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NEURAL NETWORK FOR STEADY-STATE PERFORMANCE APPROXIMATION

机译:稳态性能逼近的神经网络

摘要

Systems and methods that include and/or leverage a neural network to approximate the steady-state performance of a turbine engine are provided. In one exemplary aspect, the neural network is trained to model a physics-based, steady-state cycle deck. When properly trained, novel input data can be input into the neural network, and as an output of the network, one or more performance indicators indicative of the steady-state performance of the turbine engine can be received. In another aspect, systems and methods for approximating the steady-state performance of a “virtual” or target turbine engine based at least in part on a reference neural network configured to approximate the steady-state performance of a “fielded” or reference turbine engine are provided.
机译:提供了包括和/或利用神经网络来近似涡轮发动机的稳态性能的系统和方法。在一个示例性方面,对神经网络进行训练以对基于物理的稳态循环平台进行建模。经过适当训练后,可以将新的输入数据输入到神经网络中,并且作为网络的输出,可以接收一个或多个指示涡轮发动机稳态性能的性能指标。在另一方面,用于至少部分地基于参考神经网络来近似“虚拟”或目标涡轮发动机的稳态性能的系统和方法,该参考神经网络被配置成近似“现场”或参考涡轮发动机的稳态性能。提供。

著录项

  • 公开/公告号EP3596325A1

    专利类型

  • 公开/公告日2020-01-22

    原文格式PDF

  • 申请/专利权人 GENERAL ELECTRIC COMPANY;

    申请/专利号EP20180767309

  • 发明设计人 VANDIKE JOHN LAWRENCE;DALE KENNETH LEE;

    申请日2018-01-26

  • 分类号F02C9/28;F01D19;

  • 国家 EP

  • 入库时间 2022-08-21 11:39:08

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