


Artificial intelligence empowers the intelligent upgrading of smart cities
Artificial intelligence algorithms assist urban traffic managers in making better decisions by analyzing and predicting information generated by traffic travel; in the future, intelligent traffic solutions will involve fewer and fewer people, and even reach The level of automated operation. So, what are the application paths of artificial intelligence in smart cities?
1. Computing power reconstruction network
With the deepening development of 5G construction, new trends have emerged in the integration of smart city cloud networks. First, supercomputing networking enables the sharing of computing power, algorithms and tools across regions and urban agglomerations. Second, The first is the networking of edge data centers to achieve unified scheduling and reuse of idle computing resources across the entire network. The third is computing power sharing to build a new security system.
Computing power and power One of the keys to reconstructing the network is to solve the problem of power consumption of 5G base stations and provide new opportunities for shared construction of poles and towers.
The era is coming when computing power is productivity.
2. Intelligent transportation system
##The biggest helper of the intelligent transportation system comes from automatic driving system. When self-driving cars become the main force in urban traffic, not only traffic safety can be guaranteed, but also after combining big data and route planning algorithms, self-driving cars can automatically avoid congested areas and choose the optimal route. Before self-driving cars can truly completely replace human drivers, some assisted driving technologies and road control technologies have already entered daily life, such as automatic reversing based on sensors, cameras and control technologies. Library functions, pedestrian collision warning, front and rear collision warning, lane change warning, etc. Through comprehensive analysis of vehicle speed, distance between vehicles, and images, the computer can intervene in the driving of the vehicle a few seconds in advance, which can improve traffic safety. On the road, AI algorithms can already be used to control traffic lights. In 2016, Hangzhou's "Urban Data Brain" was tested on some road sections in Xiaoshan District. It used artificial intelligence algorithms to analyze vehicle data and road surveillance cameras to intelligently adjust traffic lights, increasing vehicle traffic speeds by an average of 3% to 5%, and some road sections improved 11 ##3. Build the platformIn addition, the application prospects of artificial intelligence in the digital domain are unlimited, such as the development of new drugs.
In short, smart cities paint a picture of life that is convenient, fast, intelligent, efficient, and desirable for urban residents, and almost all of these scenes require the participation of artificial intelligence. The construction of smart cities cannot be accomplished overnight. In the process of embedding artificial intelligence technology into smart cities step by step, urban residents are slowly accepting the baptism of new ideas and new lifestyles, and human society will usher in a great change.
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