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HomeTechnology peripheralsIt IndustryCRRC's self-driving buses successfully trialed in France, ushering autonomous transportation into a new era

News on October 8. Recently, CRRC officially announced that the self-driving bus they developed has been put into trial operation in the Marne Vallée province in France, marking a new breakthrough in self-driving technology on an international scale.

This vehicle belongs to the electric city bus series C12AI, with a body length of 12 meters. Its biggest feature is that it can transport passengers in a real traffic environment and realize real-time interaction of dynamic information about people, vehicles and roads. Although there is no obvious difference in appearance from a traditional bus, in fact, it no longer requires a driver to control it, but an advanced artificial intelligence system controls the driving of the vehicle. Only in emergencies will the driver take over the steering wheel again to ensure the safety of passengers

CRRCs self-driving buses successfully trialed in France, ushering autonomous transportation into a new era

According to the editor’s understanding, the goal of this trial project is to allow autonomous driving The system can continuously learn and accumulate more experience to gradually realize the development of autonomous transportation. As early as December 2022, this self-driving bus had completed its trial operation in the suburbs of Paris, France, and accumulated valuable experience for this official trial operation.

In addition, CRRC Electric Co., Ltd. has also cooperated with a number of French companies to further optimize autonomous driving technology, especially in the "intersection priority" technology, which has successfully reduced the running time of vehicles on the entire road section. 40 minutes reduced to just 23 minutes. This initiative will reach a new peak in 2024, when CRRC Electric plans to provide three 12-meter smart driving vehicles to support line operations in Paris, France, providing more possibilities for the development of autonomous driving technology. Continuous breakthroughs in autonomous driving technology will bring more convenience and safety to future transportation.

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