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利用空气污染和大气数据改进道路交通预测:基于 LSTM 循环神经网络的实验。

Improving Road Traffic Forecasting Using Air Pollution and Atmospheric Data: Experiments Based on LSTM Recurrent Neural Networks.

机构信息

Telecom SudParis, Institut Polytechnique de Paris, CNRS UMR5157, 91000 Evry, France.

出版信息

Sensors (Basel). 2020 Jul 4;20(13):3749. doi: 10.3390/s20133749.

DOI:10.3390/s20133749
PMID:32635487
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7374312/
Abstract

Traffic flow forecasting is one of the most important use cases related to smart cities. In addition to assisting traffic management authorities, traffic forecasting can help drivers to choose the best path to their destinations. Accurate traffic forecasting is a basic requirement for traffic management. We propose a traffic forecasting approach that utilizes air pollution and atmospheric parameters. Air pollution levels are often associated with traffic intensity, and much work is already available in which air pollution has been predicted using road traffic. However, to the best of our knowledge, an attempt to improve forecasting road traffic using air pollution and atmospheric parameters is not yet available in the literature. In our preliminary experiments, we found out the relation between traffic intensity, air pollution, and atmospheric parameters. Therefore, we believe that addition of air pollutants and atmospheric parameters can improve the traffic forecasting. Our method uses air pollution gases, including C O , N O , N O 2 , N O x , and O 3 . We chose these gases because they are associated with road traffic. Some atmospheric parameters, including pressure, temperature, wind direction, and wind speed have also been considered, as these parameters can play an important role in the dispersion of the above-mentioned gases. Data related to traffic flow, air pollution, and the atmosphere were collected from the open data portal of Madrid, Spain. The long short-term memory (LSTM) recurrent neural network (RNN) was used in this paper to perform traffic forecasting.

摘要

交通流预测是与智慧城市相关的最重要用例之一。除了协助交通管理部门外,交通预测还可以帮助驾驶员选择到达目的地的最佳路径。准确的交通预测是交通管理的基本要求。我们提出了一种利用空气污染和大气参数进行交通预测的方法。空气污染水平通常与交通强度相关,已有大量工作使用道路交通来预测空气污染。然而,据我们所知,利用空气污染和大气参数来改进道路交通预测的尝试在文献中尚未出现。在我们的初步实验中,我们发现了交通强度、空气污染和大气参数之间的关系。因此,我们相信添加空气污染物和大气参数可以提高交通预测的准确性。我们的方法使用包括 C O 、 N O 、 N O 2 、 N O x 和 O 3 在内的空气污染气体。我们选择这些气体是因为它们与道路交通有关。一些大气参数,包括压力、温度、风向和风速,也被考虑在内,因为这些参数在上述气体的扩散中起着重要作用。与交通流量、空气污染和大气有关的数据是从西班牙马德里的开放数据门户收集的。本文使用长短时记忆(LSTM)递归神经网络(RNN)进行交通预测。

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