Communication, Computing, and Caching Trade-Off in VR Networks
Abstract
:1. Introduction
1.1. Related Works
1.2. Contributions and Outcomes
2. System Model
2.1. Network Framework
2.2. Computing–Offloading and Cooperative Caching Strategy
2.3. Service Mechanism
- (1)
- 3D Caching Locally (3CL)
- (2)
- 2D Caching—Computing Locally (2CCL)
- (3)
- 2D Computing Locally (2CL)
- (4)
- 3D Caching MEC (3CM)
- (5)
- 2D Caching-Computing MEC (2CCM)
- (6)
- 2D Computing MEC (2CM)
- (7)
- CS Downloading (CD)
3. Problem Construction and Solution
3.1. Problem Definition
3.2. DDPG-Based Optimization Method
- State: denotes the state () at time , which is the value of the decision matrix set;
- Action: We define , where ;
- State transition probability: denotes the likelihood that the current state and its behavior will continue in the future;
- Reward: The agent receives an immediate reward at the end moment of each ;
- Discount factor: We define as the discount factor. Therefore, the long-term reward of the system can be expressed as .
4. Performance Evaluation
4.1. Simulation Setup
- (1)
- CS downloading scheme: After the 3D FOV file is obtained, there are ;
- (2)
- Only caching scheme: The VR device and APs cache the 3D FOV files of all videos based on the ‘most popular content (MPC)’ rule. VR device and AP denote the numbers of 3D FOV files stored in VR devices and MEC servers: and . The corresponding numbers of full VR videos stored in the VR devices and MEC servers are denoted as and , respectively;
- (3)
- Independent caching and computing scheme: After the 3D FOV file is stored, the video file needs to satisfy the ‘MPC’ rule. When the device obtains the FOV file from the server, the storage and projection of the 2D FOV file depend on the performance of the MEC server. The number of 2D FOV files is expressed as , and the corresponding number of full VR videos stored on MEC servers is denoted as .
4.2. Simulation Results and Analysis
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Feng, Y.; Wang, D.; Hou, Y. Communication, Computing, and Caching Trade-Off in VR Networks. Electronics 2023, 12, 1577. https://doi.org/10.3390/electronics12071577
Feng Y, Wang D, Hou Y. Communication, Computing, and Caching Trade-Off in VR Networks. Electronics. 2023; 12(7):1577. https://doi.org/10.3390/electronics12071577
Chicago/Turabian StyleFeng, Yuqing, Dongyu Wang, and Yanzhao Hou. 2023. "Communication, Computing, and Caching Trade-Off in VR Networks" Electronics 12, no. 7: 1577. https://doi.org/10.3390/electronics12071577
APA StyleFeng, Y., Wang, D., & Hou, Y. (2023). Communication, Computing, and Caching Trade-Off in VR Networks. Electronics, 12(7), 1577. https://doi.org/10.3390/electronics12071577