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An Improved Transit Signal Priority Strategy for Real-World Signal Controllers that Considers the Number of Bus Arrivals
- Source :
- Sustainability, Vol 12, Iss 1, p 287 (2019), Sustainability, Volume 12, Issue 1
- Publication Year :
- 2019
- Publisher :
- MDPI AG, 2019.
-
Abstract
- Active transit signal priority (TSP) is used more conveniently and widely than the other strategies for real-world signal controllers. However, the active TSP strategies of real-world signal controllers use the first-come-first-served rule to respond to any active TSP request and are not effective at responding to the number of bus arrivals. With or without the green extension strategy, the active TSP has little impact on the final green time of priority phase, even in the case where more buses arrive during the priority phase. The reduced green time of early green strategy is relatively large when a bus arrives, and it would be worse when more buses arrive, the active TSP has a big adverse impact on the final green time of the non-priority phase. Therefore, the active TSP strategies of real-world signal controllers cannot handle the downtown intersection where many bus lines converge or where many buses arrive in a signal cycle during the evening rush hour. Traffic engineers need to do much work to optimize the TSP parameters before field application. Consequently, it is necessary to improve the TSP strategy of the real-world signal controllers for the intersections with a lot of bus arrivals. In order to achieve that objective, the authors present the CNOB (cumulative number of buses) TSP strategy based on the Siemens 2070 signal controller. The TSP strategy extends the max call time according to the number of buses in the arrival section when priority phases are active. The TSP strategy truncates the green time according to the number of buses in the storage section when non-priority phases are active. The experiment&rsquo<br />s result shows that the CNOB TSP strategy can not only significantly reduce the average delay per person without using TSP optimization but can also reduce the adverse impact on the general vehicles of non-bus-priority approaches for the intersections with a lot of bus arrivals. Additionally, because the system dynamically adjusts, traffic engineers do not need to do much optimization work before the TSP implementation.
- Subjects :
- early green strategy
Computer science
tsp optimization
Geography, Planning and Development
Real-time computing
lcsh:TJ807-830
lcsh:Renewable energy sources
Management, Monitoring, Policy and Law
Field (computer science)
Control theory
0502 economics and business
active priority
Transit (satellite)
lcsh:Environmental sciences
lcsh:GE1-350
050210 logistics & transportation
Renewable Energy, Sustainability and the Environment
Intersection (set theory)
green extension strategy
lcsh:Environmental effects of industries and plants
05 social sciences
SIGNAL (programming language)
cnob tsp strategy
transit signal priority
lcsh:TD194-195
Rush hour
signal controller
050203 business & management
Subjects
Details
- Language :
- English
- ISSN :
- 20711050
- Volume :
- 12
- Issue :
- 1
- Database :
- OpenAIRE
- Journal :
- Sustainability
- Accession number :
- edsair.doi.dedup.....1fa79791096c45470fbb21afe7b7b9e2