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An Algorithm for Clustering Input Variables in a Fuzzy Model in a FLC Process

机译:一种用于FLC过程中模糊模型中的输入变量的算法

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The input and output variables in fuzzy systems are linguistic variables. The base of the fuzzy rule represents the central part of a fuzzy controller, and the fuzzy rule represents its basic part, and it has the following form: "if R then P", where R and P represent the fuzzy relation, i.e. the proposition. Complex systems described by fuzzy relations generate a large number of inference rules. Grouping the states into clusters on the basis of which we make conclusions about the value of the output variable is performed by an expert based on his or her experience and knowledge. Ideally, the number of clusters should correspond to the number of attributes by which the value of the output variable is classified, which, in reality is not the case. In the absence of experts, we perform grouping on the basis of some of the criteria. One way of grouping descriptive states into clusters is presented in this paper. It presents a construction of the method of grouping descriptive states of fuzzy models, with the aim of drawing conclusions about the value of the output variable described by a given state. The presented method of grouping descriptive states is based on defined characteristic values associated with fuzzy numbers by which the input variables of the model are evaluated. They represent the basis for defining the characteristic value of the descriptive state of the output variable of a fuzzy model. For the presented method, a mathematical logical argumentation of the application is given, as an algorithm for the application of the constructed method. The application of the algorithm is demonstrated in measuring the economic dimension of the sustainability of tourism development, measured by comparative evaluation indicators.
机译:模糊系统中的输入和输出变量是语言变量。模糊规则的基础代表了模糊控制器的中心部分,模糊规则代表其基本部分,它具有以下形式:“如果r然后p”,其中r和p表示模糊关系,即主题。模糊关系描述的复杂系统产生了大量推理规则。根据其基于他或她的经验和知识,将各种指定对群集的结论是关于输出变量的价值。理想情况下,群集的数量应对应于输出变量的值分类的属性数,即实际情况并非如此。在没有专家的情况下,我们在一些标准的基础上进行分组。本文介绍了将描述性状态分组成簇的一种方法。它呈现了对模糊模型的描述性状态分组的方法的构造,目的是借鉴给定状态描述的输出变量的值的结论。分组描述性状态的呈现方法基于与模糊数相关联的定义特征值,通过该数字值,通过该数字,通过该模糊数进行评估模型的输入变量。它们代表了定义模糊模型的输出变量的描述性状态的特征值的基础。对于呈现的方法,给出了应用程序的数学逻辑参数,作为应用于构造方法的算法。算法的应用在衡量旅游开发可持续性的经济方面,通过比较评估指标测量。

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