中文核心期刊
CSCD来源期刊
中国科技核心期刊
RCCSE中国核心学术期刊

重庆交通大学学报(自然科学版) ›› 2026, Vol. 45 ›› Issue (6): 64-75.DOI: 10.3969/j.issn.1674-0696.2026.06.09

• 交通运输+人工智能 • 上一篇    

基于改进深度极限学习机的多热点区域出租车需求预测

车畅畅,李浩   

  1. (南京林业大学 汽车与交通工程学院,江苏 南京 210000)
  • 收稿日期:2025-10-28 修回日期:2026-01-16 发布日期:2026-07-10
  • 作者简介:车畅畅(1994—),男,河南驻马店人,副教授,博士,主要从事交通大数据分析方面的研究。E-mail:checc@njfu.edu.cn
  • 基金资助:
    国家自然科学基金项目(52402515)

Taxi Demand Prediction in Multiple Hotspot Areas Based on Improved Deep Extreme Learning Machine

CHE Changchang, LI Hao   

  1. (1. Faculty of Transportation Engineering, Kunming University of Science and Technology, Kunming 650500, Yunnan, China; 2. Yunnan Provincial Intelligent Transport Systems Research Center of Engineering and Technology, Kunming University of Science and Technology, Kunming 650500, Yunnan, China; 3. Baoshan Municipal Highway Engineering Quality Supervision Station, Baoshan 678000, Yunnan, China; 4. China Construction Fifth Engineering Division Co., Ltd., Changsha 410004, Hunan, China)
  • Received:2025-10-28 Revised:2026-01-16 Published:2026-07-10

摘要: 针对城市出租车的时空需求分布不均衡、多热点区域时变性强的问题,提出基于改进深度极限学习机的多热点区域出租车需求预测方法。首先,通过变分模态分解方法将原始需求序列分解为多组具有明确物理意义的模态分量,有效分离不同时间尺度的需求波动特征;然后,在构建深度极限学习机模型的基础上利用基于种群的元启发式优化算法优化深度极限学习机的权重与偏差参数;最后,通过纽约曼哈顿6个热点区域的出租车需求数据验证该方法的有效性。结果表明:改进深度极限学习机能够在不同热点区域均实现精准的出租车需求预测;与其他基线模型和单一模型相比,改进深度极限学习机订单量平均绝对误差EMA、均方根误差ERMS和平均绝对百分比误差EMAP分别降低了2.43~8.54个/h、3.01~11.77个/h、0.54%~2.91%。

关键词: 交通运输工程;出租车需求预测;变分模态分解算法;深度极限学习机;混沌进化优化算法

Abstract: Aiming at the uneven distribution of spatiotemporal demand for urban taxis and the strong temporal variability in multiple hotspot areas, a taxi demand prediction method based on improved deep extreme learning machine (DELM) in multiple hotspot areas was proposed. Firstly, the variational mode decomposition method was applied to decompose the original demand series into multiple sets of modal components with clear physical meanings, effectively separating demand fluctuation features at different time scales. Then, based on the construction of the deep extreme learning machine model, a population-based metaheuristic optimization algorithm was employed to optimize the weights and bias parameters of the DELM. Finally, the effectiveness of the proposed method was validated through taxi demand data from six hotspots in Manhattan, New York. The results demonstrate that the improved DELM achieves accurate taxi demand predictions across different hotspot areas, with statistically significant reductions in EMA, ERMS and EMAP of order volume by 2.43~8.54 orders per hour, 3.01~11.77 orders per hour, and 0.54%~2.91%, respectively, compared to other baseline models and single models.

Key words: traffic and transportation engineering; taxi demand forecasting; variational mode decomposition algorithm; deep extreme learning machine; chaotic evolutionary optimization algorithm

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