首页> 外文会议>IEEE Globecom Workshops >Downloadable machine learning for compressed radiolocation applications in radio access networks
【24h】

Downloadable machine learning for compressed radiolocation applications in radio access networks

机译:无线电接入网络中的可下载机器学习用于压缩的Radiolocation应用

获取原文

摘要

Machine learning (ML) is an important tool for enabling automation in radio access networks. Multiple ML-based applications utilize the device radio-fingerprint, for example to improve network functions such as paging and inter-frequency mobility. The measurements on the plurality of beams in NR can enable the network to get an improved radio-fingerprint in comparison to previous technologies (e.g. LTE), but with the cost of increased overhead in device measurements and signaling. In this paper, the device radio-fingerprint is denoted radiolocation. The increasing use of ML-based applications with detailed radiolocation not only increases the device signaling but also increases the input dimensionality and complexity of the ML model. Hence, it is essential to propose method(s) for reducing the dimensionality by compressing the radiolocation and reducing the overall signaling by downloading such compression method(s) to the device. In this paper, one such solution is proposed, and the challenges in downloading a compression model to the device is further highlighted. Moreover, the performances for two ML applications, namely secondary carrier prediction and beam prediction, with and without compressed radiolocation are compared. The results indicate that a compressed version of radiolocation can achieve prediction performance close to the uncompressed one.
机译:机器学习(ML)是在无线电接入网络中实现自动化的重要工具。基于多个基于ML的应用程序利用设备无线电指纹,例如改善诸如寻呼和频率间移动性的网络功能。与先前技术(例如LTE)相比,NR中的多个光束上的测量可以使网络能够获得改进的无线电指纹,但是设备测量和信令中增加开销的成本。在本文中,器件无线电指纹表示放射性定位。利用详细的放射系数越来越多地使用ML的应用不仅增加了器件信令,而且增加了ML模型的输入维度和复杂性。因此,必须通过压缩放射垫立会来降低维度并通过将这种压缩方法下载到设备来降低整体信号来提出方法。在本文中,提出了一种这样的解决方案,并进一步突出了将压缩模型下载到设备的挑战。此外,比较了两个ML应用的性能,即二次载波预测和光束预测,具有和不具有压缩的放射性的放射线局部。结果表明,放射性地区的压缩版本可以实现接近未压缩的预测性能。

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