首页> 外文会议>Innovative Computing, Information and Control (ICICIC-2009), 2009 >Application of Fuzzy Neural Network to Aero-Engine Controller Design
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Application of Fuzzy Neural Network to Aero-Engine Controller Design

机译:模糊神经网络在航空发动机控制器设计中的应用

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Multivariable fuzzy neural network based on the one-layer network and Takaga-Sugeno fuzzy model was proposed in this paper where the parameters of the fuzzy rules and the inference process were all realized by neural network on-line, and the network was trained with the method of gradient descent. The presented method which possesses the ability of online learning and improving was applied to aero-engine accelerate process controller design, whose parameters vary significantly over the operation condition, the parameters of the controller were deduced real-time based on the change of the aero-engine condition with the adoption of single-layer network. An ECU-in-the-loop real-time simulation platform based on the rapid prototyping real-time simulation approach was constructed and the hardware-in-the-loop simulation was done with the aero-engine nonlinear component model, the results showed the well tracking and decouple as well as robust performance of the controller, meanwhile the effectivity of fuzzy neural network with the ability of self-learning and self improving has been proved.
机译:提出了一种基于单层网络和Takaga-Sugeno模糊模型的多变量模糊神经网络,其中模糊规则的参数和推理过程均通过神经网络在线实现,并通过神经网络对其进行训练。梯度下降法。提出的具有在线学习和改进能力的方法被应用于航空发动机加速过程控制器的设计,其参数在整个运行条件下变化很大,控制器的参数是根据航空发动机的变化实时推导的。采用单层网络的引擎状况。构建了基于快速原型实时仿真方法的ECU在环实时仿真平台,并利用航空发动机非线性部件模型进行了在环硬件仿真,结果表明:控制器具有良好的跟踪和解耦性以及鲁棒性,同时证明了具有自学习和自我完善能力的模糊神经网络的有效性。

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