Access Point Deployment for Localizing Accuracy and User Rate in Cell-Free Systems
- URL: http://arxiv.org/abs/2412.07094v1
- Date: Tue, 10 Dec 2024 01:22:32 GMT
- Title: Access Point Deployment for Localizing Accuracy and User Rate in Cell-Free Systems
- Authors: Fanfei Xu, Shengheng Liu, Zihuan Mao, Shangqing Shi, Dazhuan Xu, Dongming Wang, Yongming Huang,
- Abstract summary: Next-generation mobile networks are designed to provide ubiquitous coverage and networked sensing.
Cell-free is a promising technique to realize this prospect.
This paper aims to tackle the problem of point (AP) deployment in cell-free systems.
- Score: 22.49391459228811
- License:
- Abstract: Evolving next-generation mobile networks is designed to provide ubiquitous coverage and networked sensing. With utility of multi-view sensing and multi-node joint transmission, cell-free is a promising technique to realize this prospect. This paper aims to tackle the problem of access point (AP) deployment in cell-free systems to balance the sensing accuracy and user rate. By merging the D-optimality with Euclidean criterion, a novel integrated metric is proposed to be the objective function for both max-sum and max-min problems, which respectively guarantee the overall and lowest performance in multi-user communication and target tracking scenario. To solve the corresponding high dimensional non-convex multi-objective problem, the Soft actor-critic (SAC) is utilized to avoid risk of local optimal result. Numerical results demonstrate that proposed SAC-based APs deployment method achieves $20\%$ of overall performance and $120\%$ of lowest performance.
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