投标
计算机科学
资源配置
蜂窝网络
资源(消歧)
网络数据包
计算机网络
基站
运筹学
业务
营销
工程类
作者
Panduranga Ravi Teja,Pavan Kumar Mishra,Dharmendra Lal Gupta
出处
期刊:Transactions on Emerging Telecommunications Technologies
日期:2024-03-01
卷期号:35 (3)
摘要
Abstract In 5G networks, most D2D work focuses on optimizing system throughput without addressing economic constraints. This article encourages users to exchange resources and apply honest bidding tactics to attain high auction efficiency. This study describes an experience‐weighted attraction double auction (EWA‐DA) technique for allocating resources in 5G D2D networks. The suggested method classifies mobile users into seller cellular users (SCU) and buyer cellular users' (BCU). The SCU transmits the beacon packet, and the nearby cellular users create a D2D group in response to the beacon considered BCU. Then, the bid values of the buyer and seller cellular users are transmitted to the base station side. The BS uses an experience‐weighted attraction‐learning model to obtain accurate bidding prices. Lastly, an ask‐to‐mean‐value double auction model was utilized instead of accurate bid values. Extensive simulation results demonstrate that the suggested strategy delivers excellent auction efficiency and fair earnings for both seller and buyer users. In addition, we identified that the participating users accomplished truthful bidding and used fewer resource blocks than existing techniques.
科研通智能强力驱动
Strongly Powered by AbleSci AI