Title :
MEMS Multisensor Intelligent Damage Detection for Wind Turbines
Author :
Moradi, Mehdi ; Sivoththaman, Siva
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
Maintenance and repair of wind turbine structures have become more challenging and at the same time essential as they evolve into larger dimensions or located in places with limited access. Even small structural damages may invoke catastrophic detriment to the integrity of the system. So, cost-effective, predictive, and reliable structural health monitoring (SHM) system has been always desirable for wind turbines. A real-time nondestructive SHM technique based on multisensor data fusion is proposed in this paper. The objective is to critically analyze and evaluate the feasibility of the proposed technique to identify and localize damages in wind turbine blades. The structural properties of the turbine blade before and after damage are investigated through different sets of finite-element method simulations. Based on the obtained results, it is shown that information from smart sensors, measuring strains, and vibrations data, distributed over the turbine blades can be used to assist in more accurate damage detection and overall understanding of the health condition of blades. Data fusion technique is proposed to combine these two diagnostic tools to improve the detection system that provides a more robust reading with reduced false alarms.
Keywords :
blades; condition monitoring; finite element analysis; intelligent sensors; maintenance engineering; microsensors; reliability; sensor fusion; strain measurement; structural engineering; vibration measurement; wind turbines; MEMS multisensor intelligent damage detection; blade; catastrophic detriment; false alarm reduction; finite-element method simulation; maintenance; multisensor data fusion; real-time nondestructive SHM technique; repair; smart sensor; strain measurement; structural health monitoring system; vibrations data measurement; wind turbine structure; Blades; Data integration; Sensor fusion; Strain; Stress; Wind turbines; Condition monitoring; data fusion; microelectromechanical systems; strain sensor; vibration;
Journal_Title :
Sensors Journal, IEEE
DOI :
10.1109/JSEN.2014.2362411