In the process industry, a control system is important to ensure the process runs smoothly and keeps the product under predetermined specifications. Oscillations in process variables can affect the decreasing profitability of the plant. It is important to detect the oscillation before it becomes a problem for profitability. Various methods have been developed; however, the methods still need to improve when implemented online for multi-oscillation. Therefore, this research uses a machine learning-based method with the K-Nearest Neighbour (KNN) algorithm to detect multi-oscillation in the control loop, and the detection methods are made to carry out online detection from real plants. The developed method simulated the Tennessee Eastman P...
The process monitoring method for industrial production can technically achieve early warning of abn...
Process monitoring techniques in chemical process systems help to improve product quality and plant ...
This paper focuses on the prediction of persistent disturbances based on their past measurements usi...
The profitability of any industrial process is closely related to its ability to maintain near optim...
This paper proposes a method for detecting oscillations in non-stationary timeseries based on the st...
This paper compares a selection of methods for detecting oscillations in control loops. The methods ...
This paper examines the prediction of disturbances based on their past measurements using k-nearest ...
This project was carried out for an internship as part of the Master Mechanical Engineering. The pro...
Plant-wide oscillation detection is an important task in the maintenance of large-scale industrial c...
Oscillations occurring in industrial process plants often reflect the presence of severe disturbance...
In the perspective of optimizing the control and operation of large scale process plants, it is imp...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Automatic oscillation detection for univariate time series is the very first step in detection and c...
This thesis focuses on the development of data-driven automated techniques to enhance performance as...
The main focus of this research is on the application of machine learning in solving problems that h...
The process monitoring method for industrial production can technically achieve early warning of abn...
Process monitoring techniques in chemical process systems help to improve product quality and plant ...
This paper focuses on the prediction of persistent disturbances based on their past measurements usi...
The profitability of any industrial process is closely related to its ability to maintain near optim...
This paper proposes a method for detecting oscillations in non-stationary timeseries based on the st...
This paper compares a selection of methods for detecting oscillations in control loops. The methods ...
This paper examines the prediction of disturbances based on their past measurements using k-nearest ...
This project was carried out for an internship as part of the Master Mechanical Engineering. The pro...
Plant-wide oscillation detection is an important task in the maintenance of large-scale industrial c...
Oscillations occurring in industrial process plants often reflect the presence of severe disturbance...
In the perspective of optimizing the control and operation of large scale process plants, it is imp...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Automatic oscillation detection for univariate time series is the very first step in detection and c...
This thesis focuses on the development of data-driven automated techniques to enhance performance as...
The main focus of this research is on the application of machine learning in solving problems that h...
The process monitoring method for industrial production can technically achieve early warning of abn...
Process monitoring techniques in chemical process systems help to improve product quality and plant ...
This paper focuses on the prediction of persistent disturbances based on their past measurements usi...