Analysis of Emergency level at Sea Using Fuzzy Logic Approaches
In this paper we propose a fuzzy model of the point rating method for evaluating emergency level at sea and using Mamdani algorithm as a method of fuzzy inference. The input linguistic variables are sea pollution, damage ship and dangers to human health or life. Using this information the rule base with 80 rules was created. Having tested the fuzzy model of assessing the emergency level in different situations at sea, adequate responses were produced.
KeywordsFuzzy set Linguistic variable Term set Accident at sea Ship damage Sea pollution
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