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http://dx.doi.org/10.14400/JDC.2014.12.4.277

Characteristics of Gas Furnace Process by Means of Partition of Input Spaces in Trapezoid-type Function  

Lee, Dong-Yoon (Dept. of Electrical Electronic Engineering, Joongbu University)
Publication Information
Journal of Digital Convergence / v.12, no.4, 2014 , pp. 277-283 More about this Journal
Abstract
Fuzzy modeling is generally using the given data and the fuzzy rules are established by the input variables and the space division by selecting the input variable and dividing the input space for each input variables. The premise part of the fuzzy rule is presented by selection of the input variables, the number of space division and membership functions and in this paper the consequent part of the fuzzy rule is identified by polynomial functions in the form of linear inference and modified quadratic. Parameter identification in the premise part devides input space Min-Max method using the minimum and maximum values of input data set and C-Means clustering algorithm forming input data into the hard clusters. The identification of the consequence parameters, namely polynomial coefficients, of each rule are carried out by the standard least square method. In this paper, membership function of the premise part is dividing input space by using trapezoid-type membership function and by using gas furnace process which is widely used in nonlinear process we evaluate the performance.
Keywords
Fuzzy Modeling; input variables; modified quadratic; trapezoid-type function; gas furnace process;
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Times Cited By KSCI : 3  (Citation Analysis)
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