基于图注意力网络的城市交通流预测

Gaohao Zhou, Changyuan Wang, Qiang Mei
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引用次数: 2

摘要

近年来,深度学习在图像分类和自然语言处理中得到了广泛的应用,并取得了相当好的效果。图是计算机算法和数据结构的重要组成部分。图结构可以发现自然界中大量的映射。它强调节点和链路之间的关系,这一属性被广泛应用于社交网络处理、风险控制、网络安全、智慧城市等领域。交通流问题是困扰城市发展的一个重要因素。大城市在规划新建筑时需要考虑很多因素,比如住宅社区的分布、自然地形,甚至是地下管道。城市建设过程调整了当前的交通流量,不可避免地对原有的城市交通网络产生影响。这种影响的不确定性是许多城市建设方案难以推进的原因之一。本文提出了一种基于图注意机制的城市交通流预测方法,并提出了一种分离城市网格布局和交通计算来处理重映射的方法。我们的模型可以准确地预测城市的全局和局部流量,并且在回归评价指标上取得了满意的结果,同时我们的模型也是一个轻量级的模型,为未来在小型设备上的研究提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Graph Attention Network to Predicte Urban Traffic Flow
In recent years, deep learning has been widely used in image classification and natural language processing and has achieved quite good results. Graphs are a very important part of computer algorithms and data structures. Graph structures can find lost of mappings in natural world. It emphasizes the relationship between nodes and link, and this property is widely used in social network processing, risk control, cyber security, and smart cities. The traffic flow problem is an important factor that plagues urban development. Large cities need to consider many factors when planning new construction, such as the distribution of residential communities, natural topography, and even underground pipelines. The city construction process adjusts the current traffic flow, inevitably impacting the original urban transportation network. The uncertainty of such impact is one of the reasons why many urban construction schemes are difficult to advance. Here we propose a graph attention mechanism-based urban traffic flow prediction, and we propose a method that separates the urban grid layout and traffic calculation to handle remapping. Our model can accurately predict both global and local traffic in cities while achieving satisfactory results in regression evaluation metrics, and our model is also a lightweight model that provides a basis for future research on small-scale devices.
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