Modeling and Simulation of Fuzzy Inference System

Advances in Fuzzy technology have created a surge of interest in the practical application of Fuzzy Set Theory. The main goal of this paper is to model various Fuzzy Inference Systems and facilitate Fuzzy rules designing with high accuracy, and the Simulation of one of these Inference Systems i.e. Boiler Controller. Three Inference Systems modeled here are as Medical Inference System, Bank Inference System, and Boiler Controller System based on the Fuzzy rules designing. Designing of Fuzzy Inference Systems and practical Boiler Controller simulation also requires the computation to be carried out in real time.

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