Construction of Commuters’ Multi-Mode Choice Model Based on Public Transport Operation Data
Abstract
:1. Introduction
2. Background and Methodology
2.1. Data Description
- Bus IC Card data: Passengers make a transaction on the payment device when they board the bus, but not when they exit; therefore, only a portion of the boarding information is recorded on the IC card, such as line ID, card ID, card style, swiping time, transaction amount, driver card ID, and POS ID. In addition, the boarding and alighting stations are determined by combining bus IC card data with bus GPS data and station location data.
- Bus GPS data: The GPS device installed on the bus records the vehicle’s location and time every ten seconds; this data contains the entire space-time trajectory. The main fields of bus GPS data include the license plate number, bus line ID, time, speed, running direction, and longitude and latitude. However, the arrival time of vehicles at each station cannot be obtained directly.
- Bus station location data: A station may belong to multiple bus lines, and stations with the same name may be located in different places. This dataset contains the spatial information of each station on each line, allowing for the effective avoidance of identification errors resulting from the aforementioned circumstances. The main fields include the station ID, station name, line ID, and longitude and latitude.
- Subway IC card data: Passengers must swipe their card at the turnstile when entering or exiting the subway station. Since the transfer occurs within the station, no additional swiping records will be created. Unlike bus IC card data, subway IC card data indicates whether passengers are entering or exiting the station.
2.2. Commuter Identification
- They travel everyday unless exceptional circumstances arise.
- Departure times are primarily in the morning and evening rush hours.
- In general, the first boarding station is near the residence and the last boarding station is near the workplace.
2.3. Methodology Framework
3. Travel Chain Extraction
3.1. Boarding Station Identification
3.2. Alighting Station Identification
- The passenger’s final destination is close to the origin of his or her first trip.
- For consecutive trips of a passenger, the destination of the last trip is often close to the origin of the next trip.
- For two consecutive travel records of a passenger, the lines are Y and , respectively. If and the running directions are opposite, their origins are each other’s destinations.
3.3. Transfer Behavior Identification
- B-B: bus-to-bus
- B-S and S-B: bus-to-subway and subway-to-bus
- S-S: subway-to-subway
3.4. Accuracy Validation
4. Characteristic Variables for Choice Model
4.1. Travel Time (TT) and Travel Distance (TD)
- Public transport
- Private transport
4.2. Travel Cost (TC)
- Public transport
- Private transport
4.3. Travel Comfort (CF)
- Public transport
- Private transport
4.4. Walking Distance (WD)
- Public transport
- Private transport
4.5. Waiting Time (WT)
- Public transport
- Private transport
5. Parameter Calibration for RPL Model
5.1. The Utility Function and RPL Model
5.2. Significance Test of Characteristic Variables
5.3. Parameter Estimation for RPL Model
5.4. Marginal Effect Analysis
6. Conclusions and Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data Source | Field Name | Description | Example |
---|---|---|---|
Bus IC card data | Line ID | Line number of the passenger boarding. | 990008 |
Card ID | Card number of bus user. | 2660000002179370 | |
Card style number | Type of bus card. Values of 0, 140, and 340 represent ordinary, student, and older users. | 0 | |
Date | Swiping time of the passenger getting on. | 2018-5-13 05:31:06 | |
Transaction amount | Fare of swiping card. | 90 | |
