Large-scale oil refineries are equipped with mission-critical heavy machinery (boilers, engines, turbines, and so on) and are continuously monitored by thousands of sensors for process efficiency, environmental safety, and predictive maintenance purposes. However, sensors themselves are also prone to errors and failure. The quality of data received from these sensors should be verified before being used in system modeling. There is a need for reliable methods and systems that can provide data validation and reconciliation in real-time with high accuracy. In this paper, we develop a novel method for real-time data validation, gross error detection and classification over multivariate sensor data streams. The validated and high-quality data o...
Industry 4.0 concept has become a worldwide revolution that has been mainly led by the manufacturing...
Many classical multivariate statistical process monitoring (MSPM) techniques assume normal distribut...
This research project evaluates the suitability of machine learning methods for early fault predicti...
2018-09-22Advancing sensor and data gathering technology has resulted in a substantial increase in t...
Modern refineries typically use a high number of sensors that generate an enormous amount of data ab...
2012-11-07The business objectives of a smart oilfield include: enhancing oil production, monitoring ...
In this work, an automated statistical approach for the condition monitoring of a fluid power system...
Sensor data validation has become an important issue in the operation and control of energy producti...
In modern complex systems and machines - e.g., automobiles or construction vehicles - different vers...
Abstract The paper describes a multivariate time series pattern recognition method based on referen...
The increasing scale of industrial processes has significantly motivated the development of data-dri...
Process operations in chemical industries are complicated, where abnormal behaviors cannot be perfec...
This paper summarizes and gives examples of the using of IoT in Industry 4.0, especially in Oil and ...
The process of continuously monitoring and analyzing data in real time as well as reacting to events...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...
Industry 4.0 concept has become a worldwide revolution that has been mainly led by the manufacturing...
Many classical multivariate statistical process monitoring (MSPM) techniques assume normal distribut...
This research project evaluates the suitability of machine learning methods for early fault predicti...
2018-09-22Advancing sensor and data gathering technology has resulted in a substantial increase in t...
Modern refineries typically use a high number of sensors that generate an enormous amount of data ab...
2012-11-07The business objectives of a smart oilfield include: enhancing oil production, monitoring ...
In this work, an automated statistical approach for the condition monitoring of a fluid power system...
Sensor data validation has become an important issue in the operation and control of energy producti...
In modern complex systems and machines - e.g., automobiles or construction vehicles - different vers...
Abstract The paper describes a multivariate time series pattern recognition method based on referen...
The increasing scale of industrial processes has significantly motivated the development of data-dri...
Process operations in chemical industries are complicated, where abnormal behaviors cannot be perfec...
This paper summarizes and gives examples of the using of IoT in Industry 4.0, especially in Oil and ...
The process of continuously monitoring and analyzing data in real time as well as reacting to events...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...
Industry 4.0 concept has become a worldwide revolution that has been mainly led by the manufacturing...
Many classical multivariate statistical process monitoring (MSPM) techniques assume normal distribut...
This research project evaluates the suitability of machine learning methods for early fault predicti...