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A New Adaptive Neural Network Control Scheme based on Feedback Linearization Technique for Nonlinear Processes

机译:一种新的自适应神经网络控制方案,基于非线性过程的反馈线性化技术

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In this paper, a new discrete-time adaptive control scheme based on feedback linearization technique is proposed to control single-input, single-output (SISO) processes with nonlinear and time-varying characteristics. Given this, an affine model of the process, incorporated in the control scheme, needs to be identified in an on-line manner. For this purpose, an on-line identification approach based on an adaptive neural network with growing and pruning radial basis function (GAP-RBF) structure is used for affine modeling. Also, some desired modifications in the neurons growing and pruning criteria of the original GAP-RBF algorithm has been proposed to enhance its performance in on-line identification. The proposed control scheme is evaluated via a highly nonlinear and time-varying continuous stirred tank reactor (CSTR) benchmark problem. The simulation results show the excellent performance of the developed adaptive control scheme for identification and control of the CSTR process.
机译:本文提出了一种基于反馈线性化技术的新的离散时间自适应控制方案,用于控制具有非线性和时变特性的单输入,单输出(SISO)过程。鉴于这一点,需要以在线方式识别在控制方案中的过程的仿射模型。为此目的,基于具有生长和修剪径向基函数(GAP-RBF)结构的自适应神经网络的在线识别方法用于仿射模型。此外,已经提出了原始GAP-RBF算法的神经元生长和修剪标准中的一些所需修改,以提高其在线识别的性能。所提出的控制方案是通过高度非线性和时变的连续搅拌罐反应器(CSTR)基准问题评估的控制方案。仿真结果表明,用于识别和控制CSTR过程的开发自适应控制方案的优异性能。

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