Autonomous Driving with RSMA-Enabled Finite Blocklength Transmissions: Ergodic Performance Analysis and Optimization
Yi Wang, Yingyang Chen, Li Wang, Donghong Cai, Xiaofan Li, and Pingzhi Fan

TL;DR
This paper analyzes and optimizes RSMA-enabled finite blocklength transmissions for autonomous driving, improving ergodic performance, reducing latency, and ensuring fairness under high-mobility conditions.
Contribution
It derives a closed-form ergodic sum-rate bound and proposes a joint optimization framework for power and rate splitting in RSMA with finite blocklengths.
Findings
Significant ergodic sum-rate improvement over SDMA.
Reduced blocklength and block error rate (BLER).
Enhanced fairness for users with poor channels.
Abstract
Rate-splitting multiple access (RSMA) is a key technology for next-generation multiple access systems due to its robustness against imperfect channel state information (CSI). This makes RSMA particularly suitable for high-mobility autonomous driving, where ultra-reliable and low-latency communication (URLLC) is essential. To address the stringent requirements, this study enables RSMA finite blocklength (FBL) transmissions and explicitly evaluates the ergodic performance. We derive the closed-form lower bound for the ergodic sum-rate of RSMA, considering vital factors such as the vehicle velocities, vehicle positions, power allocation of each stream, blocklengths, and block error rates (BLERs). To further enhance the ergodic sum-rate while complying with quality of service (QoS) rate constraints, we jointly optimize the global power coefficient, private power distribution, and common…
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Taxonomy
TopicsSmart Parking Systems Research · Autonomous Vehicle Technology and Safety · Vehicular Ad Hoc Networks (VANETs)
