Recognition of Smart Transportation through Randomization and Prioritization
Complexity involved in maintenance of proper traffic rules and controlling them certainly is raising as an accruing problematic situation in our daily life. There are more collisions that are been taking place now and then due to the inefficient traffic signaling formats that are laid presently. The proposed Smart Transportation can find a fashion which provides co-ordination with neighboring traffic control points. Even sometimes, due to the poor performance of the signals, they are illogical and inefficient. So, in order to solve this problem we are assigning a technique of organizing a rule of allotting priority to the traffic lines by considering the count of vehicles through randomization technique on that particular line. The lane that has more traffic gets less ‘green’ signal while the ones with less cars are kept open for more time. This current paper is designed to address these issues. This transportation methodology provides an efficient way to manage the traffic for the city traffic management authority by providing the alert signals and can easily manage the traffic flow for the vehicles and pedestrians automatically through prior update for every interval of time kept constant. Even the registration of the police is kept for surveillance in order to provide security and also to fulfill the prior requirements. It is been beneficial by providing the VIP data when authorized police provides.
KeywordsRandomization Prioritization Automation security and authorization
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