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On-line Fuzzy Identification of Thermal Systems Based on anImproved T-S Model

机译:基于Animproved T-S模型的热系统在线模糊识别

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In view of fuzzy modeling of complicate nonlinear systems, an on-line identification algorithm based on an improved T-S model is presented. Differential equation structure of the model is obtained first, then the fuzzy duster center is corrected on-line according to the close degree of the input sample and the cluster center, and the cluster radius is refreshed in real-time according to the distance between the input sample and 'the cluster center. Finally, consequent parameters of the model are identified by the recursive least squares algorithm. Compared with previous identification algorithms, the on-line identification algorithm presented in this paper requires less fuzzy rules, has higher identification precision, and, is simple and easy to implement. Practicability and effectiveness of the method are proved by the simulation results of the Box-Jenkins data and the boiler.overheated steam temperature system. It provides a method to identify model parameters on-line for many new control strategies, such as fuzzy predictive control, adaptive control, etc.
机译:鉴于混合非线性系统的模糊建模,提出了一种基于改进T-S模型的在线识别算法。首先获得该模型的微分方程结构,则模糊喷粉器中心线上根据输入采样和群集中心的接近度校正,并且集群半径根据之间的距离在实时刷新输入样本和'集群中心。最后,通过递归最小二乘算法识别模型的后续参数。与先前的识别算法相比,本文中提出的在线识别算法需要更少的模糊规则,具有更高的识别精度,并且简单易于实现。通过箱子詹金斯数据和锅炉的仿真结果证明了该方法的实用性和有效性。从锅炉的蒸汽温度系统的仿真结果证明。它提供了一种识别用于许多新控制策略的模型参数的方法,例如模糊预测控制,自适应控制等。

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