Exploring the Influence of E-Hailing Applications on the Taxi Industry—From the Perspective of the Drivers
Abstract
:1. Introduction
2. Related Works
3. Dataset and Preprocessing
3.1. Study Dataset
3.2. Preprocessing
4. Spatiotemporal Patterns of Driving Behavior
4.1. Temporal Patterns of the Occupied Journey
4.1.1. General Patterns
4.1.2. Temporal Patterns of Short- and Long-Distance Occupied Trips
4.1.3. Spatial Patterns of the Occupied Journeys
4.2. Temporal Patterns of Unoccupied Trips
4.2.1. General Patterns
4.2.2. Temporal Patterns of Cruising Trips
4.2.3. Temporal Patterns of Long-Unoccupied Trip
4.3. Spatiotemporal Patterns of Spot Events
4.3.1. Spatial Patterns of Pick-Up Spots
- Step 1: based on the road data of Shanghai, generate buffers for all road segments and set a 1/2 road width as the radius. If the pick-up spots in May 2015 and May 2017 were located in the same buffer, these spots should be deleted.
- Step 2: draw grids with a side length of 500 m to cover the land area of Shanghai (excluding Chongming Island). Then count whether the pick-up spots were covered in each grid.
4.3.2. Temporal Patterns of Payment
4.3.3. Spatial Patterns of Taxi Flow
4.4. Efficiency and Revenue
4.4.1. Unoccupied Ratio
4.4.2. Operating Ratio
4.4.3. Revenue
5. Discussion and Conclusions
- -
- First: the platform algorithm is good at mining LDOTs.
- -
- Second: drivers prefer LDOTs to increase their revenue.
- -
- Third: the urban subway and bus networks are more convenient.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Event | Property | Description |
---|---|---|
Trip events (vacant/occupied) | Date | Date the trip started, 8-digit number, yyyy-mm-dd |
Time | Time the trip started, 6-digit number, hh-mm-ss | |
GPSID | Car identifier, 5-digit number | |
Trip_x | X coordinate of the origin of the trip, accurate to 6 decimal places, in degrees/units (meters) | |
Trip_y | Y coordinate of the origin of the trip, accurate to 6 decimal places, in degrees/units (meters) | |
Dis | The distance of the trip, accurate to 6 decimal places, in degrees/units (meters) | |
Dur | The duration of the trip, units (seconds) | |
Spot events (pick-up/drop-off) | Date | Date the trip started, 8-digit number, yyyy-mm-dd |
Time | Time the trip started, 6-digit number, hh-mm-ss | |
GPSID | Car identifier, 5-digit number | |
X | X coordinate of the spot events, accurate to 6 decimal places, in degrees/units (meters) | |
Y | Y coordinate of the spot events, accurate to 6 decimal places, in degrees/units (meters) | |
Region | Administrative area number | |
Pay_dur | The time interval between the drop-off point and the first moving point, units (seconds), only drop-off spot |
Car Status | Velocity | Description |
---|---|---|
Load = 0 | V > 0 | C—Looking for the next customer while driving; |
V = 0 | B—Suspension of business (e.g., lunch break or off duty) with a long break; | |
S—Standing for passengers (airports, railway stations, shopping malls, hospitals, etc.). |
Item | Daytime (05:00 a.m. to 11:00 p.m.) | Nighttime (11:00 p.m. to 05:00 a.m.) |
---|---|---|
F0 d 1∈(0, 3] km | 13 | 18 |
F3 d∈(3, 10] km | 2.4 | 3.1 |
F10 d∈(10, +∞) km | 3.6 | 4.7 |
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Gan, Y.; Fan, H.; Jiao, W.; Sun, M. Exploring the Influence of E-Hailing Applications on the Taxi Industry—From the Perspective of the Drivers. ISPRS Int. J. Geo-Inf. 2021, 10, 77. https://doi.org/10.3390/ijgi10020077
Gan Y, Fan H, Jiao W, Sun M. Exploring the Influence of E-Hailing Applications on the Taxi Industry—From the Perspective of the Drivers. ISPRS International Journal of Geo-Information. 2021; 10(2):77. https://doi.org/10.3390/ijgi10020077
Chicago/Turabian StyleGan, Yitong, Hongchao Fan, Wei Jiao, and Mengqi Sun. 2021. "Exploring the Influence of E-Hailing Applications on the Taxi Industry—From the Perspective of the Drivers" ISPRS International Journal of Geo-Information 10, no. 2: 77. https://doi.org/10.3390/ijgi10020077
APA StyleGan, Y., Fan, H., Jiao, W., & Sun, M. (2021). Exploring the Influence of E-Hailing Applications on the Taxi Industry—From the Perspective of the Drivers. ISPRS International Journal of Geo-Information, 10(2), 77. https://doi.org/10.3390/ijgi10020077