A Fuzzy Inference System (FIS) is an efficient mechanism to solving intricate engineering systems with uncertainty. In present times the quality of Water is an important problem. In this article, a model is proposed to measure Indicate of Water Attributes (IWA) for the Rivers in the state of Tamil Nadu in southern India. This FIS system is easier to understand. It also accelerates the number figures of the IWA than the existing methods of the presents. To validate the given model, comparison with the virtuous nature of Indian Water inference is given. Further an appropriate prediction of the proposed inference system is attained.

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