Fuzzy Reasoning as a Base for Collision Avoidance Decision Support System
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This paper considers a decision support system based on fuzzy logic integrated into an existing bridge collision avoidance system. The main goal is to determine the appropriate course of avoidance, using fuzzy reasoning.
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IMO (1972) Convention on the international regulations for preventing collisions at sea (COLREG).
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