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Recursive least squares identification of hybrid Box-Jenkins model structure in open-loop and closed-loop

机译:开环和闭环混合Box-Jenkins模型结构的递归最小二乘辨识

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Inspired by the fact that, in order to obtain a global optimal solution, a continuous plant should be identified simultaneously with the noise model, a simple but effective identification method is firstly proposed for hybrid Box Jenkins structure in open-loop and close-loop. Two recursive generalized extended least squares algorithms are developed for different plant models. In recursive computations, the idea of auxiliary model has been applied to make the global recursive identification possible, and the idea of delay compensation has been introduced to handle the identification of SOPDT plant model effectively. Meanwhile, the online implementation issues of recursive algorithms are discussed. The two proposed algorithms can be further extended to closed-loop systems by an appropriate closed-loop setup. The simulation examples demonstrate the accuracy and effectiveness of the proposed method in open-loop and closed-loop. (C) 2015 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:受到这样一个事实的启发:为了获得全局最优解,应该同时使用噪声模型来识别连续的工厂,首先针对开环和闭环混合Box Jenkins结构提出了一种简单而有效的识别方法。针对不同的工厂模型开发了两种递归的广义扩展最小二乘算法。在递归计算中,已采用辅助模型的思想来使全局递归识别成为可能,并引入了延迟补偿的思想来有效地处理SOPDT工厂模型的识别。同时,讨论了递归算法的在线实现问题。可以通过适当的闭环设置将这两种建议的算法进一步扩展到闭环系统。仿真实例证明了该方法在开环和闭环中的准确性和有效性。 (C)2015富兰克林研究所。由Elsevier Ltd.出版。保留所有权利。

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