Title :
An economic assistance strategy for autonomous driving system
Author :
Chao-Yang Lee ; Chia-Fu Lee ; Hsin-Mu Tsai
Author_Institution :
Automotive Res. & Testing Center, Changhua, Taiwan
Abstract :
Recently autonomously driven vehicle technologies become the potential researches in order to increase road safety, driving comfort, fuel efficiency and so on. This study focuses on the fuel-saving issue in automatic vehicle within the scope of the decision maker layer. An intelligent economic assistance strategy (EAS) is explained and aims to reduce fuel cost when the vehicle is driving autonomously. The EAS has performed in decision marker layer which includes three components, mission component, behavior component and motion component. First, the mission component decides the shortest route from present location to destination. Next, in behavior component, the EAS receives the scene information and ego-vehicle information from data acquisition unit in perception. Due to the development the different economy schemes based on different driving scenarios can provide more fuel efficiency, the system analysis the whole information and adopts the driving scenario classifier to classify the immediately driving behavior. Then, in motion component, the EAS presents an economic driving pattern to guidance automatic vehicle to achieve low fuel consumption. Based on the result of the EAS system, the action layer drives the automatic vehicle according to suggest of economy driving speed and adjusts the speed and acceleration within limited of safe and economy. Finally, the proposed economy assistant strategy can successfully guide automatic vehicle in an economic driving style.
Keywords :
automobiles; fuel economy; image classification; natural scenes; road safety; traffic engineering computing; action layer; automatic vehicle; autonomous driving system; autonomously driven vehicle technologies; behavior component; data acquisition unit; decision maker layer; destination location; driving behavior classification; driving comfort; driving scenario classifier; economic assistance strategy; economy assistant strategy; economy driving speed; ego-vehicle information; fuel cost reduction; fuel efficiency; fuel-saving issue; intelligent economic assistance strategy; mission component; motion component; road safety; scene information; Acceleration; Economics; Fuels; Gears; Real-time systems; Roads; Vehicles;
Conference_Titel :
Advanced Robotics and Intelligent Systems (ARIS), 2015 International Conference on
Conference_Location :
Taipei
DOI :
10.1109/ARIS.2015.7158231