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Fuzzy State Space Model of Multivariable Control Systems
Author(s) -
Rainah Ismail,
Kamaruzaman Jusoff,
Tahir Ahmad,
Siti Anom Ahmad,
Rayees Ahmad
Publication year - 2009
Publication title -
computer and information science
Language(s) - English
Resource type - Journals
eISSN - 1913-8997
pISSN - 1913-8989
DOI - 10.5539/cis.v2n2p19
Subject(s) - multivariable calculus , computer science , vagueness , flexibility (engineering) , state space , fuzzy logic , state space representation , state (computer science) , fuzzy control system , mathematical optimization , control engineering , artificial intelligence , algorithm , mathematics , statistics , engineering

Fuzzy State Space Model (FSSM) is a new modeling technique, which was developed for solving inverse problems in multivariable control systems. In this approach, the flexibility of fuzzy modeling is incorporated with the crisp state space models proposed in the modern control theory. The vagueness and uncertainty of the parameters are represented in the model construction, as a way of increasing the available information in order to achieve a more precise model of reality.  Some important properties and characteristics of FSSM were also investigated. In this paper, our discussion is focused on the formulation of the FSSM that provides algorithms for optimization of input parameters directly. The effectiveness of this modeling approach is illustrated by implementing it to the state space model of a furnace system of a combined cycle power plant. The results obtained in this application demonstrate that the proposed new modeling approach is reasonable and provides an innovative tool for decision-makers.

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