nevertheless, the conventional G-causality test applies only to stationary and linear ti...
A Monte Carlo investigation is used to examine the performance of two commonly used tests for Grange...
We present a novel test of nonlinear Granger causality in bivariate time series. The trace norm of c...
Lisää lopullinen versio, kun se julkaistu.Industrial processes are often subjected to abnormal event...
2014-08-06A typical industrial process or plant operates with hundreds of control loops and those pr...
Industrial process supervision is an important subject nowdays due to the increased requirement for ...
A straightforward nonlinear extension of Grangers concept of causality in the kernel framework is s...
In large-scale chemical processes, disturbances can easily propagate through the process units and t...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
In modern industrial plants, process units are strongly cross-linked with eachother, and disturbance...
Causality analysis techniques can be used for fault diagnosis in industrial processes. Multiple caus...
In modern industrial plants, process units are strongly cross-linked with each other, and disturbanc...
Granger causality is a statistical concept of causality that is based on prediction. According to Gr...
Granger-causality is a popular definition of causality that permits a statistical test to determine ...
Fault diagnosis in continuous dynamic systems can be challenging, since the variables in these syste...
Identifying causal relations among simultaneously acquired signals is an important problem in multiv...
A Monte Carlo investigation is used to examine the performance of two commonly used tests for Grange...
We present a novel test of nonlinear Granger causality in bivariate time series. The trace norm of c...
Lisää lopullinen versio, kun se julkaistu.Industrial processes are often subjected to abnormal event...
2014-08-06A typical industrial process or plant operates with hundreds of control loops and those pr...
Industrial process supervision is an important subject nowdays due to the increased requirement for ...
A straightforward nonlinear extension of Grangers concept of causality in the kernel framework is s...
In large-scale chemical processes, disturbances can easily propagate through the process units and t...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
In modern industrial plants, process units are strongly cross-linked with eachother, and disturbance...
Causality analysis techniques can be used for fault diagnosis in industrial processes. Multiple caus...
In modern industrial plants, process units are strongly cross-linked with each other, and disturbanc...
Granger causality is a statistical concept of causality that is based on prediction. According to Gr...
Granger-causality is a popular definition of causality that permits a statistical test to determine ...
Fault diagnosis in continuous dynamic systems can be challenging, since the variables in these syste...
Identifying causal relations among simultaneously acquired signals is an important problem in multiv...
A Monte Carlo investigation is used to examine the performance of two commonly used tests for Grange...
We present a novel test of nonlinear Granger causality in bivariate time series. The trace norm of c...
Lisää lopullinen versio, kun se julkaistu.Industrial processes are often subjected to abnormal event...