会议专题

Wind Turbine Gearbox Forecast Using Gaussian Process Model

  For wind farms,wind turbine condition monitoring is important to reduce maintenance costs and improve the competitiveness in the electricity market,particularly for offshore wind farms.This paper seeks to establish wind turbine gearbox temperature model under the normal working state using Gaussian process,the forecast and evaluation of temperature is also described.Within the Bayesian context,the paper aims to training Gaussian process,using the maximum likelihood optimized approach to find the optimal hyperparameters.For large-scale regression tasks,a novel method using Cholesky decomposition to avoid ill-conditioned matrix is described.Another method using matrix caching to speed up the inverse of matrix calculation is proposed.In addition,the optimized Gaussian model is used to predict the gearbox validation data and compare with SVM(support vector machine)and BPNN(neural network)this two methods.By comparing the simulation results,Gaussian process gearbox temperature model demonstrates higher prediction accuracy.The model is a valuable object for condition monitoring.

Gearbox Gaussian process Cholesky decomposition Matrix caching

Xueru Wang Jin Zhou Peng Guo

School Of Control and Computer Engineering,North China Electric Power University,Changping,Beijing 102206

国际会议

第26届中国控制与决策会议(2014 CCDC)

长沙

英文

2621-2625

2014-05-31(万方平台首次上网日期,不代表论文的发表时间)