Domain Compliant Recommendation of Remote Electrical Tilt Using ML Approach

Subhadip Bandyopadhyay, Pushpendra Sharma A, Ankur Goyal, Anupama Muralidharan
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Abstract

Due to highly complex and unpredictable nature of telecom network dynamics, optimal adjustment (daily/weekly or as per need) of antenna tilt regularly at large scale (for thousands of cells) is necessary to maintain acceptable quality of service(QoS). Optimal tilt prediction using standard data and algorithm driven approaches like simulation or modelling ( based on ML/DL/Statistical modelling etc.) fundamentally lack to address the critical aspect of legitimate tilt prediction, namely, antenna tilt and coverage are inversely related as governed by physical laws in telecommunication science. This fundamental lack produces inconsistent tilt prediction resulting poor cell coverage which accumulates over multiple cells in the network and reduces network level efficiency. In this paper we propose a synthetic sampling scheme which can enforce any model to learn this domain principal of tilt-range relation through generated smart training sample. This enables legitimate tilt prediction at large scale which can improved cell and also network level performance. The proposed approach has been tested in field with observed improvement in cell and network level performance.
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利用 ML 方法提供符合领域要求的远程电气倾斜建议
由于电信网络动态具有高度复杂性和不可预测性,为了保持可接受的服务质量(QoS),有必要定期大规模(针对数千个小区)调整天线倾斜度(每天/每周或根据需要)。使用标准数据和算法驱动方法(如仿真或建模(基于 ML/DL/统计建模等))进行最佳倾斜度预测,从根本上无法解决合法倾斜度预测的关键问题,即天线倾斜度和覆盖范围成反比,受电信科学中物理定律的制约。这一根本性缺陷导致倾斜预测不一致,从而造成小区覆盖率低,并在网络中多个小区累积,降低了网络效率。在本文中,我们提出了一种合成采样方案,通过生成智能训练样本,强制任何模型学习倾斜-范围关系的这一领域原理。这样就能在大规模范围内进行合理的倾斜预测,从而提高小区和网络的性能。所提出的方法已在现场进行了测试,并观察到了小区和网络性能的改善。
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