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Modelling of pollutants and particulate matter in air using auto-tuned deep recurrent networks

机译:自动调谐深复发网络在空气中造型和颗粒物质的建模

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Atmospheric pollutants and Particulate Matter of size less than 10μm (PM10) are becoming dominant in the atmosphere due to human activities and natural calamities. To address their associated problems on human health, the interactions between pollutants and PM10 have to be envisaged. Machine learning techniques like Recurrent Neural Network (RNN) and Long Short-Term Memory (LSTM) were successfully employed in establishing the interactions between various factors at play. However, these techniques are denounced for following a heuristic approach for determining network hyper-parameters. We propose a novel evolutionary multi-objective optimization algorithm which can optimally determine the hyper-parameters in deep recurrent neural networks. We test the algorithm to build optimal RNNs and LSTMs for modelling and forecasting the pollutants and PM10 data generated in northern Taiwan region during the year 2015. A state-of-the-art network training algorithm, Truncated Back Propagation Through Time was used in our study and single variable regression was done for CO, NOx, SO2, and PM10. Except for SO2 with RNN, model developed with the proposed algorithm gave high R2 values. LSTM was found to be superior than RNN in all the cases with R2 going as high as 0.9584 for PM10, while that attained by RNN is 0.93.
机译:大气污染物和大小小于10μm(PM10)的颗粒物质在大气中由于人类活动和天然灾害而在大气中显着。为了解决他们对人体健康的相关问题,必须设想污染物和PM10之间的相互作用。机器学习技术,如经常性神经网络(RNN)和长短期记忆(LSTM),用于建立各种因素之间的相互作用。然而,这些技术被谴责以便按照确定网络超参数的启发式方法。我们提出了一种新的进化多目标优化算法,可以最佳地确定深复发性神经网络中的超参数。我们测试算法以在2015年期间建立最佳RNN和LSTMS,用于建模和预测台湾北部地区生成的污染物和PM10数据。我们的最先进的网络训练算法截断了通过时间截断的反向传播。我们的研究和单一可变回归用于CO,NOX,SO2和PM10。除了带有RNN的SO2之外,使用所提出的算法开发的模型具有高R2值。在所有情况下,LSTM都被发现优于RNN,R2高达0.9584的PM10,而RNN达到0.93。

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