Electromagnetic Wave Property Inspired Radio Environment Knowledge Construction and AI-based Verification for 6G Digital Twin Channel
Jialin Wang, Jianhua Zhang, Yutong Sun, Yuxiang Zhang, Tao Jiang,, Liang Xia

TL;DR
This paper introduces a novel electromagnetic wave-inspired method for constructing radio environment knowledge to enhance 6G digital twin channels, reducing complexity and improving prediction accuracy using AI techniques.
Contribution
The paper proposes a new REK construction method based on electromagnetic wave properties, simplifying environment information input and improving channel prediction accuracy.
Findings
Range selection accuracy reaches 90%
Prediction error maintained at 0.3
Testing time reduced to 0.04 seconds
Abstract
As the underlying foundation of a digital twin network (DTN), a digital twin channel (DTC) can accurately depict the process of radio propagation in the air interface to support the DTN-based 6G wireless network. Since radio propagation is affected by the environment, constructing the relationship between the environment and radio wave propagation is the key to improving the accuracy of DTC, and the construction method based on artificial intelligence (AI) is the most concentrated. However, in the existing methods, the environment information input into the neural network (NN) has many dimensions, and the correlation between the environment and the channel relationship is unclear, resulting in a highly complex relationship construction process. To solve this issue, in this paper, we propose a construction method of radio environment knowledge (REK) inspired by the electromagnetic wave…
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Taxonomy
TopicsTelecommunications and Broadcasting Technologies
