Accurate network traffic prediction of base station cell is very vital for the expansion and reduction of wireless devices in base station cell. The burst and uncertainty of base station cell network traffic makes the network traffic nonlinear and non-stationary, which brings challenges to the long-term prediction of network traffic. In this paper, the traffic model LMA-DeepAR for base station network is established based on DeepAR. Acordding to the distribution characteristics of network traffic, this paper proposes an artificial feature sequence calculation method based on local moving average (LMA). The feature sequence is input into DeepAR as covariant, which makes the statistical characteristics of network traffic near a period of time in the past be considered when updating parameters, and the interference of non-stationary network traffic on model training will be reduced. Experimental results show that the proposed prediction approach (LMA-DeepAR) outperforms other methods in the overall long-term prediction performance and stability of multi cell network traffic.
翻译:基站电池准确的网络流量预测对于基站电池无线装置的扩大和减少至关重要,基站电池网络流量的破灭和不确定性使得网络通信量的非线性和非静止性对网络流量的长期预测提出了挑战。在本文中,基站网络的LMA-DeepAR通信量模型是根据DeepAR建立的。根据网络流量的分布特点,本文件建议了一种基于本地移动平均数的人工特征序列计算方法。特征序列是输入深海雷达作为共变量,使网络流量的统计特征在过去更新参数时可以考虑,非静止网络流量对模型培训的干扰将减少。实验结果表明,拟议的预测方法(LMA-DeepAR)在总体长期预测性能和多细胞网络流量稳定性方面优于其他方法。