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Neural network PID controller auto-tuning design and application

机译:神经网络PID控制器自动调整设计和应用

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The simple PID controller can't get the satisfied degree, especially for the time-varying objects and non-linear systems, the traditional PID controllers can do nothing for them. to non-linear systems, the NN PID controller has a good controller effect in the non-line premature turning and optimizing. The NN PID controller can make both neural network and PID control into an organic whole, which has the merit of any PID controller for its Simple construction and definite physical meaning of parameters, and also has the self learning and adaptive functions of a neural network. Radial basis function neural network(RBFNN)is a kind of three-layer feed forward neural network with single hidden layer, there is Great difference between it's structure and learning algorithms with BP neural network's. so, in the Paper, the NN PID is used to achieve PID parameters self adjustments on RBF NN identification. an improved single neural adaptive PID controller is presented and PID control based on BPNN is studied in detail. A new self-adaptive learning model of RBF neural net work as established successfully.
机译:简单的PID控制器无法获得满足程度,特别是对于时变的对象和非线性系统,传统的PID控制器对它们无关。对于非线性系统,NN PID控制器在非线性过早转动和优化中具有良好的控制器效果。 NN PID控制器可以使神经网络和PID控制成有机整体,其具有任何PID控制器的优点,用于其参数的简单结构和明确的物理意义,并且还具有神经网络的自学习和自适应功能。径向基函数神经网络(RBFNN)是一种具有单个隐藏层的三层馈线前向神经网络,它与BP神经网络的结构和学习算法之间存在很大差异。因此,在本文中,NN PID用于实现RBF NN识别上的PID参数自我调整。提供了一种改进的单个神经自适应PID控制器,并详细研究了基于BPNN的PID控制。成功建立的RBF神经网络工作的新自适应学习模型。

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