5G+Artificial Intelligence AI Vision Assists in the Construction of Smart Ports

5G+Artificial Intelligence AI Vision Assists in the Construction of Smart Ports

Authors

  • Ling Li China United Network Communications Co., Ltd. Nanjing Branch, Nanjing, Jiangsu 210000
  • Yijing Wu China United Network Communications Co., Ltd. Nanjing Branch, Nanjing, Jiangsu 210000

DOI:

https://doi.org/10.53469/wjimt.2025.08(09).01

Keywords:

5G, AI, Artificial Intelligence, MEC (Multi Access Edge Computing), Smart Port, Management Innovation

Abstract

Traditional port business scenarios are complex and lack safety supervision and effective management tools. The port operating environment is harsh, with hundreds or thousands of operating machinery and a large number of human-machine joint operation scenarios. There are many video cameras and mobile operation equipment in the port area, making manual supervision extremely difficult. And the traditional network deployment mode is no longer able to meet the constantly increasing regulatory business needs of ports. This article focuses on the use of 5G, MEC, AI and other technologies to build 5G+AI (Artificial Intelligence) algorithm application scenarios at the forefront of various ports under Nanjing Port Group, realizing the empowerment of port AI applications, effectively reducing labor costs in the port area, minimizing human-machine contact, ensuring the safety of operators, and improving production management capabilities. The innovative application scenarios of 5G+AI promote the green and sustainable development of the port industry, solve operational safety issues in port areas, maintain enterprise management and decision-making capabilities, and comprehensively enhance the management innovation of integrated port services.

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Published

2025-09-19

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