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Shape Optimization of Supersonic Turbines Using Response Surface and Neural Network Methods

机译:基于响应面和神经网络方法的超音速涡轮机形状优化

摘要

Turbine performance directly affects engine specific impulse, thrust-to-weight ratio, and cost in a rocket propulsion system. A global optimization framework combining the radial basis neural network (RBNN) and the polynomial-based response surface method (RSM) is constructed for shape optimization of a supersonic turbine. Based on the optimized preliminary design, shape optimization is performed for the first vane and blade of a 2-stage supersonic turbine, involving O(10) design variables. The design of experiment approach is adopted to reduce the data size needed by the optimization task. It is demonstrated that a major merit of the global optimization approach is that it enables one to adaptively revise the design space to perform multiple optimization cycles. This benefit is realized when an optimal design approaches the boundary of a pre-defined design space. Furthermore, by inspecting the influence of each design variable, one can also gain insight into the existence of multiple design choices and select the optimum design based on other factors such as stress and materials considerations.
机译:涡轮机性能直接影响发动机特定的脉冲,推力重量比和火箭推进系统的成本。构造了结合径向基神经网络(RBNN)和基于多项式的响应面方法(RSM)的全局优化框架,用于超音速涡轮机的形状优化。基于优化的初步设计,对两级超音速涡轮的第一叶片和叶片进行形状优化,涉及O(10)设计变量。采用实验方法的设计来减少优化任务所需的数据量。事实证明,全局优化方法的主要优点在于,它使人们能够自适应地修改设计空间以执行多个优化周期。当最佳设计接近预定义设计空间的边界时,可以实现此好处。此外,通过检查每个设计变量的影响,还可以洞悉多种设计选择的存在,并根据其他因素(例如应力和材料考虑因素)选择最佳设计。

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