In todays day and age, a mobile phone has become a basic requirement needed for anyone to thrive. With the cellular traffic demand increasing so dramatically, it is now necessary to accurately predict the user traffic in cellular networks, so as to improve the performance in terms of resource allocation and utilisation. By leveraging the power of machine learning and identifying its usefulness in the field of cellular networks we try to achieve three main objectives classification of the application generating the traffic, prediction of packet arrival intensity and burst occurrence. The design of the prediction and classification system is done using Long Short Term Memory model. The LSTM predictor developed in this experiment would return the number of uplink packets and also estimate the probability of burst occurrence in the specified future time interval. For the purpose of classification, the regression layer in our LSTM prediction model is replaced by a softmax classifier which is used to classify the application generating the cellular traffic into one of the four applications including surfing, video calling, voice calling, and video streaming.
翻译:在当今时代,移动电话已成为每个人繁荣发展的基本要求。随着手机流量需求的急剧增长,现在有必要准确预测移动电话网络用户流量,以便改善资源分配和利用方面的性能。通过利用机器学习的力量,并查明其在蜂窝网络领域的有用性,我们试图实现产生流量应用的三大目标分类,预测包到达强度和爆发发生。预测和分类系统的设计使用长期短期内存模型完成。这次实验开发的LSTM预测器将返回上链包的数量,并估计未来特定时间间隔内发生突发事件的可能性。为了分类的目的,我们的LSTM预测模型的回归层被一个软式轴分类器所取代,该分类器用来将生成细胞流量的应用分为四个应用程序之一,包括冲浪、视频呼叫、语音和视频流流。