Transfer entropy (TE) is a model-free approach based on information theory to capture causality between variables, which has been used for the modeling and monitoring of, and fault diagnosis in, complex industrial processes. It is able to detect the causality between variables without assuming any underlying model, but it is computationally burdensome. To overcome this limitation, a hybrid method of TE and the modified conditional mutual information (CMI) approach is proposed by using generated multi-valued alarm series. In order to obtain a process topology, TE can generate a causal map of all sub-processes and modified CMI can be used to distinguish the direct connectivity from the above-mentioned causal map by using multi-valued alarm se...
In continuous chemical processes, variations of process variables usually travel along propagation p...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Understanding the details of the correlation between time series is an essential step on the route t...
Transfer entropy (TE) is a model-free approach based on information theory to capture causality betw...
In modern industrial processes, it is easier and less expensive to configure alarms by software sett...
Modern process industries are large and complex. Their units are highly interconnected with each oth...
Causality analysis techniques can be used for fault diagnosis in industrial processes. Multiple caus...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
This paper addresses the subject of causality analysis using simulation data and data collected from...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Oscillations in mineral processes can propagate through multiple units, causing important controlled...
We present an improvement of an estimator of causality in financial time series via transfer entropy...
Causal relations among variables may change significantly due to different control strategies and fa...
In continuous chemical processes, variations of process variables usually travel along propagation p...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Understanding the details of the correlation between time series is an essential step on the route t...
Transfer entropy (TE) is a model-free approach based on information theory to capture causality betw...
In modern industrial processes, it is easier and less expensive to configure alarms by software sett...
Modern process industries are large and complex. Their units are highly interconnected with each oth...
Causality analysis techniques can be used for fault diagnosis in industrial processes. Multiple caus...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
This paper addresses the subject of causality analysis using simulation data and data collected from...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Oscillations in mineral processes can propagate through multiple units, causing important controlled...
We present an improvement of an estimator of causality in financial time series via transfer entropy...
Causal relations among variables may change significantly due to different control strategies and fa...
In continuous chemical processes, variations of process variables usually travel along propagation p...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Understanding the details of the correlation between time series is an essential step on the route t...