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Implementation of Evolving Fuzzy Models of a Nonlinear Process

机译:实施非线性过程的不断发展模糊模型

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This paper presents details on the implementation of evolving Takagi-Sugeno-Kang (TSK) fuzzy models of a nonlinear process represented by the pendulum dynamics in the framework of the representative pendulum-crane systems. The pendulum angle is the output variable of the TSK fuzzy models that are obtained by online identification. The rule bases and the parameters of the TSK fuzzy models are continuously evolved by an online identification algorithm (OIA) that adds new rules with more summarization power and modifies the existing rules and parameters. The OIA is associated with an input selection algorithm that guides the modelling in terms of ranking the inputs according to their importance factors. Three TSK fuzzy models evolved by the OIA are exemplified. The performance of the new evolving TSK fuzzy models is illustrated by experimental results conducted on pendulum-crane laboratory equipment.
机译:本文提出了关于代表摆在代表性摆动架系统框架中的摆动动力学所代表的非线性过程的演化Takagi-sugeno-kang(tsk)模糊模型的详细信息。摆角是通过在线识别获得的TSK模糊模型的输出变量。通过在线识别算法(OIA)连续演化的规则基础和TSK模糊模型的参数,该算法(OIA)增加了具有更多摘要电源的新规则并修改现有规则和参数。 OIA与输入选择算法相关联,这些算法根据其重要性因素来指导输入输入的建模。举例说明了由OIA演变的三个TSK模糊模型。通过在摆锤 - 起重机实验室设备上进行的实验结果说明了新的演化TSK模糊模型的性能。

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