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Ahybridneural-decouplingpole placement controller and its application

机译:混合神经退耦极放置控制器及其应用

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A hybrid control architecture is proposed integrating recurrent, dynamic neural networks into the pole placement context. The neural network topology involves a modified recurrent Elman network to capture the dynamics of the plant to be controlled, being the learning phase implemented on-line using a truncated backpropagation through time algorithm. At each time step the neural model, modelling a general non-linear state space system, is linearized to produce a discrete linear time varying state space model. Once the neural model is linearised some well-established standard linear control strategies can be applied. In this work the design of a decoupling pole placement controller is considered at each instant, which combined with the on-line learning of the network results in a self-tuning adaptive control scheme. Experimental results collected from a laboratory three tank system confirm the viability and cffcctivcncss of the proposed methodology.
机译:提出了一种混合控制架构,将递归动态神经网络集成到极点放置上下文中。神经网络拓扑结构涉及一个经过修改的递归Elman网络,以捕获要控制的工厂的动态,这是使用通过时间截断的反向传播在线实现的学习阶段。在每个时间步长,将对一般非线性状态空间系统进行建模的神经模型进行线性化,以生成离散的线性时变状态空间模型。一旦将神经模型线性化,就可以应用一些公认的标准线性控制策略。在这项工作中,在每个时刻都考虑了去耦极点布置控制器的设计,该设计与网络的在线学习相结合,形成了一种自调整的自适应控制方案。从实验室三缸系统收集的实验结果证实了所提出方法的可行性和实用性。

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