Abstract:
In mobile edge computing (MEC) networks, by offloading tasks (partially or completely) to the MEC server, it becomes possible to complete computation-intensive and latenc...Show MoreMetadata
Abstract:
In mobile edge computing (MEC) networks, by offloading tasks (partially or completely) to the MEC server, it becomes possible to complete computation-intensive and latency-critical applications without communicating with the cloud center, resulting in dramatic reduction both in latency and energy consumption. Performance improvements depend on the offloading decisions at the user equipments (UEs) and computational resource allocation at the MEC server. In this paper, we aim to optimize the UE offloading data ratios and MEC computational resource allocation under delay constraints with the goal to minimize the global energy consumption. Both conventional optimization method and learning-based approach are studied. Simulation results are provided to compare the performances of different schemes.
Date of Conference: 09-12 January 2021
Date Added to IEEE Xplore: 11 March 2021
ISBN Information:
ISSN Information:
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- IEEE Keywords
- Index Terms
- Deep Reinforcement Learning ,
- Edge Computing ,
- Mobile Edge Computing ,
- Energy Consumption ,
- User Equipment ,
- Primary Energy Consumption ,
- Conventional Optimization ,
- Delay Constraint ,
- Performance Of Different Strategies ,
- Computation Resource Allocation ,
- Mobile Edge Computing Server ,
- Base Station ,
- Transmission Power ,
- Convex Optimization Problem ,
- Computation Tasks ,
- Total Energy Consumption ,
- Local Computing ,
- Cycle Frequency ,
- Spectrum Allocation ,
- Task Offloading ,
- CPU Frequency ,
- Deep Q-learning ,
- Orthogonal Multiple Access ,
- Computation Latency
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Deep Reinforcement Learning ,
- Edge Computing ,
- Mobile Edge Computing ,
- Energy Consumption ,
- User Equipment ,
- Primary Energy Consumption ,
- Conventional Optimization ,
- Delay Constraint ,
- Performance Of Different Strategies ,
- Computation Resource Allocation ,
- Mobile Edge Computing Server ,
- Base Station ,
- Transmission Power ,
- Convex Optimization Problem ,
- Computation Tasks ,
- Total Energy Consumption ,
- Local Computing ,
- Cycle Frequency ,
- Spectrum Allocation ,
- Task Offloading ,
- CPU Frequency ,
- Deep Q-learning ,
- Orthogonal Multiple Access ,
- Computation Latency
- Author Keywords