RF-BiLSTM Neural Network Incorporating Attention Mechanism for Online Ride-Hailing Demand Forecasting

Author:

Zhao Xiangmo1,Sun Kang1ORCID,Gong Siyuan1,Wu Xia1

Affiliation:

1. School of Information Engineering, Chang’an University, Xi’an 710064, China

Abstract

Accurately predicting online ride-hailing demand can help operators allocate vehicle resources on demand, avoid idle time, and improve traffic conditions. However, due to the randomness and complexity of online ride-hailing demand data, which are affected by many factors and mostly time-series in nature, it is difficult to forecast accurately and effectively based on traditional forecasting models. Therefore, this study proposes an online ride-hailing demand forecasting model based on the attention mechanism of a random forest (RF) combined with a symmetric bidirectional long short-term memory (BiLSTM) neural network (Att-RF-BiLSTM). The model optimizes the inputs and can use past and future data to forecast, improving the forecasting precision of online ride-hailing demand. The model utilizes a random forest to filter and optimize the input variables to reduce the neural network complexity, and then an attention mechanism was incorporated into the BiLSTM neural network to construct a demand forecasting model and validate it using actual Uber pickup data from New York City. Compared with other forecasting models (Att-XGBoost-BiLSTM, Att-BiLSTM, and pure LSTM), the results show that the proposed symmetrical Att-RF-BiLSTM online ride-hailing demand forecasting model has a higher forecasting precision and fitting degree, which indicates that the proposed model can be satisfactorily applied to the area of online ride-hailing demand.

Funder

National Key Research and Development Program of China

National Key R&D Program of China

NSFC

the 111 Project on Information of Vehicle–Infrastructure Sensing and ITS

Joint Laboratory for Internet of Vehicles

Shaanxi Province Science Foundation

China Postdoctoral Science Foundation

research funds for the Central Universities, Chang’an University

Publisher

MDPI AG

Subject

Physics and Astronomy (miscellaneous),General Mathematics,Chemistry (miscellaneous),Computer Science (miscellaneous)

Reference37 articles.

1. (2020, December 01). Uber Official Website Data. Available online: https://www.uber.com/en-GB/newsroom/company-info/.

2. Clewlow, R., and Mishra, G. (2017). The Adoption, Utilization, and Impacts of Ride-Hailing in the United States, University of California, Davis, Institute of Transportation Studies. Research Report.

3. Nourbakhshrezaei, A., Jadidi, M., and Sohn, G. (2023). Improving Cyclists’ Safety Using Intelligent Situational Awareness System. Sustainability, 15.

4. Model selection and Akaike’s information criterion (AIC): The general theory and its analytical extensions;Bozdogan;Psychometrika,1987

5. Qian, X., Ukkusuri, S.V., Yang, C., and Yan, F. (2017, January 8–12). A model for short-term taxi demand forecasting accounting for spatio-temporal correlations. Proceedings of the Transportation Research Board 96th Annual Meeting, Washington, DC, USA. Research Report No. 17-02470.

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