The goal of this paper is to study a proactive condition monitoring system for fluid power systems where the Self-Organizing Maps (SOM) with unsupervised learning is used to classify and interpret high-dimensional data measurements. If all the damages are not assumed to be known before diagnostics, an ordinary neural network with supervised learning for their detection can not be used. Operation of the proactive condition monitoring system is tested in a test system where two fault types are used. The test system is run in normal and two different fault situations. Measurement results are used for training and testing the SOM. In this paper these measurement results and also the quality of state recognition are shown.Peer reviewe
Data preparation and processing is of great importance in a ship condition monitoring tool, as inacc...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
Condition monitoring of systems and detection of changes in the systems are of significant importanc...
The problem of durability of fuel cell technology is central for its spreading and commercialization...
The problem of durability of fuel cell technology is central for its spreading and commercialization...
The complexity of modern systems is increasing rapidly and the dominating relationships among system...
The complexity of modern systems is increasing rapidly and the dominating relationships among system...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
This work presents the results of the application to four hydropower plants in Europe, with a total ...
This work presents the results of the application to four hydropower plants in Europe, with a total ...
This work presents the results of the application to four hydropower plants in Europe, with a total ...
This paper concerns the feasibility of using Self-Organising Feature Maps for the insulation assessm...
Data preparation and processing is of great importance in a ship condition monitoring tool, as inacc...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
Condition monitoring of systems and detection of changes in the systems are of significant importanc...
The problem of durability of fuel cell technology is central for its spreading and commercialization...
The problem of durability of fuel cell technology is central for its spreading and commercialization...
The complexity of modern systems is increasing rapidly and the dominating relationships among system...
The complexity of modern systems is increasing rapidly and the dominating relationships among system...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
This work presents the results of the application to four hydropower plants in Europe, with a total ...
This work presents the results of the application to four hydropower plants in Europe, with a total ...
This work presents the results of the application to four hydropower plants in Europe, with a total ...
This paper concerns the feasibility of using Self-Organising Feature Maps for the insulation assessm...
Data preparation and processing is of great importance in a ship condition monitoring tool, as inacc...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...