6533b7dbfe1ef96bd127013f
RESEARCH PRODUCT
Estimation of Wind Turbine Performance Degradation with Deep Neural Networks
Manuel Sathyajith MathewSurya Teja KandukuriChristian Walter Peter Omlinsubject
VDP::Teknologi: 500description
In this paper, we estimate the age-related performance degradation of a wind turbine working under Norwegian environment, based on a deep neural network model. Ten years of high-resolution operational data from a 2 MW wind turbine were used for the analysis. Operational data of the turbine, between cut-in and rated wind velocities, were considered, which were pre-processed to eliminate outliers and noises. Based on the SHapley Additive exPlanations of a preliminary performance model, a benchmark performance model for the turbine was developed with deep neural networks. An efficiency index is proposed to gauge the agerelated performance degradation of the turbine, which compares measured performances of the turbine over the years with corresponding bench marked performance. On an average, the efficiency index of the turbine is found to decline by 0.64 percent annually, which is comparable with the degradation patterns reported under similar studies from the UK and the US.
year | journal | country | edition | language |
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2022-06-29 | PHM Society European Conference |