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| Artificial intelligence-empowered transformation of engineering education: reconstructing the talent cultivation system for communication engineering through a domestically developed simulation ecosystem |
| MA Yingjie, XIAO Song, YANG Yatao, GUO Chao, JIN Jifang |
| Department of Electronic and Communication Engineering, Beijing Electronic Science and Technology Institute, Beijing 100070 |
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Abstract In response to the dual strategic demands of digital transformation in engineering education and core technology sovereignty, this study innovatively proposes a tripartite collaborative framework, which is “ideological education-artificial intelligence empowerment-domestic practice”, for cultivating communication engineering talent in higher education. Leveraging the domestic modeling/ simulation platform and Julia high-performance programming language, a virtual simulation teaching system spanning the full communication system chain is developed. It achieves 100% self-developed algorithm libraries, establishing a reusable domestic technology ecosystem. Driven by knowledge graphs for personalized learning paths, the system integrates technological sovereignty awareness into the engineering competency matrix, creating a trinity educational paradigm that is value cultivation- knowledge transfer-capability building. This framework presents a scalable Chinese paradigm for engineering education that effectively addresses “chokepoint” technology challenges.
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Received: 01 October 2025
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| Cite this article: |
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MA Yingjie,XIAO Song,YANG Yatao等. Artificial intelligence-empowered transformation of engineering education: reconstructing the talent cultivation system for communication engineering through a domestically developed simulation ecosystem[J]. Electrical Engineering, 2026, 27(5): 50-54.
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https://dqjs.cesmedia.cn/EN/Y2026/V27/I5/50
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