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Type 2 Fuzzy Neural Structure for Identification and Control of Time-Varying Plants

机译:用于时变植物识别和控制的2型模糊神经结构

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摘要

In industry, most dynamical plants are characterized by unpredictable and hard-to-formulate factors, uncertainty, and fuzziness of information, and as a result, deterministic models usually prove to be insufficient to adequately describe the process. In such situations, the use of fuzzy approaches becomes a viable alternative. However, the systems constructed on the base of type 1 fuzzy systems cannot directly handle the uncertainties associated with information or data in the knowledge base of the process. One possible way to alleviate the problem is to resort to the use of type 2 fuzzy systems. In this paper, the structure of a type 2 Takagi–Sugeno–Kang fuzzy neural system is presented, and its parameter update rule is derived based on fuzzy clustering and gradient learning algorithm. Its performance for identification and control of time-varying as well as some time-invariant plants is evaluated and compared with other approaches seen in the literature. It is seen that the proposed structure is a potential candidate for identification and control purposes of uncertain plants, with the uncertainties being handled adequately by type 2 fuzzy sets.
机译:在工业中,大多数动态工厂的特征在于不可预测且难以公式化的因素,不确定性和信息的模糊性,因此,确定性模型通常证明不足以充分描述过程。在这种情况下,使用模糊方法成为可行的选择。但是,基于类型1模糊系统构建的系统无法直接处理与过程知识库中的信息或数据相关的不确定性。减轻问题的一种可能方法是求助于2型模糊系统。本文提出了一种2型Takagi–Sugeno–Kang模糊神经系统的结构,并基于模糊聚类和梯度学习算法推导了其参数更新规则。对它在识别和控制时变植物以及某些时不变植物中的性能进行了评估,并与文献中的其他方法进行了比较。可以看出,提出的结构对于不确定植物的识别和控制目的是一个潜在的候选者,不确定性可以通过2型模糊集得到充分处理。

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