基于深度学习的交通预测

Shounak Kundu, M. Desarkar, P. K. Srijith
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引用次数: 4

摘要

智能城市非常需要及时的交通预测,这使得旅行者和政府机构能够根据交通流量做出各种决策。这将减少交通拥堵和二氧化碳排放。然而,由于交通模式的高度复杂,交通预测是一项具有挑战性的任务。标准时间序列技术可能无法捕捉到交通流的非线性和噪声特性。在本文中,我们研究了深度学习模型如何捕获这些特征,并提供比标准时间序列和回归模型更好的预测性能。我们比较了最先进的深度学习模型在两个交通流数据集上的性能,并展示了它们在交通流预测方面优于传统模型的有效性。
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Traffic Forecasting with Deep Learning
Timely forecast of traffic is very much needed for smart cities, which allows travelers and government agencies to make various decisions based on traffic flow. This will result in reduced traffic congestion and carbon dioxide emission. However, traffic forecasting is a challenging task due to the highly complex traffic pattern. Standard time series techniques may not be able to capture the nonlinear and noisy nature of the traffic flow. In this paper, we investigate how the deep learning models capture these characteristics and provide better predictive performance over standard time series and regression models. We compare the performances of state-of-the-art deep learning models on two traffic flow data sets and show their effectiveness in traffic flow prediction over traditional models.
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