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A New Radial Basis Function Neural Network Based Multi-variable Adaptive Pole-Zero Placement Controller

机译:一种基于径向基函数神经网络的多变量自适应零位自适应控制器

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In this paper a new multi-variable adaptive controller algorithm for non-linear dynamical systems has been derived which employs the Radial Basis Function (RBF) Neural Network. In the proposed controller, the unknown plant is represented by an equivalent model consisting of a linear time-varying sub-model plus a non-linear 'learning' sub-model. The parameters of the linear sub-model are identified by a recursive least squares (RLS) algorithm with a directional forgetting factor, whereas the unknown non-linear sub-model is modeled using the RBF neural network resulting in a new multi-variable non-linear controller with a generalized minimum variance performance index. In addition, the new controller overcomes the shortcomings of other linear control designs and provides an adaptive mechanism which ensures that both the closed-loop poles and zeros are placed at their pre-specified positions. Simulation results using a non-linear multi-input multi-output (MIMO) plant model demonstrate the effectiveness of the proposed controller.
机译:本文提出了一种新的用于非线性动力学系统的多变量自适应控制器算法,该算法采用径向基函数(RBF)神经网络。在提出的控制器中,未知工厂由等效模型表示,该等效模型由线性时变子模型和非线性“学习”子模型组成。线性子模型的参数是通过具有方向性遗忘因子的递归最小二乘(RLS)算法识别的,而未知的非线性子模型是使用RBF神经网络建模的,从而产生了一个新的多变量非变量模型。具有广义最小方差性能指标的线性控制器。此外,新控制器克服了其他线性控制设计的缺点,并提供了一种自适应机制,可确保将闭环极点和零点都放置在其预定位置。使用非线性多输入多输出(MIMO)工厂模型的仿真结果证明了所提出控制器的有效性。

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