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Predicting concentration levels of air pollutants by transfer learning and recurrent neural network

机译:通过转移学习和递归神经网络预测空气污染物的浓度水平

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Air pollution (AP) poses a great threat to human health, and people are paying more attention than ever to its prediction. Accurate prediction of AP helps people to plan for their outdoor activities and aids protecting human health. In this paper, long-short term memory (LSTM) recurrent neural networks (RNNs) have been used to predict the future concentration of air pollutants (APS) in Macau. Additionally, meteorological data and data on the concentration of APS have been utilized. Moreover, in Macau, some air quality monitoring stations (AQMSs) have less observed data in quantity, and, at the same time, some AQMSs recorded less observed data of certain types of APS. Therefore, the transfer learning and pre-trained neural networks have been employed to assist AQMSs with less observed data to build a neural network with high prediction accuracy, The experimental sample covers a period longer than 12-year and includes daily measurements from several APS as well as other more classical meteorological values. Records from five stations, four out of them are AQMSs and the remaining one is an automatic weather station, have been prepared from the aforesaid period and eventually underwent to computational intelligence techniques to build and extract a prediction knowledge-based system. As shown by experimentation, LSTM RNNs initialized with transfer learning methods have higher prediction accuracy; it incurred shorter training time than randomly initialized recurrent neural networks. (C) 2020 Published by Elsevier B.V.
机译:空气污染(AP)对人类健康构成了巨大威胁,人们比以往任何时候都更加关注其预测。对AP的准确预测有助于人们计划其户外活动,并有助于保护人类健康。本文使用长期短期记忆(LSTM)递归神经网络(RNN)来预测澳门未来的空气污染物(APS)浓度。另外,已经利用了气象数据和关于APS浓度的数据。此外,在澳门,一些空气质量监测站(AQMS)的观测数据数量较少,同时,一些AQMS记录的某些类型的APS观测数据也较少。因此,已经采用转移学习和预训练的神经网络来协助具有较少观测数据的AQMS来构建具有较高预测精度的神经网络。该实验样本涵盖了超过12年的时间,并且包括来自多个APS的每日测量值以及其他更经典的气象价值。在上述期间,已经准备了来自五个气象站的记录,其中四个是AQMS,其余的是自动气象站,并且最终将其用于计算智能技术,以构建和提取基于预测知识的系统。实验证明,采用转移学习方法初始化的LSTM RNN具有较高的预测精度;它比随机初始化的递归神经网络的训练时间短。 (C)2020由Elsevier B.V.发布

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