EEMD-based windturbinebearingfailuredetectionusing the generatorstatorcurrenthomopolarcomponent
نویسندگان
چکیده
Failure detection has always been a demanding task in the electrical machines community; it has become more challenging in wind energy conversion systems because sustainability and viability of wind farms are highly dependent on the reduction of the operational and maintenance costs. Indeed the most efficient way of reducing these costs would be to continuously monitor the condition of these systems. This allows for early detection of the generator health degeneration, facilitating a proactive response, minimizing downtime, and maximizing productivity. This paper provides then an assessment of a failure detection techniques based on the homopolar component of the generator stator current and attempts to highlight the use of the ensemble empirical mode decomposition as a tool for failure detection in wind turbine generators for stationary and non stationary cases. Keyword: Wind turbine, induction generator, bearing failure, ensemble empirical mode decomposition, stator current, homopolar current.
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