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Vol: 53(67) No: 1 / March 2008      

Adaptive Fuzzy System for Car Overtaking Assistance on National Roads
Florica Naghiu
Department of Computers, “Politehnica” University of Timisoara, Faculty of Automation and Computers, 2 V. Parvan, 300223 Timisoara, Romania, e-mail: floricel_naghiu@yahoo.com
Simona Petcu
Department of Computers, “Politehnica” University of Timisoara, Faculty of Automation and Computers, 2 V. Parvan, 300223 Timisoara, Romania, e-mail: petcu.simona@gmail.com
Dan Pescaru
Department of Computers, “Politehnica” University of Timisoara, Faculty of Automation and Computers, 2 V. Parvan, 300223 Timisoara, Romania, phone: (+4) 0256-403259, e-mail: dan@cs.upt.ro


Keywords: vehicle applications, electronic driving assistance, expert systems, fuzzy logic controllers, overtaking

Abstract
Driver Assistance Systems are designed to provide active support to a vehicle driver by identifying potentially dangerous situations in advance and helping to avoid them. Overtaking maneuvers generates many hazardous driving situations as proved by several statistical reports. Considering that, this paper proposes a solution for overtaking assistance on national roads. It is based on adaptive fuzzy logic controllers and uses an intuitive interface to help the driver to take the right decision while overtaking. It could also be part of an autonomous vehicle.

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