Multi-Agent Deep Reinforcement Learning for Safe Autonomous Driving with RICS-Assisted MEC
Environment sensing and fusion via onboard sensors are envisioned to be widely applied in future autonomous driving networks. This paper considers a vehicular system with multiple self-driving vehicles that is assisted by multi-access edge computing (MEC), where image data collected by the sensors i...
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          | Main Authors | , , , , , , , | 
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| Format | Journal Article | 
| Language | English | 
| Published | 
          
        25.03.2025
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| Subjects | |
| Online Access | Get full text | 
| DOI | 10.48550/arxiv.2503.19418 | 
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| Summary: | Environment sensing and fusion via onboard sensors are envisioned to be
widely applied in future autonomous driving networks. This paper considers a
vehicular system with multiple self-driving vehicles that is assisted by
multi-access edge computing (MEC), where image data collected by the sensors is
offloaded from cellular vehicles to the MEC server using
vehicle-to-infrastructure (V2I) links. Sensory data can also be shared among
surrounding vehicles via vehicle-to-vehicle (V2V) communication links. To
improve spectrum utilization, the V2V links may reuse the same frequency
spectrum with V2I links, which may cause severe interference. To tackle this
issue, we leverage reconfigurable intelligent computational surfaces (RICSs) to
jointly enable V2I reflective links and mitigate interference appearing at the
V2V links. Considering the limitations of traditional algorithms in addressing
this problem, such as the assumption for quasi-static channel state
information, which restricts their ability to adapt to dynamic environmental
changes and leads to poor performance under frequently varying channel
conditions, in this paper, we formulate the problem at hand as a Markov game.
Our novel formulation is applied to time-varying channels subject to multi-user
interference and introduces a collaborative learning mechanism among users. The
considered optimization problem is solved via a driving safety-enabled
multi-agent deep reinforcement learning (DS-MADRL) approach that capitalizes on
the RICS presence. Our extensive numerical investigations showcase that the
proposed reinforcement learning approach achieves faster convergence and
significant enhancements in both data rate and driving safety, as compared to
various state-of-the-art benchmarks. | 
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| DOI: | 10.48550/arxiv.2503.19418 |