


Leading the new trend of autonomous driving, Suzhou is about to open its first smart expressway
With the continuous advancement of China’s intelligent transportation construction, autonomous driving technology has ushered in new development opportunities in the country. Recently, good news has come from Suzhou’s smart transportation construction. The country’s first smart highway that meets vehicle-road collaborative autonomous driving standards will soon be put into use in Suzhou. It is understood that this smart highway will use a series of advanced Sensing devices include smart cameras and lidar mounted above road crossbars. These devices will form a holographic perception "intelligent highway side sensing unit" that can collect and transmit all traffic participants and road condition information on the road section in real time
Through these devices, autonomous vehicles will be able to obtain possible information in advance Information that exists in blind areas of sight can also be obtained with real-time traffic data. This will greatly improve the safety and efficiency of autonomous vehicles on the highway
Currently, the project has covered the Sutai Expressway S17 (Huangdai Interchange to Yangcheng Hubei Interchange ) a two-way 56-kilometer section, of which 83% has been completed. Once the project is completed, it will become the first smart highway in China that fully complies with vehicle-road cooperative autonomous driving standards, making L4 level autonomous driving technology possible on the highway. This means that driving will be taken over by machines and humans will no longer be needed. Respond to all system requests
This smart transportation construction project in Suzhou represents China’s continued efforts and breakthroughs in the field of autonomous driving, laying a solid foundation for the development of future smart transportation. As far as I know, this will also provide valuable experience and demonstration for the application of more autonomous driving technologies in China. The successful launch of this project will further promote the development of China's intelligent transportation industry and bring new possibilities to traffic safety and convenience
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