Multi-Objective Computation Sharing in Energy and Delay Constrained Mobile Edge Computing Environments
Citations Over TimeTop 1% of 2020 papers
Abstract
In a mobile edge computing (MEC) network, mobile devices, also called edge clients, offload their computations to multiple edge servers that provide additional computing resources. Since the edge servers are placed at the network edge, e.g., cell-phone towers, transmission delays between edge servers and edge clients are shorter compared to those of cloud computing. In addition, edge clients can offload their tasks to other nearby edge clients with available computing resources by exploiting the Fog Computing (FC) paradigm. A major challenge in MEC and FC networks is to assign the tasks from edge clients to edge servers, as well as to other edge clients, in such a way that their tasks are completed with minimum energy consumption and minimum processing delay. In this paper, we model task offloading in MEC as a constrained multi-objective optimization problem (CMOP) that minimizes both the energy consumption and task processing delay of the mobile devices. To solve the CMOP, we design an evolutionary algorithm that can efficiently find a representative sample of the best trade-offs between energy consumption and task processing delay, i.e., the Pareto-optimal front. Compared to existing approaches for task offloading in MEC, we see that our approach finds offloading decisions with lower energy consumption and task processing delay.
Related Papers
- → Multi-User Computation Offloading with D2D for Mobile Edge Computing(2018)44 cited
- → Computation Offloading in Heterogeneous Mobile Edge Computing With Energy Harvesting(2021)35 cited
- → Energy harvesting computation offloading game towards minimizing delay for mobile edge computing(2021)33 cited
- → Computation Offloading Based on Improved Glowworm Swarm Optimization Algorithm in Mobile Edge Computing(2021)8 cited
- → Combined computation interference and offloading control for mobile edge computing in wireless cellular networks(2023)