Abstract:
Wireless powered edge computing system (WPECS) enhances the computing power and extends the lifetime of wireless devices (WDs). This paper studies the WPECS with multiple...Show MoreMetadata
Abstract:
Wireless powered edge computing system (WPECS) enhances the computing power and extends the lifetime of wireless devices (WDs). This paper studies the WPECS with multiple WDs, in which the access point (AP) provides some transmission channels which differ from each other in the channel gain, and the WD powered through the wireless power transfer (WPT) technology has some indivisible tasks and adopts binary task-offloading actions. More energy harvested strengthens the WDs with more computing power, while corresponding to more energy consumption. Therefore, how to make the optimal tradeoff between computation rate and energy harvested arises as an interesting issue. To address this issue, this paper first formulates the switch process of transmission channel as a constrained Markov decision process (CMDP), and then proposed an effective algorithm to maximize the sum of computation rates of all WDs in terms of task data bits computed, within the required level of accumulative energy harvested. Theoretical analysis, simulations and field experiments jointly document and illustrate its performance. Note to Practitioners—This paper addresses the interesting tradeoff between computation rate and energy harvested in a wireless powered edge computing system that operates in the environments with limited available energy. It helps to improve the operation efficiency of the edge computing systems in the area of Internet of Things (IoT) or Cyber-Physical Systems (CPS) that employ wireless power transfer technology to power the wireless devices through the access point over the air to maximize the sum of computations rates of all WDs in terms of task data bits computed, while keeping the accumulative energy harvested within a range. Simulations and experimental investigations show that the solution proposed here outperforms existing solutions.
Published in: IEEE Transactions on Automation Science and Engineering ( Volume: 20, Issue: 2, April 2023)
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- IEEE Keywords
- Index Terms
- Edge Computing ,
- Wireless Power ,
- Computation Energy ,
- Edge Computing System ,
- Field Experiments ,
- Power Calculation ,
- Energy Levels ,
- Internet Of Things ,
- Energy Availability ,
- Access Points ,
- Technology Transfer ,
- Wireless Power Transfer ,
- Markov Decision Process ,
- Transmission Channel ,
- Channel Gain ,
- Sum Rate ,
- Wireless Devices ,
- Cyber-physical Systems ,
- Wireless Power Transfer Technology ,
- Deep Learning ,
- Local Computing ,
- Task Offloading ,
- Unmanned Aerial Vehicles ,
- Round Of Simulations ,
- Mobile Edge Computing ,
- Dimensional Column Vector ,
- Unmanned Aerial Vehicle Technology ,
- Computation Tasks ,
- Optimal Channel ,
- Results Of Field Experiments
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Edge Computing ,
- Wireless Power ,
- Computation Energy ,
- Edge Computing System ,
- Field Experiments ,
- Power Calculation ,
- Energy Levels ,
- Internet Of Things ,
- Energy Availability ,
- Access Points ,
- Technology Transfer ,
- Wireless Power Transfer ,
- Markov Decision Process ,
- Transmission Channel ,
- Channel Gain ,
- Sum Rate ,
- Wireless Devices ,
- Cyber-physical Systems ,
- Wireless Power Transfer Technology ,
- Deep Learning ,
- Local Computing ,
- Task Offloading ,
- Unmanned Aerial Vehicles ,
- Round Of Simulations ,
- Mobile Edge Computing ,
- Dimensional Column Vector ,
- Unmanned Aerial Vehicle Technology ,
- Computation Tasks ,
- Optimal Channel ,
- Results Of Field Experiments
- Author Keywords