The paper investigates the problem of spectral-efficient communication and computation resource allocation for distributed RISs assisted PSC in IIoT. In the considered model, multiple RISs are deployed to serve multiple users, while PSC adopts the compute-then-transmit protocol to reduce the transmission data size.
To support high-rate transmission, the semantic compression ratio, transmit power allocation, and distributed RISs deployment must be jointly considered. The authors formulate this joint communication and computation problem as an optimization problem to maximize the sum semantic-aware transmission rate under total transmit power, phase shift, RIS-user association, and semantic compression ratio constraints.
To solve this problem, the authors propose a many-to-many matching scheme to solve the RIS-user association subproblem. The semantic compression ratio subproblem is addressed following a greedy policy, while the phase shift of the RIS can be optimized using tensor-based beamforming. Numerical results verify the superiority of the proposed algorithm compared to conventional schemes.
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