介 石,何中海,吴亚东.耦合神经网络的流线曲率法在风扇/增压级性能 预测中的应用[J].航空发动机,2025,51(6):34-41
耦合神经网络的流线曲率法在风扇/增压级性能 预测中的应用
Application of Streamline Curvature Method Coupled with Neural Network in Performance Prediction ofFan/Booster
  
DOI:
中文关键词:  流线曲率法  风扇/增压级  性能预测  神经网络  航空发动机
英文关键词:streamline curvature method  fan/booster  performance prediction  neural network  aeroengine
基金项目:国家级研究项目资助
作者单位
介 石,何中海,吴亚东 上海交通大学 机械与动力工程学院上海 200240 
摘要点击次数: 1941
全文下载次数: 461
中文摘要:
      风扇/增压级作为航空发动机的核心部件,其性能直接影响发动机整机的效率和推力输出。为满足现代航空风扇/增压 级设计方法的更高需求,需要对传统的流线曲率(SLC)法改进和优化,采用神经网络对传统经验模型进行替代,通过人为构造叶栅 流场数据集对神经网络模型进行训练,并在传统流线曲率法算法上耦合该模型以形成计算程序。利用该程序对风扇/增压级进行 性能预测,并将计算结果和传统流线曲率法与3维数值模拟结果进行对比。结果表明:经改进后的流线曲率法,其预测结果相较 于传统算法,精度平均提高约2%,从而实现了对流场的准确预测。
英文摘要:
      As a core component of aeroengine,the fan/booster directly affects the overall efficiency and thrust output of the aeroengine. To meet the increasing demands of modern fan/booster design methods, improvements and optimizations of the traditional streamline curvature (SLC) method are required. In this study,neural networks are employed to replace conventional empirical models. A blade-row flow-field dataset is artificially constructed to train the neural-network model,which is then coupled with the traditional SLC algorithm to form a computational program. This program is applied to predict the performance of a specific fan/booster,and the results are compared with those obtained by the traditional SLC method and by three-dimensional numerical simulations. The results show that the improved SLC method yields prediction accuracy about 2% higher on average than those of the traditional algorithm. Thereby a more accurate flow- field prediction is enabled.
查看全文  HTML  查看/发表评论  下载PDF阅读器