Towards Intelligent Edge Sensing for ISCC Network: Joint Multi-Tier DNN Partitioning and Beamforming Design
The combination of Integrated Sensing and Communication (ISAC) and Mobile Edge Computing (MEC) enables devices to simultaneously sense the environment and offload data to the base stations (BS) for intelligent processing, thereby reducing local computational burdens. However, transmitting raw sensin...
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Main Authors | , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
30.04.2025
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Online Access | Get full text |
DOI | 10.48550/arxiv.2504.21409 |
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Summary: | The combination of Integrated Sensing and Communication (ISAC) and Mobile
Edge Computing (MEC) enables devices to simultaneously sense the environment
and offload data to the base stations (BS) for intelligent processing, thereby
reducing local computational burdens. However, transmitting raw sensing data
from ISAC devices to the BS often incurs substantial fronthaul overhead and
latency. This paper investigates a three-tier collaborative inference framework
enabled by Integrated Sensing, Communication, and Computing (ISCC), where cloud
servers, MEC servers, and ISAC devices cooperatively execute different segments
of a pre-trained deep neural network (DNN) for intelligent sensing. By
offloading intermediate DNN features, the proposed framework can significantly
reduce fronthaul transmission load. Furthermore, multiple-input multiple-output
(MIMO) technology is employed to enhance both sensing quality and offloading
efficiency. To minimize the overall sensing task inference latency across all
ISAC devices, we jointly optimize the DNN partitioning strategy, ISAC
beamforming, and computational resource allocation at the MEC servers and
devices, subject to sensing beampattern constraints. We also propose an
efficient two-layer optimization algorithm. In the inner layer, we derive
closed-form solutions for computational resource allocation using the
Karush-Kuhn-Tucker conditions. Moreover, we design the ISAC beamforming vectors
via an iterative method based on the majorization-minimization and weighted
minimum mean square error techniques. In the outer layer, we develop a
cross-entropy based probabilistic learning algorithm to determine an optimal
DNN partitioning strategy. Simulation results demonstrate that the proposed
framework substantially outperforms existing two-tier schemes in inference
latency. |
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DOI: | 10.48550/arxiv.2504.21409 |