Causality analysis techniques can be used for fault diagnosis in industrial processes. Multiple causality analysis techniques have been shown to be effective for fault diagnosis. Comparisons of some of the strengths and weaknesses of these techniques have been presented in literature. However, there are no clear guidelines on which technique to select for a specific application. These comparative studies have not thoroughly addressed all the factors affecting the selection of techniques. In this paper, these two techniques are compared based on their accuracy, precision, automatability, interpretability, computational complexity, and applicability for different process characteristics. Transfer entropy and Granger causality are popular caus...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Fault diagnosis is a challenging problem, particularly for a large-scale industrial process. An up-t...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
Oscillations in mineral processes can propagate through multiple units, causing important controlled...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Modern process industries are large and complex. Their units are highly interconnected with each oth...
In modern industrial processes, it is easier and less expensive to configure alarms by software sett...
Transfer entropy (TE) is a model-free approach based on information theory to capture causality betw...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
This paper addresses the subject of causality analysis using simulation data and data collected from...
The information-theoretical concept transfer entropy is an ideal measure for detecting conditional i...
Industrial process supervision is an important subject nowdays due to the increased requirement for ...
2014-08-06A typical industrial process or plant operates with hundreds of control loops and those pr...
In large-scale chemical processes, disturbances can easily propagate through the process units and t...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Fault diagnosis is a challenging problem, particularly for a large-scale industrial process. An up-t...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
Oscillations in mineral processes can propagate through multiple units, causing important controlled...
Abstract The discovery of cause-effect relationships in signals from industrial processes is a chal...
Modern process industries are large and complex. Their units are highly interconnected with each oth...
In modern industrial processes, it is easier and less expensive to configure alarms by software sett...
Transfer entropy (TE) is a model-free approach based on information theory to capture causality betw...
Determination of causal-effect relationships can be a difficult task even in the analysis of time se...
This paper addresses the subject of causality analysis using simulation data and data collected from...
The information-theoretical concept transfer entropy is an ideal measure for detecting conditional i...
Industrial process supervision is an important subject nowdays due to the increased requirement for ...
2014-08-06A typical industrial process or plant operates with hundreds of control loops and those pr...
In large-scale chemical processes, disturbances can easily propagate through the process units and t...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Entropy, as a complexity measure, has been widely applied for time series analysis. One preeminent e...
Fault diagnosis is a challenging problem, particularly for a large-scale industrial process. An up-t...