This page has only limited features, please log in for full access.

Unclaimed
Cosmin Koch
SMARTIVE S.L., 08204 Sabadell, Spain

Honors and Awards

The user has no records in this section


Career Timeline

The user has no records in this section.


Short Biography

The user biography is not available.
Following
Followers
Co Authors
The list of users this user is following is empty.
Following: 0 users

Feed

Journal article
Published: 03 December 2020 in Applied Sciences
Reads 0
Downloads 0

A hybrid health monitoring system for wind turbine generators is introduced. The novelty of this research consists in approaching a 115-wind turbine fleet by using the fusion of multiple sources of information. Analog SCADA data is analyzed through an autoencoder which allows to identify anomalous patterns within the input variables. Alarm logs are processed and merged to the anomaly detection output, creating a reliable health estimator of generator conditions. The proposed methodology has been tested on a fleet of 115 wind turbines from four different manufacturers located in various locations around Europe. The solution has been compared with other existing data modeling techniques offering impressive results on the fleet. An accuracy of 82% and a Kappa of 56% were obtained. The detailed methodology is presented using one of the available windfarms, composed of 13 onshore wind turbines rated 2 MW power. The rigorous evaluation of the results, the utilization of real data and the heterogeneity of the dataset prove the validity of the system and its applicability in an online operating scenario.

ACS Style

Mattia Beretta; Juan José Cárdenas; Cosmin Koch; Jordi Cusidó. Wind Fleet Generator Fault Detection via SCADA Alarms and Autoencoders. Applied Sciences 2020, 10, 8649 .

AMA Style

Mattia Beretta, Juan José Cárdenas, Cosmin Koch, Jordi Cusidó. Wind Fleet Generator Fault Detection via SCADA Alarms and Autoencoders. Applied Sciences. 2020; 10 (23):8649.

Chicago/Turabian Style

Mattia Beretta; Juan José Cárdenas; Cosmin Koch; Jordi Cusidó. 2020. "Wind Fleet Generator Fault Detection via SCADA Alarms and Autoencoders." Applied Sciences 10, no. 23: 8649.