Short-Term Traffic Forecasting using LSTM-based Deep Learning Models

D. Haputhanthri, A. Wijayasiri
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引用次数: 8

Abstract

Accurate short-term traffic volume forecasting has become a component with growing importance in traffic management in intelligent transportation systems (ITS). A significant amount of related works on short-term traffic forecasting has been proposed based on traditional learning approaches, and deep learning-based approaches have also made significant strides in recent years. In this paper, we explore several deep learning models that are based on long-short term memory (LSTM) networks to automatically extract inherent features of traffic volume data for forecasting. A simple LSTM model, LSTM encoder-decoder model, CNN-LSTM model and a Conv-LSTM model were designed and evaluated using a real-world traffic volume dataset for multiple prediction horizons. Finally, the experimental results are analyzed, and the Conv-LSTM model produced the best performance with a MAPE of 9.03% for the prediction horizon of 15 minutes. Also, the paper discusses the behavior of the models with the traffic volume anomalies due to the Covid-19 pandemic.
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基于lstm的深度学习模型的短期交通预测
准确的短期交通量预测已成为智能交通系统中交通管理的重要组成部分。基于传统学习方法的短期交通预测相关工作已经提出了大量,近年来基于深度学习的方法也取得了重大进展。在本文中,我们探索了几种基于长短期记忆(LSTM)网络的深度学习模型,以自动提取交通量数据的固有特征进行预测。设计了简单LSTM模型、LSTM编码器-解码器模型、CNN-LSTM模型和convl -LSTM模型,并使用真实交通量数据集对多个预测视界进行了评估。最后对实验结果进行了分析,结果表明,在15分钟的预测范围内,convl - lstm模型的MAPE为9.03%,表现最佳。此外,本文还讨论了新冠肺炎大流行引起的交通量异常情况下模型的行为。
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