首页> 外文期刊>Computer Communications >A cost-effective trilateration-based radio localization algorithm using machine learning and sequential least-square programming optimization
【24h】

A cost-effective trilateration-based radio localization algorithm using machine learning and sequential least-square programming optimization

机译:一种使用机器学习和顺序最小二乘规划优化的基于经济高效的三边的无线定位算法

获取原文
获取原文并翻译 | 示例
           

摘要

Wireless communication systems play an essential role in everyday life situations and enable a wide range of location-based services to their users. The imminent adoption of 5G networks worldwide and the future establishment of next-generation wireless networks will allow various applications, such as autonomous vehicles, connected robotics, and most recently, crowd monitoring for fighting infectious diseases, such as COVID-19. In this context, radio localization techniques have become an essential tool to provide solid performance for mobile positioning systems, through increased accuracy or less computational time. With this in mind, we propose a trilateration-based approach using machine learning (ML) and sequential least-square programming (SLSQP) optimization to estimate the outdoor position of mobile terminals in cellular networks. The ML technique employed is the k-nearest neighbors (k-NN). The optimization methods analyzed are Nelder- Mead (NM), genetic algorithms (GA), and SLSQP. Different environments (noise-free and noisy) and network scenarios (different numbers of base stations) are considered to evaluate the approaches. Numerical results indicate that the k-NN/SLSQP technique has similar accuracy compared to the k-NN/GA with eight generations. Both perform better than k-NN/NM in all scenarios and environments. When comparing computational times, our proposal is considerably more time-efficient. Aside from that, SLSQP computational time is less affected by network scenarios with more base stations in comparison with GA. That feature is significant considering the ultra-dense base station deployment forecasted for the next-generation cellular networks.
机译:无线通信系统在日常生活情况下发挥重要作用,并为用户提供广泛的基于位置的服务。迫在眉睫的全球5G网络和未来的下一代无线网络的建立将允许各种应用,例如自主车辆,连接的机器人,最近,用于对抗传染病的人群监测,例如Covid-19。在这种情况下,无线电定位技术已成为为移动定位系统提供固体性能的基本工具,通过提高精度或更少的计算时间。考虑到这一点,我们提出了一种使用机器学习(ML)和序贯最小二乘规划(SLSQP)优化的三边基础方法,以估计蜂窝网络中的移动终端的室外位置。所用的ML技术是K-最近邻居(K-NN)。分析的优化方法是Nelder-Mead(NM),遗传算法(GA)和SLSQP。不同的环境(无噪声和嘈杂)和网络方案(不同数量的基站)被认为是评估方法。数值结果表明,与八代K-NN / GA相比,K-NN / SLSQP技术具有相似的精度。在所有场景和环境中,两者都比K-NN / NM更好。在比较计算时间时,我们的建议比较衡量。除此之外,与GA相比,通过网络场景的网络场景影响了SLSQP计算时间。考虑到下一代蜂窝网络预测的超密集基站部署是显着的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
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