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An improved data-complementing method via fuzzy rough sets for fuzzy-relationship matrix modeling and applications

机译:一种改进的基于模糊粗糙集的数据补充方法-模糊关系矩阵建模与应用

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An improved data-complementing algorithm using fuzzy rough sets is presented in this work. The fuzzy systems with incomplete data and similarity matrices are defined for increasing accuracy of a fuzzy relationship matrix. A complete sampled-data system is formulated by complementing the controller's input and output information. Then, a fuzzy relationship matrix based on a semi-tensor product is established. This method is applied to air-conditioning control systems for an indoor thermal environment. A complete fuzzy-relationship matrix model for the fuzzy controller is built after the experimental data has been complemented. Compared with the model established using the incomplete data, simulation studies show that the fuzzy controller established using complete data can greatly improve the control accuracy of the indoor comfortability.
机译:在这项工作中提出了一种改进的使用模糊粗糙集的数据补全算法。定义了具有不完整数据和相似矩阵的模糊系统,以提高模糊关系矩阵的准确性。通过补充控制器的输入和输出信息,可以制定出完整的采样数据系统。然后,建立了基于半张量积的模糊关系矩阵。该方法适用于室内热环境的空调控制系统。在对实验数据进行补充之后,为模糊控制器建立了一个完整的模糊关系矩阵模型。与使用不完全数据建立的模型相比,仿真研究表明,使用完全数据建立的模糊控制器可以大大提高室内舒适度的控制精度。

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