个人信息Personal Information
教授
博士生导师
硕士生导师
任职 : 现任中国工程热物理学会流体机械专委员会委员、中国航空学会学轻型燃气轮机分会委员、教育部重型燃气轮机教学资源库专家委员会委员、辽宁省能动类专业教指委副主任、大连市核事故应急指挥部专家组成员等职。
性别:女
毕业院校:大连理工大学
学位:硕士
所在单位:能源与动力学院
电子邮箱:dlwxf@dlut.edu.cn
基于不同压气机特性曲线预测方法的单轴燃气轮机动态性能仿真研究
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发表时间:2022-10-10
发表刊物:Journal of Engineering for Thermal Energy and Power
卷号:36
期号:3
页面范围:26-34
ISSN号:1001-2060
关键字:"Matlab/Simulink; Matlab/Simulink; compressor characteristic curve; prediction methods; dynamic performance simulation"
CN号:23-1176/TK
摘要:The study of component refinement modeling method has always been a hot topic in the field of gas turbine dynamic performance simulation. Here with the compressor core components of a classic single shaft gas turbine as object, based on modular modeling idea using Matlab/Simulink platform a system simulation platform is set up. The least square method, cubic spline interpolation method and BP neural network method are embedded into the platform for this prediction application study. The results show that in the compressor performance prediction,three methods can effectively predict the component performance, but the predictive results of the BP neural network and the cubic spline interpolation method are superior to the least square method. for the performance prediction of the whole machine,the simulation results of the least square method deviate from the preset value,while the simulation results of the BP neural network method and cubic spline interpolation method have high accuracy. For the timeliness, the time cost of BP neural network method is higher than the other two methods.
备注:新增回溯数据