Effectiveness of Climbing Lanes for Slow-Moving Vehicles When Riding Uphill: A Microsimulation Study
Abstract
:1. Introduction
- -
- Percent time-spent-following (PTSF): average percentage of travel time that vehicles spend queuing behind heavy and slow vehicles, unable to overtake;
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- Average travel speed (ATS): ratio between road section length and both direction vehicles travel time, during a set time interval.
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- Upgrade traffic flow rate is in excess of 200 veh/h;
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- Upgrade truck flow rate is in excess of 20 veh/h;
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- A 15-km/h or greater speed reduction is expected for a typical heavy truck, or level of service E or F exists on the grade, characterized by unstable or breakdown flows, or a reduction of two or more levels of service is experienced when moving from the approach segment to the grade.
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- The slowdown suffered by heavy vehicles on uphill stretches, to be considered intolerable if the speed of such vehicles is reduced to less than 50% of that of passenger cars on the same stretch;
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- The decay in traffic quality and safety conditions in relation to the percentage of heavy vehicles and the expected traffic volume.
2. Materials and Methods
2.1. Case Study
2.1.1. Road Geometrical and Functional Features
- (1)
- The first one in the section between 42+800 km e and 44+400 km;
- (2)
- The second one in the section between 44+900 km and 46+300 km;
- (3)
- The last one in the section between 47+900 km and 49+000 km.
2.1.2. Traffic Data Analysis—LoS Calculation
2.2. Microsimulation
2.2.1. Calibration Phase
2.2.2. Validation Phase
2.2.3. Actual Microsimulation Analyses
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- Speed;
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- Travel times and delay times;
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- Queue waiting times to determine the travel speeds of the vehicles, data collection points—the so-called control points—have been added to relevant sections, such as the starting and ending points of the analyzed road trunk, and the starting and ending points of the three climbing lanes. Through the control points the evaluation of travel times and delays and, consequently, queue waiting times have been also performed.
3. Results and Discussion
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- Vehicle speeds;
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- Travel times and delay times;
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- Queuing waiting times.
3.1. Vehicle Speeds
3.2. Travel Times and Delay Times
3.3. Queuing Waiting Times
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Peak Hour Traffic Flow (veh/h) | Weekday | Weekends |
---|---|---|
Ascendant morning | 480 | 410 |
Ascendant afternoon | 380 | 320 |
Descendant morning | 420 | 390 |
Descendant afternoon | 400 | 420 |
Vissim Typological Classification | Famas 9+1 Typological Classification | % dir. A | % dir. D |
---|---|---|---|
Car | motorcycles, cars, vans | 95 | 96 |
Heavy Goods Vehicle—HGV | car trailers, trucks, articulated trucks, road trains | 4 | 3 |
Bus | buses | 1 | 1 |
Default Settings | Adopted Settings | |
---|---|---|
Simulation resolution; Time steps (seconds)/seconds of simulation | 10 | 10 |
Simulation speed | 10 | 10 |
Vehicular composition (Vehicular types; speed distributions desired; percentage of each vehicular class of total flow) | 100 (Car; 50 km/h; 0.980) 200 (HGV, 50 km/h; 0.020) | 100 (Car; 90 km/h; 0.950) 200 (HGV; 75 km/h; 0.040) 300 (Bus; 75 km/h; 0.010) |
Vehicular Fleet | - | Anas control unit data |
Vehicular classes | Car, HGV, Bus, Tram, Pedestrian, Bicycle | Car, HGV, Bus |
Parameters | Description | Unit | Default Value |
---|---|---|---|
CC0 | Standstill distance | m | 1.50 |
CC1 | Gap time distribution | s | 0.90 |
CC2 | ‘Following’ distance oscillation | m | 4.00 |
CC3 | Threshold for entering ‘Following’ | s | −8.00 |
CC4 | Negative speed difference | m/s | −0.35 |
CC5 | Positive speed difference | m/s | 0.35 |
CC6 | Distance dependency of oscillation | 1/(ms) | 11.44 |
CC7 | Oscillation acceleration | m/s2 | 0.25 |
CC8 | Acceleration from standstill | m/s2 | 3.50 |
CC9 | Acceleration at 80 km/h | m/s2 | 1.50 |
Parameters | Unit | Default Values | |
---|---|---|---|
Own | Trailing Vehicle | ||
Maximum deceleration | m/s2 | 3.50 | 2.50 |
−1 m/s2 per distance | m | 80.00 | 80.00 |
Accepted deceleration | m/s2 | 1.00 | 1.00 |
Waiting time before diffusion | s | 60.00 | |
Minimum clearance (front/rear) | M | 0.50 | |
Safety distance reduction factor | - | 1.00 | |
Maximum deceleration for cooperative braking | m/s2 | 2.50 |
Chi-Square ( ) Goodness of Fit | Weekday | Weekends |
---|---|---|
Ascendant morning | 11.1 | 12.9 |
Ascendant afternoon | 13.0 | 7.8 |
Descendant morning | 6.8 | 5.5 |
Descendant afternoon | 8.9 | 6.8 |
Distances (km) | Queuing Waiting Times (s) | |||
---|---|---|---|---|
Starting Point | Ending Point | AS | CS1 | CS2 |
42+400 | 42+800 | 0.08 | 0.05 | 0.05 |
42+800 | 44+400 | 4.93 | - | - |
44+400 | 44+900 | 4.38 | 1.25 | - |
44+900 | 46+300 | 15.61 | - | - |
46+300 | 47+900 | 20.29 | 3.99 | 3.99 |
47+900 | 49+000 | 8.82 | - | - |
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Del Serrone, G.; Cantisani, G.; Grilli, R.; Peluso, P. Effectiveness of Climbing Lanes for Slow-Moving Vehicles When Riding Uphill: A Microsimulation Study. Vehicles 2023, 5, 744-760. https://doi.org/10.3390/vehicles5030041
Del Serrone G, Cantisani G, Grilli R, Peluso P. Effectiveness of Climbing Lanes for Slow-Moving Vehicles When Riding Uphill: A Microsimulation Study. Vehicles. 2023; 5(3):744-760. https://doi.org/10.3390/vehicles5030041
Chicago/Turabian StyleDel Serrone, Giulia, Giuseppe Cantisani, Riccardo Grilli, and Paolo Peluso. 2023. "Effectiveness of Climbing Lanes for Slow-Moving Vehicles When Riding Uphill: A Microsimulation Study" Vehicles 5, no. 3: 744-760. https://doi.org/10.3390/vehicles5030041
APA StyleDel Serrone, G., Cantisani, G., Grilli, R., & Peluso, P. (2023). Effectiveness of Climbing Lanes for Slow-Moving Vehicles When Riding Uphill: A Microsimulation Study. Vehicles, 5(3), 744-760. https://doi.org/10.3390/vehicles5030041