到2030年,智能综合立体交通网全面推进——人工智能让交通运输更“聪明”
BIDUBIDU(US:BIDU) Ren Min Ri Bao·2025-11-13 00:35

Core Insights - The integration of artificial intelligence (AI) in transportation is transforming operational precision, reliability, and efficiency, as highlighted by the recent implementation guidelines from the Ministry of Transport and six other departments, aiming for a comprehensive smart transportation network by 2030 [1][2] Group 1: Implementation and Goals - The guidelines outline 16 specific tasks across four areas, focusing on technology supply and scenario empowerment, with a goal of achieving self-controlled key technologies and leading global standards by 2030 [1][2] - The establishment of a comprehensive transportation model is emphasized, which includes high-quality datasets, algorithm libraries, and toolchains to support the industry's intelligent transformation [2][3] Group 2: Efficiency Improvements - The implementation of smart traffic management systems is projected to enhance the efficiency of demonstration corridors by approximately 20% and improve emergency response efficiency by around 30% [3][4] - The digital transformation of transportation infrastructure is supported by AI through big data analysis and high-precision modeling, covering over 60,000 kilometers of demonstration corridors [3][4] Group 3: Application Scenarios - The guidelines deploy seven key areas for intelligent applications, including combined auxiliary driving, smart railways, and intelligent shipping, which will provide extensive testing grounds for new technologies and products [4][5] - The development of automated ports and intelligent navigation systems is accelerating, with 52 automated terminals established and applications in over ten domestic and international ports [4][5] Group 4: Infrastructure Support - The guidelines stress the importance of new infrastructure in supporting AI integration, focusing on computing power, data, and network capabilities [6][7] - The establishment of a comprehensive transportation big data center is prioritized to enhance data sharing and the creation of high-quality datasets, which are essential for AI model training and application [7]