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LSTM network: a deep learning approach for short-term traffic forecast

机译:LSTM网络:一种用于短期流量预测的深度学习方法

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摘要

Short-term traffic forecast is one of the essential issues in intelligent transportation system. Accurate forecast result enables commuters make appropriate travel modes, travel routes, and departure time, which is meaningful in traffic management. To promote the forecast accuracy, a feasible way is to develop a more effective approach for traffic data analysis. The availability of abundant traffic data and computation power emerge in recent years, which motivates us to improve the accuracy of short-term traffic forecast via deep learning approaches. A novel traffic forecast model based on long short-term memory (LSTM) network is proposed. Different from conventional forecast models, the proposed LSTM network considers temporal–spatial correlation in traffic system via a two-dimensional network which is composed of many memory units. A comparison with other representative forecast models validates that the proposed LSTM network can achieve a better performance.
机译:短期交通预测是智能交通系统中的基本问题之一。准确的预测结果使通勤者能够制定适当的出行方式,出行路线和出发时间,这对交通管理至关重要。为了提高预测的准确性,一种可行的方法是开发一种更有效的交通数据分析方法。近年来,涌现出大量交通数据和计算能力,这促使我们通过深度学习方法提高短期交通预测的准确性。提出了一种基于长短期记忆(LSTM)网络的流量预测模型。与传统的预测模型不同,提议的LSTM网络通过一个由许多存储单元组成的二维网络来考虑交通系统中的时空相关性。与其他代表性预测模型的比较验证了所提出的LSTM网络可以实现更好的性能。

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