Abstract:
Caching has been regarded as a promising technique to alleviate energy consumption of sensors in Internet of Things (IoT) networks by responding to users' requests with t...Show MoreMetadata
Abstract:
Caching has been regarded as a promising technique to alleviate energy consumption of sensors in Internet of Things (IoT) networks by responding to users' requests with the data packets stored in the edge caching node (ECN). For real-time applications in caching enabled IoT networks, it is essential to develop dynamic status update strategies to strike a balance between the information freshness experienced by users and energy consumed by the sensor, which, however, is not well addressed. In this paper, we first depict the evolution of information freshness, in terms of age of information (AoI), at each user. Then, we formulate a dynamic status update optimization problem to minimize the expectation of a long-term accumulative cost, which jointly considers the users' AoI and sensor's energy consumption. To solve this problem, a Markov Decision Process (MDP) is formulated to cast the status updating procedure, and a model-free reinforcement learning algorithm is proposed, with which the challenge brought by the unknown of the formulated MDP's dynamics can be addressed. Finally, simulations are conducted to validate the convergence of our proposed algorithm and its effectiveness compared with the zero-wait baseline policy.
Published in: IEEE INFOCOM 2020 - IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS)
Date of Conference: 06-09 July 2020
Date Added to IEEE Xplore: 10 August 2020
ISBN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Energy Consumption ,
- Internet Of Things ,
- Status Updates ,
- Internet Of Things Networks ,
- Age Of Information ,
- Markov Decision Process ,
- Dynamic Problem ,
- Data Packets ,
- Reinforcement Learning Algorithm ,
- Dynamic Optimization ,
- Model-free Reinforcement Learning ,
- Dynamic Update ,
- Dynamic Optimization Problems ,
- Edge Caching ,
- Information Freshness ,
- Simulation Results ,
- State Space ,
- Data Transmission ,
- Transition Probabilities ,
- Wireless Networks ,
- Time Slot ,
- Greedy Policy ,
- Bellman Equation ,
- Data Cache ,
- Reward Function ,
- Action-value Function ,
- Multimedia Content ,
- Updated Data ,
- User Requests ,
- Power Sensor
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Energy Consumption ,
- Internet Of Things ,
- Status Updates ,
- Internet Of Things Networks ,
- Age Of Information ,
- Markov Decision Process ,
- Dynamic Problem ,
- Data Packets ,
- Reinforcement Learning Algorithm ,
- Dynamic Optimization ,
- Model-free Reinforcement Learning ,
- Dynamic Update ,
- Dynamic Optimization Problems ,
- Edge Caching ,
- Information Freshness ,
- Simulation Results ,
- State Space ,
- Data Transmission ,
- Transition Probabilities ,
- Wireless Networks ,
- Time Slot ,
- Greedy Policy ,
- Bellman Equation ,
- Data Cache ,
- Reward Function ,
- Action-value Function ,
- Multimedia Content ,
- Updated Data ,
- User Requests ,
- Power Sensor
- Author Keywords