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首页> 外文期刊>Journal of control, automation and electrical systems >Multivariable State-Space Recursive Identification Algorithm Based on Evolving Type-2 Neural-Fuzzy Inference System
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Multivariable State-Space Recursive Identification Algorithm Based on Evolving Type-2 Neural-Fuzzy Inference System

机译:基于演化Type-2神经模糊推理系统的多变量状态空间递归识别算法

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In this paper, a novel approach for state-space evolving type-2 neural-fuzzy identification of multivariable dynamic systems is proposed. According to adopted methodology, conditions for creating and merging clusters are used to perform the structural adaptation of the neural-fuzzy model. The center and shape of each cluster are estimated, defining all rules in the interval type-2 neural-fuzzy inference system. The degree of uncertainty on the shape of type-2 membership functions is computed through an extended Kalman filter-based learning mechanism. Once the type-2 membership functions (upper and lower membership values) are estimated, the fuzzy Markov parameters are computed from experimental data, and for each incoming information, the parameters of state-space linear models in the consequent proposition of inference system are recursively estimated. The efficiency and applicability of the proposed methodology are demonstrated through experimental results of modeling of an industrial dryer.
机译:在本文中,提出了一种新的多变量动态系统的状态空间演化型号-2神经模糊识别的新方法。根据采用的方法,用于创建和合并群集的条件用于执行神经模糊模型的结构调整。估计每个群集的中心和形状,定义间隔类型-2神经模糊推理系统中的所有规则。通过扩展的基于卡尔曼滤波器的学习机制来计算2型隶属函数形状的不确定性程度。一旦估计2型隶属函数(上和较低的隶属值),从实验数据计算模糊马尔可夫参数,并且对于每个输入信息,随后的推理系统主张中的状态空间线性模型的参数递归地估计的。通过工业干燥器建模的实验结果证明了所提出的方法的效率和适用性。

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