NeSDeepNet: A Fusion Framework for Multi-step Forecasting of Near-surface Air Pollutants

Prasanjit Dey, Soumyabrata Dev, Bianca Schoen-Phelan
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引用次数: 1

Abstract

Air pollution is a global issue that poses significant threats to human health and the environment due to industrial development. Forecasting the concentrations of major pollutants such as NO2 and CO can provide early warnings of harmful substances, minimizing health risks and losses. Recent deep learning models have shown promise in air quality prediction, but they have limitations such as insufficient feature representation, high computational costs, and poor generalization. This paper proposes a near-surface deep network (NeSDeepNet) to overcome these limitations. The NeSDeepNet integrates multiple deep learning models and a shallow model to form a hybrid forecasting system. The proposed framework consists of three modules: a preliminary extraction module, a deep extraction module, and a fusion module. The feature extraction module uses a multi-layer network to extract features from air pollutant and meteorological data, and each of which predicts air pollutants for different forecasting horizons. The fusion module combines the outputs of the deep learning module and the shallow models to produce the final prediction results. The proposed framework is evaluated on a real-world dataset, and the experimental results demonstrate that NeSDeepNet achieves optimal RMSE value of 9.59 for NO2 and 274.0 for CO, MAE value of 2.64 for NO2 and 13.75 for CO, and R2 values 0.89 for NO2 and 0.93 for CO, respectively, outperforming cutting-edge deep learning models. Therefore, NeSDeepNet can be a valuable tool for air quality forecasting and miti-gating the adverse effects of air pollution on human health and the environment. The source code for our proposed NeSDeepNet and comparative models is available on GitHub repository: https://github.com/Prasanjit-Dey/NeSDeepNet.
NeSDeepNet:近地表空气污染物多步预报的融合框架
空气污染是一个全球性问题,由于工业发展对人类健康和环境构成重大威胁。预测NO2和CO等主要污染物的浓度可以提供有害物质的早期预警,最大限度地减少健康风险和损失。最近的深度学习模型在空气质量预测方面显示出前景,但它们存在诸如特征表示不足、计算成本高和泛化能力差等局限性。本文提出了一种近地表深度网络(NeSDeepNet)来克服这些限制。NeSDeepNet集成了多个深度学习模型和一个浅层模型,形成一个混合预测系统。该框架由三个模块组成:初步提取模块、深度提取模块和融合模块。特征提取模块使用多层网络从空气污染物和气象数据中提取特征,每个特征对不同预测层的空气污染物进行预测。融合模块将深度学习模块和浅层模型的输出结合起来,产生最终的预测结果。实验结果表明,NeSDeepNet对NO2和CO的RMSE值分别为9.59和274.0,对NO2和CO的MAE值分别为2.64和13.75,对NO2和CO的R2值分别为0.89和0.93,均优于前沿深度学习模型。因此,NeSDeepNet可以成为空气质量预报和减轻空气污染对人类健康和环境的不利影响的宝贵工具。我们提出的NeSDeepNet和比较模型的源代码可以在GitHub存储库中获得:https://github.com/Prasanjit-Dey/NeSDeepNet。
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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