MOFCO: Mobility- and Migration-Aware Task Offloading in Three-Layer Fog Computing Environments
By: Soheil Mahdizadeh, Elyas Oustad, Mohsen Ansari
Potential Business Impact:
Saves phone battery and speeds up apps.
Task offloading in three-layer fog computing environments presents a critical challenge due to user equipment (UE) mobility, which frequently triggers costly service migrations and degrades overall system performance. This paper addresses this problem by proposing MOFCO, a novel Mobility- and Migration-aware Task Offloading algorithm for Fog Computing environments. The proposed method formulates task offloading and resource allocation as a Mixed-Integer Nonlinear Programming (MINLP) problem and employs a heuristic-aided evolutionary game theory approach to solve it efficiently. To evaluate MOFCO, we simulate mobile users using SUMO, providing realistic mobility patterns. Experimental results show that MOFCO reduces system cost, defined as a combination of latency and energy consumption, by an average of 19% and up to 43% in certain scenarios compared to state-of-the-art methods.
Similar Papers
Joint Computing Resource Allocation and Task Offloading in Vehicular Fog Computing Systems Under Asymmetric Information
Networking and Internet Architecture
Cars share power to finish tasks faster.
CoMoE: Collaborative Optimization of Expert Aggregation and Offloading for MoE-based LLMs at Edge
Networking and Internet Architecture
Makes big AI models fit on phones.
Task Offloading and Resource Allocation for MEC-assisted Consumer Internet of Vehicle Systems
Networking and Internet Architecture
Cars get faster internet by using nearby computers.