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Dynamically pre-trained deep recurrent neural networks using environmental monitoring data for predicting PM2.5

机译:使用环境监测数据动态预训练的深度递归神经网络来预测PM2.5

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摘要

Fine particulate matter (PM2.5) has a considerable impact on human health, the environment and climate change. It is estimated that with better predictions, US$9 billion can be saved over a 10-year period in the USA (State of the science fact sheet air quality. , ). Therefore, it is crucial to keep developing models and systems that can accurately predict the concentration of major air pollutants. In this paper, our target is to predict PM2.5 concentration in Japan using environmental monitoring data obtained from physical sensors with improved accuracy over the currently employed prediction models. To do so, we propose a deep recurrent neural network (DRNN) that is enhanced with a novel pre-training method using auto-encoder especially designed for time series prediction. Additionally, sensors selection is performed within DRNN without harming the accuracy of the predictions by taking advantage of the sparsity found in the network. The numerical experiments show that DRNN with our proposed pre-training method is superior than when using a canonical and a state-of-the-art auto-encoder training method when applied to time series prediction. The experiments confirm that when compared against the PM2.5 prediction system VENUS (National Institute for Environmental Studies. Visual Atmospheric Environment Utility System. , ), our technique improves the accuracy of PM2.5 concentration level predictions that are being reported in Japan.
机译:细颗粒物(PM2.5)对人类健康,环境和气候变化具有重大影响。据估计,有了更好的预测,美国在10年内可以节省90亿美元(《科学概况》空气质量状况)。因此,保持开发能够准确预测主要空气污染物浓度的模型和系统至关重要。在本文中,我们的目标是使用从物理传感器获得的环境监测数据,以比目前采用的预测模型更高的精度来预测日本的PM2.5浓度。为此,我们提出了一种深度递归神经网络(DRNN),该方法通过一种新颖的预训练方法进行了增强,该方法使用了专门为时间序列预测而设计的自动编码器。另外,通过利用网络中发现的稀疏性,可以在DRNN内执行传感器选择,而不会损害预测的准确性。数值实验表明,将DRNN与我们提出的预训练方法相比较,在将其应用于时间序列预测时,它比使用规范和最新的自动编码器训练方法优越。实验证实,与PM2.5预测系统VENUS(国家环境研究所,视觉大气环境公用事业系统)相比,我们的技术提高了日本报道的PM2.5浓度水平预测的准确性。

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