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一种基于双重注意力的融合网络,用于长期和短期多变量车辆尾气排放预测。

A dual attention-based fusion network for long- and short-term multivariate vehicle exhaust emission prediction.

作者信息

Fei Xihong, Lai Zefeng, Fang Yi, Ling Qiang

机构信息

University of Science and Technology of China, Hefei 230027, China; Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei 230031, China.

University of Science and Technology of China, Hefei 230027, China.

出版信息

Sci Total Environ. 2023 Feb 20;860:160490. doi: 10.1016/j.scitotenv.2022.160490. Epub 2022 Nov 25.

Abstract

The increasing number of vehicles is one main cause of atmospheric environment pollution problems. Timely and accurate long- and short-term (LST) prediction of the on-road vehicle exhaust emission could contribute to atmospheric pollution prevention, public health protection, and government decision-making for environmental management. Vehicle exhaust emission has strong non-stationary and nonlinear characteristics due to the inherent randomness and imbalance nature of meteorological factors and traffic flow. Therefore accurate LST vehicle exhaust emission prediction encounters many challenges, such as the LST temporal dependencies and complicated nonlinear correlation on various emission gases, including carbon monoxide (CO), hydrocarbon (HC), and nitric oxide (NO), and external influence factors. To resolve these challenging issues, we propose a novel hybrid deep learning framework, namely Dual Attention-based Fusion Network (DAFNet), to effectively predict LST multivariate vehicle exhaust emission with the temporal convolutional network, convolutional neural network, long short term memory (LSTM)-skip based on recurrent neural network, dual attention mechanism, and autoregressive decomposition model. The proposed DAFNet consists of three major parts: 1) a nonlinear component to effectively capture the dynamic LST temporal dependency of multivariate gas by the temporal convolutional network, convolutional neural network, and LSTM-skip. Moreover, the above two networks employ an attention mechanism to model the internal relevance of the LST temporal patterns and multivariate gas, respectively. 2) a linear component to tackle the scale-insensitive problem of the neural network model by an autoregressive decomposition model. 3) the external components are taken to compensate the impact of external factors on vehicle exhaust emission by the multilayer perceptron model. Finally, the proposed DAFNet is evaluated on two real-world vehicle emission datasets in Zibo and Hefei, China. Experimental results demonstrate that the proposed DAFNet is a powerful tool to provide highly accurate prediction for LST multivariate vehicle exhaust emission in the field of vehicle environmental management.

摘要

车辆数量的不断增加是大气环境污染问题的一个主要原因。对道路上车辆尾气排放进行及时、准确的长期和短期预测,有助于预防大气污染、保护公众健康以及为政府环境管理决策提供依据。由于气象因素和交通流量具有内在的随机性和不平衡性,车辆尾气排放具有很强的非平稳和非线性特征。因此,准确的长期和短期车辆尾气排放预测面临诸多挑战,如长期和短期的时间依赖性以及各种排放气体(包括一氧化碳(CO)、碳氢化合物(HC)和一氧化氮(NO))之间复杂的非线性相关性,还有外部影响因素。为了解决这些具有挑战性的问题,我们提出了一种新颖的混合深度学习框架,即基于双注意力的融合网络(DAFNet),以利用时间卷积网络、卷积神经网络、基于循环神经网络的长短期记忆(LSTM)跳跃连接、双注意力机制和自回归分解模型,有效地预测长期和短期多变量车辆尾气排放。所提出的DAFNet由三个主要部分组成:1)一个非线性组件,通过时间卷积网络、卷积神经网络和LSTM跳跃连接有效地捕捉多变量气体的动态长期和短期时间依赖性。此外,上述两个网络分别采用注意力机制对长期和短期时间模式与多变量气体的内部相关性进行建模。2)一个线性组件,通过自回归分解模型解决神经网络模型的尺度不敏感问题。3)外部组件通过多层感知器模型来补偿外部因素对车辆尾气排放的影响。最后,在所提出的DAFNet在中国淄博和合肥的两个真实世界车辆排放数据集上进行了评估。实验结果表明,所提出的DAFNet是一种强大的工具,能够为车辆环境管理领域的长期和短期多变量车辆尾气排放提供高度准确的预测。

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