An Artificial Intelligence Approach for Time Series Next Generation Applications

Aicha Dridi, Hatem Ibn-Khedher, Hassine Moungla, H. Afifi
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引用次数: 4

Abstract

With the emergence of the Internet of Things (IoT) applications, a huge amount of information is generated to help the optimization of operational cellular networks, smart transportation, and energy management systems. Applying Artificial Intelligence approaches to exploit this data seems to be promising. In this paper, we propose a dual deep neural network architecture. It is used to classify time series and to predict future data. It is essentially based on Long Short Term Memory (LSTM) algorithms for accurate time series prediction and on deep neural network, classifiers to classify input streams. It is shown to work on different domains (cellular, energy management, and transportation systems). Cloud architecture is used for IoT data collection and our algorithm is applied on real-time energy data for accurate energy classification and prediction.
下一代时间序列应用的人工智能方法
随着物联网(IoT)应用的出现,产生了大量的信息,以帮助优化运营蜂窝网络、智能交通和能源管理系统。应用人工智能方法来开发这些数据似乎是有希望的。本文提出了一种对偶深度神经网络结构。它用于对时间序列进行分类和预测未来的数据。它本质上是基于长短期记忆(LSTM)算法进行准确的时间序列预测,并基于深度神经网络分类器对输入流进行分类。它被证明可以在不同的领域(细胞、能量管理和运输系统)工作。物联网数据采集采用云架构,将我们的算法应用于实时能源数据,实现准确的能源分类和预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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