Predicting Bus Travel Time with Hybrid Incomplete Data – A Deep Learning Approach

IF 0.8 4区 工程技术 Q4 TRANSPORTATION SCIENCE & TECHNOLOGY Promet-Traffic & Transportation Pub Date : 2022-09-30 DOI:10.7307/ptt.v34i5.4052
Rui-sen Jiang, D. Hu, S. Chien, Qian Sun, Xue Wu
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引用次数: 2

Abstract

The application of predicting bus travel time with real-time information, including Global Positioning System (GPS) and Electronic Smart Card (ESC) data is effective to advance the level of service by reducing wait time and improving schedule adherence. However, missing information in the data stream is inevitable for various reasons, which may seriously affect prediction accuracy. To address this problem, this research proposes a Long Short-Term Memory (LSTM) model to predict bus travel time, considering incomplete data. To improve the model performance in terms of accuracy and efficiency, a Genetic Algorithm (GA) is developed and applied to optimise hyperparameters of the LSTM model. The model performance is assessed by simulation and real-world data. The results suggest that the proposed approach with hybrid data outperforms the approaches with ESC and GPS data individually. With GA, the proposed model outperforms the traditional one in terms of lower Root Mean Square Error (RMSE). The prediction accuracy with various combinations of ESC and GPS data is assessed. The results can serve as a guideline for transit agencies to deploy GPS devices in a bus fleet considering the market penetration of ESC.
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混合不完全数据预测公交出行时间——一种深度学习方法
利用全球定位系统(GPS)和电子智能卡(ESC)数据等实时信息预测公交运行时间,可以有效地减少等待时间,提高公交服务水平。然而,由于种种原因,数据流中不可避免地会出现信息缺失,严重影响预测的准确性。为了解决这个问题,本研究提出了一个长短期记忆(LSTM)模型来预测巴士旅行时间,考虑不完整的数据。为了提高LSTM模型的精度和效率,提出了一种遗传算法(GA)来优化LSTM模型的超参数。通过仿真和实际数据对模型的性能进行了评价。结果表明,采用混合数据的方法优于单独使用ESC和GPS数据的方法。通过遗传算法,该模型在均方根误差(RMSE)较低方面优于传统模型。评估了ESC和GPS数据不同组合的预测精度。考虑到ESC的市场渗透率,研究结果可以作为公交机构在公交车队中部署GPS设备的指导方针。
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来源期刊
Promet-Traffic & Transportation
Promet-Traffic & Transportation 工程技术-运输科技
CiteScore
1.90
自引率
20.00%
发文量
62
审稿时长
3 months
期刊介绍: This scientific journal publishes scientific papers in the area of technical sciences, field of transport and traffic technology. The basic guidelines of the journal, which support the mission - promotion of transport science, are: relevancy of published papers and reviewer competency, established identity in the print and publishing profile, as well as other formal and informal details. The journal organisation consists of the Editorial Board, Editors, Reviewer Selection Committee and the Scientific Advisory Committee. The received papers are subject to peer review in accordance with the recommendations for international scientific journals. The papers published in the journal are placed in sections which explain their focus in more detail. The sections are: transportation economy, information and communication technology, intelligent transport systems, human-transport interaction, intermodal transport, education in traffic and transport, traffic planning, traffic and environment (ecology), traffic on motorways, traffic in the cities, transport and sustainable development, traffic and space, traffic infrastructure, traffic policy, transport engineering, transport law, safety and security in traffic, transport logistics, transport technology, transport telematics, internal transport, traffic management, science in traffic and transport, traffic engineering, transport in emergency situations, swarm intelligence in transportation engineering. The Journal also publishes information not subject to review, and classified under the following headings: book and other reviews, symposia, conferences and exhibitions, scientific cooperation, anniversaries, portraits, bibliographies, publisher information, news, etc.
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