Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Smart Energy Borrowing and Relaying in Wireless Powered Networks: A Deep Reinforcement Learning Approach

View through CrossRef
Wireless energy harvesting (EH) communication has long been considered a sustainable networking solution. However, it has been limited in efficiency, which has been a major obstacle. Recently, strategies such as energy relaying and borrowing have been explored to overcome these difficulties and provide long-range wireless sensor connectivity. In this article, we examine the reliability of the wireless-powered communication network by maximizing the net bit rate. To accomplish our goal, we focus on enhancing the performance of hybrid access points and information sources by optimizing their transmit power. Additionally, we aim to maximize the use of harvested energy by energy-harvesting relays for both information transmission and energy relaying. However, this optimization problem is complex as it involves non-convex variables and requires combinatorial relay selection indicators optimization for decode and forward (DF) relaying. To simplify this problem, we utilize the Markov decision process and deep reinforcement learning framework based on the deep deterministic policy gradient algorithm. This approach enables us to tackle this non-tractable problem, which conventional convex optimisation techniques would be difficult to solve in complex problem environments. The proposed algorithm significantly improves the end-to-end net bit rate of the smart energy borrowing and relaying EH system by 13.22%,27.57%, and 14.12% compared to the benchmark algorithm based on borrowing energy with an adaptive reward for Quadrature Phase Shift Keying, 8-PSK, and 16-Quadrature amplitude modulation schemes, respectively.
Title: Smart Energy Borrowing and Relaying in Wireless Powered Networks: A Deep Reinforcement Learning Approach
Description:
Wireless energy harvesting (EH) communication has long been considered a sustainable networking solution.
However, it has been limited in efficiency, which has been a major obstacle.
Recently, strategies such as energy relaying and borrowing have been explored to overcome these difficulties and provide long-range wireless sensor connectivity.
In this article, we examine the reliability of the wireless-powered communication network by maximizing the net bit rate.
To accomplish our goal, we focus on enhancing the performance of hybrid access points and information sources by optimizing their transmit power.
Additionally, we aim to maximize the use of harvested energy by energy-harvesting relays for both information transmission and energy relaying.
However, this optimization problem is complex as it involves non-convex variables and requires combinatorial relay selection indicators optimization for decode and forward (DF) relaying.
To simplify this problem, we utilize the Markov decision process and deep reinforcement learning framework based on the deep deterministic policy gradient algorithm.
This approach enables us to tackle this non-tractable problem, which conventional convex optimisation techniques would be difficult to solve in complex problem environments.
The proposed algorithm significantly improves the end-to-end net bit rate of the smart energy borrowing and relaying EH system by 13.
22%,27.
57%, and 14.
12% compared to the benchmark algorithm based on borrowing energy with an adaptive reward for Quadrature Phase Shift Keying, 8-PSK, and 16-Quadrature amplitude modulation schemes, respectively.

Related Results

ACM SIGCOMM computer communication review
ACM SIGCOMM computer communication review
At some point in the future, how far out we do not exactly know, wireless access to the Internet will outstrip all other forms of access bringing the freedom of mobility to the way...
Cooperative Subcarrier and Power Allocation in OFDM Based Relaying Systems
Cooperative Subcarrier and Power Allocation in OFDM Based Relaying Systems
The increasing use of relays in wireless communication systems is a driving force to explore innovative techniques that can improve the quality of service as well as enhance the co...
Cooperative Subcarrier and Power Allocation in OFDM Based Relaying Systems
Cooperative Subcarrier and Power Allocation in OFDM Based Relaying Systems
The increasing use of relays in wireless communication systems is a driving force to explore innovative techniques that can improve the quality of service as well as enhance the co...
A Survey Non-Terrestrial Networks in 6G/ 7G Smart Network for 2035+ and Beyond
A Survey Non-Terrestrial Networks in 6G/ 7G Smart Network for 2035+ and Beyond
3GPP TR 38.821, “Solutions for NR to support non-terrestrial networks (NTN),” Release 16, Jan. 2020. [Online]. Available: https://www.3gpp.org/. P. K. Chowdhury, M. Atiquzzaman, W....
Design of multi-energy-space-based energy-efficient algorithm in novel software-defined wireless sensor networks
Design of multi-energy-space-based energy-efficient algorithm in novel software-defined wireless sensor networks
Energy efficiency has always been a hot issue in wireless sensor networks. A lot of energy-efficient algorithms have been proposed to reduce energy consumption in traditional wirel...
STRENGTH OF BUTT WELDED BUTT JOINT OF REINFORCEMENT OF CLASS A500C
STRENGTH OF BUTT WELDED BUTT JOINT OF REINFORCEMENT OF CLASS A500C
The paper presents the results of experimental studies of the strength of cross-shaped welded joints of types К1-Кт and К3-Рр [1] of thermomechanically hardened reinforcement of cl...
Entrepreneurial borrowing overdue prediction based on stacking model transfer learning
Entrepreneurial borrowing overdue prediction based on stacking model transfer learning
PurposeBy introducing Stacking algorithm to solve the underfitting problem caused by insufficient data in traditional machine learning, this paper provides a new solution to the co...
Introducing Optimal Energy Hub Approach in Smart Green Ports based on Machine Learning Methodology
Introducing Optimal Energy Hub Approach in Smart Green Ports based on Machine Learning Methodology
Abstract The integration of renewable energy systems in port facilities is essential for achieving sustainable and environmentally friendly operations. This paper presents ...

Back to Top