汽轮机技术
汽輪機技術
기륜궤기술
Turbine Technology
2015年
5期
360-362
,共3页
陈东超%徐婧%洪瑞新%顾煜炯%何成兵
陳東超%徐婧%洪瑞新%顧煜炯%何成兵
진동초%서청%홍서신%고욱형%하성병
旋转机械%振动%预测%广义回归神经网络
鏇轉機械%振動%預測%廣義迴歸神經網絡
선전궤계%진동%예측%엄의회귀신경망락
rotating machinery%vibration%forecasting%generalized regression neural network
提出了一种基于广义回归神经网络( GRNN)模型的旋转机械振动特征预测策略,给出了一种快速的GRNN模型平滑参数的优选方法;采用滑动窗口的方法更新训练样本,以便在每步预测之前获得能反应振动最新变化趋势的网络结构,进而提高预测精度。将该方法应用于某600 MW核电机组动静碰摩故障下的振动特征预测,并与粒子群算法优化的支持向量回归模型( PSO-SVM )、径向基函数神经网络( RBFNN )模型的预测结果进行了对比分析,结果表明:提出的振动预测模型的总体性能优于PSO-SVM、RBFNN模型,在学习样本数目较少的情况下也能够得到较为满意的预测结果。
提齣瞭一種基于廣義迴歸神經網絡( GRNN)模型的鏇轉機械振動特徵預測策略,給齣瞭一種快速的GRNN模型平滑參數的優選方法;採用滑動窗口的方法更新訓練樣本,以便在每步預測之前穫得能反應振動最新變化趨勢的網絡結構,進而提高預測精度。將該方法應用于某600 MW覈電機組動靜踫摩故障下的振動特徵預測,併與粒子群算法優化的支持嚮量迴歸模型( PSO-SVM )、徑嚮基函數神經網絡( RBFNN )模型的預測結果進行瞭對比分析,結果錶明:提齣的振動預測模型的總體性能優于PSO-SVM、RBFNN模型,在學習樣本數目較少的情況下也能夠得到較為滿意的預測結果。
제출료일충기우엄의회귀신경망락( GRNN)모형적선전궤계진동특정예측책략,급출료일충쾌속적GRNN모형평활삼수적우선방법;채용활동창구적방법경신훈련양본,이편재매보예측지전획득능반응진동최신변화추세적망락결구,진이제고예측정도。장해방법응용우모600 MW핵전궤조동정팽마고장하적진동특정예측,병여입자군산법우화적지지향량회귀모형( PSO-SVM )、경향기함수신경망락( RBFNN )모형적예측결과진행료대비분석,결과표명:제출적진동예측모형적총체성능우우PSO-SVM、RBFNN모형,재학습양본수목교소적정황하야능구득도교위만의적예측결과。
A strategy of rotating machinery vibration characteristics forecasting is proposed based on generalized regression neural network (GRNN) model.And the determination optimization of smoothing parameters are introduced .The method of sliding window is adopted to update the training samples ,thus,the newest network structure can refelect the changing trend of vibration responses would be achieved before every predition step which can mprove the prediction accuracy .The method is applied to forcast vibration characteristics of the contact rubbing fault of a 600MW nuclear power unit .Prediction results are compared with support vector regression optimized by particle swarm optimization algorithm ( PSO-SVR) model and radial basis function neural network ( RBFNN) model, respectively.Results show that the proposed GRNN vibration prediction model performs better both than PSO -SVR model as well as RBFNN model and forcast result can meet the requirment even with a few number of learning samples .