首页> 外文期刊>International Journal of Electrical and Computer Engineering >Dynamic resource allocation for opportunistic software-defined IoT networks: stochastic optimization framework
【24h】

Dynamic resource allocation for opportunistic software-defined IoT networks: stochastic optimization framework

机译:机会主义软件定义的IOT网络动态资源分配:随机优化框架

获取原文
           

摘要

Several wireless technologies have recently emerged to enable efficient and scalable internet-of-things (IoT) networking. Cognitive radio (CR) technology, enabled by software-defined radios, is considered one of the main IoT-enabling technologies that can provide opportunistic wireless access to a large number of connected IoT devices. An important challenge in this domain is how to dynamically enable IoT transmissions while achieving efficient spectrum usage with a minimum total power consumption under interference and traffic demand uncertainty. Toward this end, we propose a dynamic bandwidth/channel/power allocation algorithm that aims at maximizing the overall network’s throughput while selecting the set of power resulting in the minimum total transmission power. This problem can be formulated as a two-stage binary linear stochastic programming. Because the interference over different channels is a continuous random variable and noting that the interference statistics are highly correlated, a suboptimal sampling solution is proposed. Our proposed algorithm is an adaptive algorithm that is to be periodically conducted over time to consider the changes of the channel and interference conditions. Numerical results indicate that our proposed algorithm significantly increases the number of simultaneous IoT transmissions compared to a typical algorithm, and hence, the achieved throughput is improved.
机译:最近出现了几种无线技术,以实现有效和可扩展的内容(IoT)网络。通过软件定义的无线电支持的认知无线电(CR)技术被认为是可以提供机会化无线访问的主要IOT启用技术之一,这是大量连接的物联网设备。该域中的一个重要挑战是如何动态启用IoT传输,同时实现有效的频谱使用,在干扰和业务需求不确定性下具有最小总功耗。朝此目的,我们提出了一种动态带宽/信道/功率分配算法,其目的在于在选择一组电源时最大化整体网络的吞吐量,从而导致最小总传输功率。该问题可以制定为双级二进制线性随机编程。因为不同信道的干扰是连续随机变量,并且注意到干扰统计是高度相关的,提出了一种次优采样解决方案。我们所提出的算法是一种自适应算法,即在时间上定期进行以考虑信道和干扰条件的变化。数值结果表明,与典型算法相比,我们所提出的算法显着提高了同时IOT传输的数量,因此实现了实现的吞吐量。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号