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Neural Network Model Predictive Control with Genetic Algorithm Optimization and Its Application to Turbofan Engine Starting

机译:遗传算法优化的神经网络模型预测控制及其在涡扇发动机启动中的应用

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Turbofan engine starting is one of the most important procedures during the whole process of job, but also very complicated due to its nonlinear dynamic working procedure. Recognizing the weaknesses of predict model and traditional algorithm for rolling optimization to deal with strong nonlinear systems, this paper presents neural network model predictive control method with genetic algorithm optimization, and uses this method to devise an optimal controller for turbofan engine starting. Experiment results show that under the premise of accurate limits, we can obtain the optimal fuel supply rate with enough precision.
机译:涡轮风扇发动机的启动是整个工作过程中最重要的程序之一,但由于其非线性动态工作程序也非常复杂。认识到预测模型和传统的滚动优化算法在处理强非线性系统中的弱点,提出了遗传算法优化的神经网络模型预测控制方法,并以此方法设计了涡扇发动机启动的最优控制器。实验结果表明,在精确限制的前提下,我们可以得到足够的精度来获得最佳的燃油供应率。

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