TY - JOUR
T1 - Holographic Counterpart Computation Offloading via Reconfigurable Intelligent Surfaces in VEC Consumer Electronics
AU - Chen, Miaojiang
AU - Xie, Huali
AU - Wang, Xiaotian
AU - Xiao, Wenjing
AU - Farouk, Ahmed
AU - Liu, Zhiquan
AU - Chen, Min
AU - Song, Houbing Herbert
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025/5
Y1 - 2025/5
N2 - In vehicular edge computing (VEC) Consumer Electronics networks, the integration of holographic counterpart technology presents significant challenges due to its stringent requirements for high data transmission rates and communication reliability. Traditional task offloading methods, constrained by suboptimal communication link quality and energy limitations, are inadequate to meet these demands. This paper introduces a groundbreaking system that synergistically combines wireless power transfer (WPT) and reconfigurable intelligent surfaces (RIS) to significantly enhance both communication performance and computational efficiency. Leveraging deep reinforcement learning (DRL), our system achieves joint optimization of task offloading strategies and resource allocation. Departing from conventional dynamic RIS designs, we implement a fixed phase shift matrix approach, which not only simplifies system implementation but also reduces computational complexity, thereby enhancing both task offloading efficiency and system stability. Extensive simulation results demonstrate that our optimized RIS-assisted approach achieves a remarkable 38.30% improvement in computational rates compared to non-RIS schemes and a 4.83% enhancement over random-phase RIS configurations. These substantial improvements highlight the transformative potential of RIS in boosting computation rates and providing robust solutions for high-demand task offloading scenarios. Our innovative system design represents a significant advancement in intelligent vehicular networks and edge computing technologies, offering substantial application potential for holographic projection task offloading in next-generation vehicular systems.
AB - In vehicular edge computing (VEC) Consumer Electronics networks, the integration of holographic counterpart technology presents significant challenges due to its stringent requirements for high data transmission rates and communication reliability. Traditional task offloading methods, constrained by suboptimal communication link quality and energy limitations, are inadequate to meet these demands. This paper introduces a groundbreaking system that synergistically combines wireless power transfer (WPT) and reconfigurable intelligent surfaces (RIS) to significantly enhance both communication performance and computational efficiency. Leveraging deep reinforcement learning (DRL), our system achieves joint optimization of task offloading strategies and resource allocation. Departing from conventional dynamic RIS designs, we implement a fixed phase shift matrix approach, which not only simplifies system implementation but also reduces computational complexity, thereby enhancing both task offloading efficiency and system stability. Extensive simulation results demonstrate that our optimized RIS-assisted approach achieves a remarkable 38.30% improvement in computational rates compared to non-RIS schemes and a 4.83% enhancement over random-phase RIS configurations. These substantial improvements highlight the transformative potential of RIS in boosting computation rates and providing robust solutions for high-demand task offloading scenarios. Our innovative system design represents a significant advancement in intelligent vehicular networks and edge computing technologies, offering substantial application potential for holographic projection task offloading in next-generation vehicular systems.
KW - Holographic counterpart
KW - Resource allocation
KW - Vehicular edge computing (VEC)
KW - reconfig-urable intelligent surface (RIS)
KW - wireless powered transfer (WPT)
UR - https://www.scopus.com/pages/publications/105007417249
U2 - 10.1109/TCE.2025.3576141
DO - 10.1109/TCE.2025.3576141
M3 - Article
AN - SCOPUS:105007417249
SN - 0098-3063
VL - 71
SP - 5275
EP - 5286
JO - IEEE Transactions on Consumer Electronics
JF - IEEE Transactions on Consumer Electronics
IS - 2
ER -