Driving Behavior Analysis of City Buses Based on Real-Time GNSS Traces and Road Information
Abstract
:1. Introduction
2. Bus DGNSS Tracking and Behavior Analysis System
2.1. System Structure
2.2. Differential DGNSS Pseudorange Traces
- (1)
- The vehicle’s GPGGA and GPGPD parameters of the DGNSS obtained by the on-board terminal monitoring unit are matched with the pseudorange observations and satellite orbit information by the CORS base station connection unit.
- (2)
- The pseudorange observation equations of the GPS and BDS data are generated separately.
- (3)
- If the number of available satellites is greater than 4, the pseudorange differential positioning is performed; otherwise, the GPGGA positioning data are used.
- (4)
- According to (3), the submeter position estimations can be obtained when the residual error and difference analysis are determined.
2.3. DGNSS-Based Bus Road Networks
- (1)
- DGNSS trajectories are gathered from multiple travel rounds of an individual bus route, in the daytime and night real-world tracking, respectively.
- (2)
- A Kalman filter is adopted for trajectory optimization to avoid the severe vibration GNSS multipath and NLOS errors.
- (3)
- The refined trajectory is associated with road sections according to the corresponding bus vehicle identification (ID), as the basic unit for lane information extraction.
3. Estimations and Characteristics of Bus Driving
3.1. Estimation of Bus Driving Data
- Speeding: Different roads of urban traffic has different traffic speed limits [5]. Speeding is not only a traffic violation but also a danger to passengers’ safety. In this study, the speed limit information of the local road traffic is set in the database, and the bus speed is estimated by the filtered DGNSS positioning data. Therefore, the bus speed can determine whether the bus is speeding.
- Rapid starting and braking: A typical characteristic is that the acceleration of a vehicle is greater than a certain threshold. A driver’s excessive acceleration degrades passages’ comfort and safety. The thresholds of “Rapid starting and braking” were based on acceleration as referred to in [46].
- Stopping at bus stations: Bus drivers often avoid to stop at some designated stations or stops out of station areas. As such, this study considers whether buses accurately stop at the corresponding stations. The typical feature of vehicle stopping is a vehicle speed of 0 lasting over 10 s.
- Average one-way duration: This parameter is used as the bus route’s overall driving evaluation [47].
- Fatigue driving: Bus traffic rule defines that fatigue driving is more than 4 h of continuous driving. Fatigue driving may probably lead to traffic accidents [48].
- (1)
- Speed estimation
- (2)
- Rapid acceleration and deceleration estimation
3.2. Characteristics of the Bus Driving Data
4. Field Tests and Behavior Analysis
4.1. Implementation of Real-Time Bus Tracking
- (1)
- Terminal hardware and server platform
- (2)
- GNSS pseudorange differential module
4.2. Bus Driving Behavior Analysis
- bus driving in Huju Road always results in much higher percentages of speeding than the other roads, but fewer accelerations;
- no speeding is recorded in Hanzhong Road for 7 days, and only a few high accelerations were present;
- the percentages of speeding and severe accelerations are highly dependent on the road sections;
- the driving behaviors also vary on different days, which is hard to summarize.
- (1)
- Congestion or speeding
- (2)
- Emergency brake/stop
- (3)
- Whether the bus stop properly at bus stations
- (4)
- Average speed
- (5)
- Fatigue driving
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Parameter Name | Specific Parameters |
---|---|
Positioning system | GPS/BDS differential positioning |
Center frequency | Using B1 frequency: 1561.098 Hz |
Sensitivity | −133 dBm |
Number of channels | 12 independent BD2 B1 civilian code receiving channels |
Single point positioning accuracy | PDOP ≤ 4; horizontal position ≤ 5 m; vertical position ≤ 8 m |
Positioning time of receiver | Cold start time 30~45 s |
Update rate | 1 Hz |
Timing accuracy | 50 ns |
Power supply | Rated 12 V |
Power dissipation | ≤3 W |
Working temperature | −40 °C~+85 °C |
Humidity | 5% ~ 95% |
Protection grade | IP65 |
Data packet loss rate | Less than 5% |
Network communication | The communication is a 3G communication mode based on the TCP protocol for a long-distance connection |
Delay setting | Data is automatically lost when the delay exceeds 3 s, and no longer transmitted to the server |
Other | Support the remote configuration terminal instruction format |
Risky Driving Behavior | Distance/m | Duration/s | Number of Times |
---|---|---|---|
Speeding | VS | VT | VN |
Rapid acceleration | AAS | AAT | AAN |
Sharp slowdown | ASS | AST | ASN |
Data Notations | Byte String |
---|---|
Bus vehicle identification (ID) | 32-byte string |
Bus vehicle number (ZDBH) | 15-byte string |
GPS/BDS time (GNSSSJ) | YYYY-MM-DD HH24:MI:SS |
Set up time (JLSJ) | YYYY-MM-DD HH24:MI:SS |
Storage time (CCSJ) | YYYY-MM-DD HH24:MI:SS |
Longitude (JD) | 15-byte string |
Latitude (WD) | 15-byte string |
Number of satellites (WXSL) | Two-digit integer |
Time (Start) | Time (End) | Acceleration (m/s2) |
---|---|---|
7:24:21 | 7:24:22 | 2.4012522902617603 |
7:26:49 | 7:26:50 | 1.8576729328204293 |
7:26:52 | 7:26:53 | 1.7403166489549329 |
7:28:28 | 7:28:29 | 1.7389263796751016 |
7:29:33 | 7:29:34 | 2.5543606480992884 |
7:29:37 | 7:29:38 | 2.0349395742103993 |
7:36:22 | 7:36:23 | 1.716697223852211 |
7:36:29 | 7:36:30 | 1.7642696573137318 |
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Yang, Y.; Yan, J.; Guo, J.; Kuang, Y.; Yin, M.; Wang, S.; Ma, C. Driving Behavior Analysis of City Buses Based on Real-Time GNSS Traces and Road Information. Sensors 2021, 21, 687. https://doi.org/10.3390/s21030687
Yang Y, Yan J, Guo J, Kuang Y, Yin M, Wang S, Ma C. Driving Behavior Analysis of City Buses Based on Real-Time GNSS Traces and Road Information. Sensors. 2021; 21(3):687. https://doi.org/10.3390/s21030687
Chicago/Turabian StyleYang, Yuan, Jingjie Yan, Jing Guo, Yujin Kuang, Mingyang Yin, Shiniu Wang, and Caoyuan Ma. 2021. "Driving Behavior Analysis of City Buses Based on Real-Time GNSS Traces and Road Information" Sensors 21, no. 3: 687. https://doi.org/10.3390/s21030687
APA StyleYang, Y., Yan, J., Guo, J., Kuang, Y., Yin, M., Wang, S., & Ma, C. (2021). Driving Behavior Analysis of City Buses Based on Real-Time GNSS Traces and Road Information. Sensors, 21(3), 687. https://doi.org/10.3390/s21030687