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Advanced approach for the public transportation regulation system based on cybercars. (English) Zbl 1188.90065

The paper discusses intelligent transportation systems and the interaction between cybercars (automated vehicles able to run without dedicated guideways) and public transport. The authors discuss the transportation network consisting of a set of lines and communication, data exchange and a command and control center. The authors propose an evolutionary algorithm based decision support system for handling strategies online in case of disturbances and suggesting appropriate actions. Validation of the proposed approach is done by simulation. Different evaluation criteria are considered, as there are, kilometers, waiting times of customers, environmental cost, and quality of service. As a conclusion public transport and cybercars should be integrated into a single system instead of managing them separately.

MSC:

90B20 Traffic problems in operations research
68U35 Computing methodologies for information systems (hypertext navigation, interfaces, decision support, etc.)
92D99 Genetics and population dynamics
68U20 Simulation (MSC2010)

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