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A fuzzy soft flood alarm model. (English) Zbl 1183.94069

Summary: A wide range of hydrological analyses for flood, water resources, water quality, ecological studies, etc., require reliable quantification of rainfall inputs. This work illustrates a fuzzy analysis that has the capability to simulate the unknown relations between a set of meteorological and hydrological parameters. A fuzzy approach to flood alarm prediction based on the fuzzy soft set theory is applied to five selected sites of Kerala, India to predict potential flood.

MSC:

94D05 Fuzzy sets and logic (in connection with information, communication, or circuits theory)
68T37 Reasoning under uncertainty in the context of artificial intelligence
62P12 Applications of statistics to environmental and related topics
62A86 Fuzzy analysis in statistics
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