Model-Based Fault Detection and Isolation of a Liquid-Cooled Frequency Converter on a Wind Turbine
Author(s) -
Peng Li,
Peter Fogh Odgaard,
Jakob Stoustrup,
Alexander Korsfeldt Larsén,
Kim Mo̸rk
Publication year - 2012
Publication title -
journal of control science and engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.208
H-Index - 18
eISSN - 1687-5257
pISSN - 1687-5249
DOI - 10.1155/2012/684610
Subject(s) - turbine , fault detection and isolation , wind power , observer (physics) , reliability (semiconductor) , engineering , fault (geology) , control theory (sociology) , isolation (microbiology) , computer science , power (physics) , electrical engineering , mechanical engineering , physics , control (management) , microbiology and biotechnology , quantum mechanics , artificial intelligence , seismology , actuator , biology , geology
With the rapid development of wind energy technologies and growth of installed wind turbine capacity in the world, the reliability of the wind turbine becomes an important issue for wind turbine manufactures, owners, and operators. The reliability of the wind turbine can be improved by implementing advanced fault detection and isolation schemes. In this paper, an observer-based fault detection and isolation method for the cooling system in a liquid-cooled frequency converter on a wind turbine which is built up in a scalar version in the laboratory is presented. A dynamic model of the scale cooling system is derived based on energy balance equation. A fault analysis is conducted to determine the severity and occurrence rate of possible component faults and their end effects in the cooling system. A method using unknown input observer is developed in order to detect and isolate the faults based on the developed dynamical model. The designed fault detection and isolation algorithm is applied on a set of measured experiment data in which different faults are artificially introduced to the scaled cooling system. The experimental results conclude that the different faults are successfully detected and isolated
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