Fault detection in industrial processes is a field of application that has gaining considerable attention in the past few years, resulting in a large variety of techniques and methodologies designed to solve that problem. However, many of the approaches presented in literature require relevant amounts of prior knowledge about the process, such as mathematical models, data distribution and pre-defined parameters. In this paper, we propose the application of TEDA - Typicality and Eccentricity Data Analytics - , a fully autonomous algorithm, to the problem of fault detection in industrial processes. In order to perform fault detection, TEDA analyzes the density of each read data sample, which is calculated based on the distance between that sa...
The purpose of this article is to present a method for industrial process diagnosis. We are interest...
Outlier detection is a problem that has been largely studied in the past few years due to its great ...
The determination of abnormal behavior at process industries gains increasing interest as strict reg...
Fault detection is a task of major importance in industry nowadays, since that it can considerably r...
Manuscrito aceptado[Abstract] This research describes a novel approach for fault detection in indust...
This open access book assesses the potential of data-driven methods in industrial process monitoring...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...
Abstract:- Components of industrial processes are often affected by un-permitted or un-expected devi...
Monitoring and fault detection of industrial processes is an important area of research in data scie...
Implementing data-driven fault detection and diagnosis methods on process plants can be a challenge....
An approach to fault detection (FD) in industrial measurement systems is proposed in this paper whic...
Producción CientíficaFault detection and diagnosis in industrial processes are challenging tasks tha...
Big Data technologies and machine learning are about to revolutionise the industrial domain in diffe...
Global competition forces process industries to continuously optimize plant operation. One of the la...
This work presents a data-mining empirical monitoring scheme for industrial processes with partially...
The purpose of this article is to present a method for industrial process diagnosis. We are interest...
Outlier detection is a problem that has been largely studied in the past few years due to its great ...
The determination of abnormal behavior at process industries gains increasing interest as strict reg...
Fault detection is a task of major importance in industry nowadays, since that it can considerably r...
Manuscrito aceptado[Abstract] This research describes a novel approach for fault detection in indust...
This open access book assesses the potential of data-driven methods in industrial process monitoring...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...
Abstract:- Components of industrial processes are often affected by un-permitted or un-expected devi...
Monitoring and fault detection of industrial processes is an important area of research in data scie...
Implementing data-driven fault detection and diagnosis methods on process plants can be a challenge....
An approach to fault detection (FD) in industrial measurement systems is proposed in this paper whic...
Producción CientíficaFault detection and diagnosis in industrial processes are challenging tasks tha...
Big Data technologies and machine learning are about to revolutionise the industrial domain in diffe...
Global competition forces process industries to continuously optimize plant operation. One of the la...
This work presents a data-mining empirical monitoring scheme for industrial processes with partially...
The purpose of this article is to present a method for industrial process diagnosis. We are interest...
Outlier detection is a problem that has been largely studied in the past few years due to its great ...
The determination of abnormal behavior at process industries gains increasing interest as strict reg...