基于动态时空图神经网络的 PM2.5 预测

IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Haibin Liao, Mou Wu, Li Yuan, Yiyang Hu, Haowei Gong
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引用次数: 0

摘要

空气污染是人类面临的主要公共健康和安全问题之一。PM2.5 浓度预测(PCP)有助于公众提前预防和政府决策。PM2.5 浓度预测是一个典型的基于时空序列数据的知识挖掘问题,至今仍面临巨大挑战。针对气象、地理、时间等因素相互干扰、集中突变的复杂难题,利用图神经网络(GNN)和机制模型的优势,提出了一种针对 PCP 的动态时空图神经网络(DST_GNN)方法。其主要方法有利用图结构构建不同监测站点之间 PM2.5 的空间关系,利用机制模型 HYSPLIT 构建图节点之间的动态边缘关系,利用注意机制的门递归单元学习 PM2.5 浓度的时间,从而形成一个融合了机器学习和领域知识的 GNN 架构。此外,在设计模型目标函数时,提出了基于趋势和形状的损失函数。所提出的模型创新性地利用 HYSPLIT 辅助构建动态时空图网络,并利用趋势损失函数进行模型训练,为动态构建 GNN 提供了一种新的方法,并通过结合领域知识和深度学习为 PCP 提供了参考。实验结果表明,所提出的方法在基于 GNN 的方法中预测精度最高,与先进的 GNN 方法相比,平均绝对误差降低了约 14%,均方根误差降低了约 13%。48 小时内预测的平均绝对误差小于 50,预测性能远优于传统的机制模型,同时还具有部署灵活、易于实现的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

PM2.5 prediction based on dynamic spatiotemporal graph neural network

PM2.5 prediction based on dynamic spatiotemporal graph neural network

Air pollution is one of the main public health and safety issues facing humanity. PM2.5 concentration prediction (PCP) helps the public to prevent and make government decisions in advance. PCP is a typical knowledge mining problem based on spatiotemporal sequential data, which still faces great challenges up to now. Aiming at the complex conundrum of meteorological, geographical, and temporal factors interference and concentration sudden changes, a dynamic spatiotemporal graph neural network (DST_GNN) method for PCP is proposed by using the advantages of graph neural network (GNN) and mechanism model. Its main methods are: The graph structure is used to construct the spatial relationship of PM2.5 among different monitoring stations, the mechanism model HYSPLIT is used to construct the dynamic edge relationship among graph nodes, and the gate recurrent unit of attention mechanism is used to learn the timing of PM2.5 concentration, thus forming a GNN architecture that integrates machine learning and domain knowledge. In addition, a loss function based on trend and shape is proposed when the model objective function is designed. The proposed model innovatively uses HYSPLIT to assist in building a dynamic spatiotemporal graph network and uses trend loss function for model training, which provides a new way for the dynamic construction of GNN, and provides a reference for PCP by combining domain knowledge and deep learning. Experimental results show that the proposed method has the best prediction accuracy among GNN based methods, which reduced the mean absolute error by about 14% and root mean square error by about 13% compared with the advanced GNN methods. The mean absolute error within 48 h forecast is less than 50, which predictive performance is far superior to the traditional mechanism model, and it also has the characteristics of flexible deployment and easy implementation.

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来源期刊
Applied Intelligence
Applied Intelligence 工程技术-计算机:人工智能
CiteScore
6.60
自引率
20.80%
发文量
1361
审稿时长
5.9 months
期刊介绍: With a focus on research in artificial intelligence and neural networks, this journal addresses issues involving solutions of real-life manufacturing, defense, management, government and industrial problems which are too complex to be solved through conventional approaches and require the simulation of intelligent thought processes, heuristics, applications of knowledge, and distributed and parallel processing. The integration of these multiple approaches in solving complex problems is of particular importance. The journal presents new and original research and technological developments, addressing real and complex issues applicable to difficult problems. It provides a medium for exchanging scientific research and technological achievements accomplished by the international community.
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