Big Data Research ›› 2023, Vol. 9 ›› Issue (4): 69-82.doi: 10.11959/j.issn.2096-0271.2023042
• TOPIC: CROSS-DOMAIN DATA MANAGEMENT • Previous Articles
Yang AN1, Jianwei SUN2, Qian LI2, Yongshun GONG1
Online:
2023-07-01
Published:
2023-07-01
Supported by:
CLC Number:
Yang AN, Jianwei SUN, Qian LI, Yongshun GONG. Urban traffic flow prediction based on the multisource heterogeneous spatio-temporal data fusion[J]. Big Data Research, 2023, 9(4): 69-82.
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数据集 | 数据类型 | 时间范围 | 时间间隔 | 网格大小 | 外部特征 |
北京出租车数据集 | 出租车GPS数据 | 2013年7月1日—2013年10月30日 | 30 min | (32,32) | 41种假期 |
(TaxiBJ) | 2014年3月1日—2014年6月30日 | 16种天气 | |||
2015年3月1日—2015年6月30日 | 14种POI | ||||
2015年11月1日—2016年10月4日 | |||||
纽约出租车数据 | 出租车轨迹数据 | 2015年1月1日—2015年3月1日 | 1h | (10,20) | 20种假期 |
集(TaxiNYC) | |||||
纽约自行车数据 | 自行车租借数据 | 2014年4月1日—2014年9月30日 | 1h | (16,8) | 20种假期 |
集(BikeNYC) |
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模型 | 北京出租车数据集 | 纽约出租车数据集 | 纽约自行车数据集 | |||||
MAE | RMSE | MAE | RMSE | MAE | RMSE | |||
HA | 16.70 | 30.76 | 9.22 | 29.19 | 3.77 | 8.61 | ||
ARIMA | 17.36 | 23.66 | 8.38 | 17.97 | 3.07 | 5.24 | ||
RNN | 11.16 | 17.97 | 5.85 | 12.66 | 2.57 | 5.04 | ||
LSTM | 10.89 | 17.53 | 5.69 | 12.54 | 2.43 | 4.83 | ||
DeepSTN+ | 10.90 | 17.32 | 5.47 | 12.35 | 2.53 | 5.02 | ||
ST-ResNet | 10.60 | 16.95 | 4.91 | 12.28 | 2.48 | 5.05 | ||
ASTGCN | 10.70 | 17.25 | 5.67 | 12.89 | 2.44 | 4.84 | ||
MHF-STNet | 10.55 | 16.68 | 4.82 | 11.98 | 2.36 | 4.68 |
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