Determining the Optimal Restricted Driving Zone Using Genetic Algorithm in a Smart City
Abstract
:1. Introduction
- An innovative technique called Optimal Restricted Driving Zone (ORDZ) is introduced that intelligently determines restricted driving zones using a machine learning technique. RDZ reduces traffic load and air pollution, and increase citizens satisfaction who wish to travel by their own vehicle. All the aforementioned objectives are formulated into a single multi-objective function that constitute an evolutionary algorithm called genetic algorithm. While the previous works [8,9] determine restrict zone empirically, ORDZ generates a possible solution iteratively until it reaches the optimal solution (with each episode creating a viable solution). This approach has a significant advantage in dynamic traffic conditions as shown in the following sections.
- In our simulation, ORDZ is compared against the other well-known methods including: the Restricted Traffic Zone (RTZ) [8], the Odd-Even Zone (OEZ) [8] and the optimal cordon-based network congestion based on pricing (OCP) [14]. We compare our work against the other well-known empirical approaches. The performance of each method is evaluated with two metrics, traffic load and citizen satisfaction rate. The results show that ORDZ has 23.81% less traffic load than OCP. Also, ORDZ has 22.35% increase in citizen satisfaction than RTZ. We also compare both metrics together as a trade-off and a complete solution. The results show that ORDZ performs 30.6% better than the random modeling, empirical methods, RTZ, OEZ and OCP in terms of traffic load and citizen satisfaction rates.
2. Related Work
2.1. Public Transportation
2.2. Smart Traffic Lights Mmethods
2.3. Modern Technology Method
2.4. Restricted Driving Zone Methods
2.5. Discussion
3. System Description
Problem Definition
4. Proposed Method: Optimal Restricted Driving Zone (ORDZ)
4.1. Initial Plan
4.2. Chromosome Formulation
4.3. Constraints Satisfaction
4.4. Initial Population
4.5. Parent Selection
4.6. Crossover
4.7. Mutation
4.8. Fitness Function
4.8.1. Traffic Load
4.8.2. Citizen Satisfaction
4.8.3. Data Normalization
5. Experiments
5.1. First Scenario
5.2. Second Scenario
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
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Methods | Advantages | Disadvantages |
---|---|---|
Classic methods | • Reduce traffic volume • Reduce air pollution • Low cost | • Low quality • Low satisfaction • High travel time |
Smart traffic lights methods | • Reduce delay time • Reduce traffic volume • Reduce air pollution | • High maintenance cost |
Limited traffic zone methods | • Reduce traffic volume • Reduce air pollution • Low travel time | • Low satisfaction • Pay toll |
Modern Technology Methods | • Reduce air pollution • Reduce Traffic volume • Environment friendly | • High maintenance cost |
Notation | Description |
---|---|
Total number of grid cells | |
Grid cells | |
Vehicles | |
i -th vehicle movement pattern | |
Discrete time | |
Couple-time vehicle movement pattern | |
R | Determinant of matrix |
Probability of selection each chromosome | |
Superiority of each chromosome | |
Initial population | |
Traffic load | |
citizen satisfaction rate | |
Fitness function | |
Total number of vehicles entering a cell | |
Average traffic | |
Z | Data normalization |
Standard deviation |
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Jan, T.; Azami, P.; Iranmanesh, S.; Ameri Sianaki, O.; Hajiebrahimi, S. Determining the Optimal Restricted Driving Zone Using Genetic Algorithm in a Smart City. Sensors 2020, 20, 2276. https://doi.org/10.3390/s20082276
Jan T, Azami P, Iranmanesh S, Ameri Sianaki O, Hajiebrahimi S. Determining the Optimal Restricted Driving Zone Using Genetic Algorithm in a Smart City. Sensors. 2020; 20(8):2276. https://doi.org/10.3390/s20082276
Chicago/Turabian StyleJan, Tony, Pegah Azami, Saeid Iranmanesh, Omid Ameri Sianaki, and Shiva Hajiebrahimi. 2020. "Determining the Optimal Restricted Driving Zone Using Genetic Algorithm in a Smart City" Sensors 20, no. 8: 2276. https://doi.org/10.3390/s20082276
APA StyleJan, T., Azami, P., Iranmanesh, S., Ameri Sianaki, O., & Hajiebrahimi, S. (2020). Determining the Optimal Restricted Driving Zone Using Genetic Algorithm in a Smart City. Sensors, 20(8), 2276. https://doi.org/10.3390/s20082276