Driver card ID | Number of driver card. | 2660990600000590 | |
POS ID | Number of POS device. | 370020030190 | |
Bus GPS data | Line ID | Number of the bus line. | 12 |
Bus ID | License plate number of bus. | H5162 | |
GPS time | Time recorded by GPS device. | 2018-5-13 09:36:19 | |
GPS speed | GPS speed of the bus. | 0 | |
Direction | Running direction of the bus. | 0 | |
Longitude | Longitude of the bus. | 120.392631 | |
Latitude | Latitude of the bus. | 36.074538 | |
Station location data | Station ID | Identification of the station. | 9 |
Station name | Name of the station. | Cangkou Stadium | |
Line ID | Number of line which station belongs. | 11501 | |
Longitude | Longitude of the station. | 120.38172 | |
Latitude | Latitude of the station. | 36.19175 | |
Subway IC card data | Card ID | Card number of subway user. | 2660000000104090 |
Date | Swiping time of the passenger getting on. | 2018-5-13 08:58:51 | |
Type | Passengers enter or exit the subway. | Enter/Exit | |
Transaction amount | Fare of swiping card. | 2 | |
Line ID | Number of line which subway station belongs. | 11 | |
Station name | Name of the station. | Shandong University | |
Car ID | License plate number of subway. | AGM-105 |
Transfer Mode | |||
---|---|---|---|
Peak Hour | Off-Peak Hour | ||
B-B | 16.9 | 21.9 | 500 |
24.7 | 34.7 | 700 | |
B-S | 18.1 | 21.2 | 770 |
S-B | 20.7 | 25.7 | 770 |
ID | Boarding Time | Alighting Time | Boarding Line | Alighting Line | Travel Chain | Travel Stage | Boarding Station | Alighting Station | Mode |
---|---|---|---|---|---|---|---|---|---|
2660000000556150 | 07:47:37 | 08:00:16 | 6 | 6 | 1 | 1 | Traffic police brigade | Jimo ancient city | B |
2660000000556150 | 08:04:46 | 08:34:39 | 101 | 101 | 1 | 2 | Jimo ancient city | Longshan street intersection | B |
2660000000556150 | 17:13:39 | 17:44:52 | 101 | 101 | 2 | 1 | Longshan street intersection | Jimo ancient city | B |
2660000000556150 | 17:50:23 | 18:02:42 | 6 | 6 | 2 | 2 | Jimo ancient city | Traffic police brigade | B |
Parameter | Coefficient | z | p |
---|---|---|---|
TT | −1.216 ** | −2.33 | 0.019 |
TD | −7.324 *** | −3.92 | 0.001 |
TC | −2.198 *** | −4.24 | 0.000 |
CF | 6.261 *** | 4.83 | 0.000 |
WD | −4.238 ** | −2.26 | 0.024 |
WT | −1.093 ** | −1.97 | 0.049 |
ASC | 4.185 *** | 4.16 | 0.000 |
Pseudo R2 | 0.4128 |
Parameter | Coefficient | z | p |
---|---|---|---|
WD | −8.127 *** | −2.58 | 0.010 |
TT | −0.977 ** | −2.10 | 0.036 |
TD | −7.604 *** | −3.86 | 0.001 |
TC | −2.550 *** | −4.27 | 0.000 |
CF | 6.609 *** | 4.77 | 0.000 |
WT | −1.279 ** | −2.01 | 0.044 |
4.401 *** | 4.19 | 0.000 | |
4.730 ** | 2.18 | 0.029 | |
Pseudo R2 | 0.4330 |
Mode | TT | TD | TC | CF | WD | WT |
---|---|---|---|---|---|---|
PT | −0.052 | −0.298 | −0.003 | 0.158 | −0.154 | −0.078 |
PC | −0.022 | −0.272 | −0.192 | 0.429 | −0.113 | −0.017 |
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Chen, L.; Zhao, Y.; Liu, Z.; Yang, X. Construction of Commuters’ Multi-Mode Choice Model Based on Public Transport Operation Data. Sustainability 2022, 14, 15455. https://doi.org/10.3390/su142215455
Chen L, Zhao Y, Liu Z, Yang X. Construction of Commuters’ Multi-Mode Choice Model Based on Public Transport Operation Data. Sustainability. 2022; 14(22):15455. https://doi.org/10.3390/su142215455
Chicago/Turabian StyleChen, Lingjuan, Yijing Zhao, Zupeng Liu, and Xinran Yang. 2022. "Construction of Commuters’ Multi-Mode Choice Model Based on Public Transport Operation Data" Sustainability 14, no. 22: 15455. https://doi.org/10.3390/su142215455
APA StyleChen, L., Zhao, Y., Liu, Z., & Yang, X. (2022). Construction of Commuters’ Multi-Mode Choice Model Based on Public Transport Operation Data. Sustainability, 14(22), 15455. https://doi.org/10.3390/su142215455