GSAA:一种新的智慧城市交通预测图时空关注算法

IF 3.9 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Sensor Networks Pub Date : 2023-11-07 DOI:10.1145/3631608
Jianmin Liu, Xiaoding Wang, Hui Lin, Feng Yu
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引用次数: 0

摘要

随着5G和物联网技术的发展,智慧交通在智慧城市中的应用进程不断推进。传感器是智能交通的关键信息来源,其数据通常包含复杂的交通场景信息。通过部署智能传感器的数据来预测交通流量,可以显著提高城市交通调度和效率。尽管一些相关工作侧重于交通流的预测任务,但尚未完全挖掘智能传感器数据中存在的交通时空信息。本文提出了一种新的用于交通预测的图时空注意力算法(GSAA)。为了充分利用复杂道路之间的地理和时间相关性进行交通预测,该算法将时空注意机制与图神经网络相结合。为了充分利用各种超参数提供的效果,在训练预测模型的同时,使用深度强化学习来获得最优的超参数。在真实公共数据集上的实验结果表明,本文提出的算法在短期和长期交通预测中,比最佳基线策略的平均绝对误差分别提高了5.47%和13.10%。
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GSAA: A Novel Graph Spatiotemporal Attention Algorithm for Smart City Traffic Prediction
With the development of 5G and Internet of Things technologies, the application process of smart transportation in smart cities continues to advance. Sensors are a key source of information for smart transportation, and their data commonly includes complicated traffic scene information. Urban traffic scheduling and efficiency can be significantly increased by deploying data from smart sensors to forecast traffic flows. Despite the fact that some related works have focused on the prediction task of traffic flows, they have not completely mined the traffic spatiotemporal information present in smart sensor data. We offer a novel graph spatio-temporal attention algorithm (GSAA) for traffic prediction in this paper. To completely exploit the geographical and temporal correlations among complicated roadways for traffic forecast, the algorithm combines a spatiotemporal attention mechanism with a graph neural network.To take full advantage of how much effect various hyperparameters provide, deep reinforcement learning is used to obtain the optimal hyperparameters while the predictive model is trained. Experimental results on real-world public datasets show that the algorithm proposed in this paper achieves performance improvements of about 5.47% and 13.10% over the MAE (mean absolute error) than the best baseline strategies for short-term and long-term traffic forecasting, respectively.
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来源期刊
ACM Transactions on Sensor Networks
ACM Transactions on Sensor Networks 工程技术-电信学
CiteScore
5.90
自引率
7.30%
发文量
131
审稿时长
6 months
期刊介绍: ACM Transactions on Sensor Networks (TOSN) is a central publication by the ACM in the interdisciplinary area of sensor networks spanning a broad discipline from signal processing, networking and protocols, embedded systems, information management, to distributed algorithms. It covers research contributions that introduce new concepts, techniques, analyses, or architectures, as well as applied contributions that report on development of new tools and systems or experiences and experiments with high-impact, innovative applications. The Transactions places special attention on contributions to systemic approaches to sensor networks as well as fundamental contributions.
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