An Economic Penalty Scheme for Optimal Parking Lot Utilization with EV Charging Requirements
Abstract
:1. Introduction
2. Orderly Operation Modeling of Charging Facilities in Parking Lot
2.1. Traffic Flow Model in Public Commercial Area
2.2. Parking Space Probability Model
2.3. Parking Response Willingness Model
2.4. Penalty Strategy Model
2.4.1. Non-Penalty Model
2.4.2. Fixed-Penalty Model
2.4.3. Dynamic-Penalty Model
3. Optimization Model
3.1. Objective Functiaon
3.2. Partical Swarm Optimization Algorithm
- Step1: Initialize the population, the particle length is [penalty factor, the cost of moving the car], and the population size is 50.
- Step2: Initialize the particle fitness, randomly generate the penalty factor and the cost of moving the car, calculate the average parking lot utilization according to the particle state, and calculate the optimal fitness of the population and the fitness of each particle.
- Step3: Update particle velocity.
- Step4: Update particle position.
- Step5: Update the particle individual optimal and global optimal.
- Step6: If the termination condition is met, return to the optimal particle position; otherwise, loop to Step3.
4. Numerical Case Studies
4.1. Problem Description
4.2. Parameter Settings
4.3. Result Analysis and Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Nomenclature
A. Nouns and numbers | |
EV | electric vehicle |
PSO | particle swarm optimization |
EVs | electric vehicles |
AFVs | alternative fuel vehicles |
V2G | vehicle-to-grid |
V2B | vehicle-to-building |
ISO | International Standards Organization |
PSO | particle swarm optimization |
N | the number of simulations |
NT | the total simulation time |
n | the number of EVs leaving at |
B. Function parts | |
there are k cars arriving in the parking lot per hour | |
The average number of vehicles arriving in the parking lot | |
the first small peak | |
the second small peak | |
the distribution of traffic flow in shopping malls in one day | |
the probability of parking an ordinary car in a charging space | |
the cost of an ordinary car parked in an ordinary parking space | |
the cost of ordinary cars parked in a charging space | |
the cost of total parking fee under different parking models | |
parking fees per unit of time in this model | |
the arrival time of the car | |
the leave time of the car | |
the probability of moving out | |
the cost of moving a car from the charging space to other appropriate parking space | |
the cost of penalty | |
the cost without penalty | |
current moment | |
the parking fee that users should pay when they accept penalty | |
the probability that the user enters the charging parking piles to park based on the parking time | |
the illegal parking time | |
the parking fee of non-penalty model | |
the parking fee of fixed-penalty model | |
the fixed-penalty factor | |
the linear dynamic-penalty model | |
the linear dynamic-penalty factor | |
the non-linear dynamic-penalty model | |
, | the non-linear dynamic-penalty factors. |
the objective function | |
the utilization of charging parking spaces | |
the total number of EVs that have been charged | |
the total number of EVs that needed charging | |
s.t | constraints to be satisfied |
the property of the i-th car | |
the status of the i-th normal parking space | |
the status of the i-th charging parking space | |
the charging state of the charging parking space | |
the power of the i-th EV | |
, | Learning factor |
the inertia weight factor | |
Kmax | Maximum number of iterations |
Population size | |
, | random numbers in [0, 1] |
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Model Parameters | Value |
---|---|
Number of ordinary parking spaces | 180 |
Number of charging parking spaces | 20 |
Charging pile rated power | 30 kW |
Electric vehicle battery capacity | 60 kW |
Workday traffic | 1000 |
Workday traffic distribution | |
Weekend traffic | 1200 |
Weekend traffic distribution | |
Parking time distribution |
Regions | Regionl Policies |
---|---|
Beijing Shanghai | Operators set charging service fee on their own since April 2018 No more than 1.6 yuan/kWh. On a trial basis for one year |
Tianjin | Electric bus charge service fee: 06 yuan/kWh. Other electric vehicle charge service fee: 1.0 yuan/kWh |
Jinan Wuhan | charging service fee: 0.60 yuan/kWh charging service fee: 0.95 yuan/kWh |
Hefei | Direct current (DC) fast charge pile service fee 0.90 yuan/kWh. The alternating current (AC) charge pile service fee is 30% up and down in the quasi-price base of DC fast charge pile, about 0.63 yuan/kWh |
Period | Price | Schedule |
---|---|---|
Peak time | 1.044 Yuan/kWh | 10:00–15:00 |
18:00–21:00 | ||
Normal time | 0.6950 Yuan/kWh | 7:00–10:00 |
15:00–18:00 | ||
21:00–23:00 | ||
Valley time | 0.3946 Yuan/kWh | 23:00–7:00 |
Parameter | Symbol | Value |
---|---|---|
Learning factor | 1.49 | |
Learning factor | 1.49 | |
Population size | 50 | |
Maximum number of iterations | Kmax | 100 |
Inertia weight | 0.5 |
Penalty Strategy Model | Parameter |
---|---|
Fixed-penalty model | Qs = 49 |
Linear dynamic-penalty model | Qdl = 42 |
Non-linear dynamic-penalty model | Qdn1 = 43, Qdn2 = 47 |
Orderly Parking Charging Strategy | Parking Fee (Yuan) | Charging Fee (Yuan) | Utilization Rate (%) | Unserved EVs |
---|---|---|---|---|
Non-penalty model | 24546.00 | 3341.82 | 50.677 | 36.13 |
Fixed-penalty model | 26102.00 | 6146.85 | 92.543 | 22.37 |
Dynamic-penalty model | 32213.50 | 4467.86 | 73.351 | 33.54 |
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Shi, R.; Zhang, J.; Su, H.; Liang, Z.; Lee, K.Y. An Economic Penalty Scheme for Optimal Parking Lot Utilization with EV Charging Requirements. Energies 2020, 13, 6155. https://doi.org/10.3390/en13226155
Shi R, Zhang J, Su H, Liang Z, Lee KY. An Economic Penalty Scheme for Optimal Parking Lot Utilization with EV Charging Requirements. Energies. 2020; 13(22):6155. https://doi.org/10.3390/en13226155
Chicago/Turabian StyleShi, Ruifeng, Jie Zhang, Hao Su, Zihang Liang, and Kwang Y. Lee. 2020. "An Economic Penalty Scheme for Optimal Parking Lot Utilization with EV Charging Requirements" Energies 13, no. 22: 6155. https://doi.org/10.3390/en13226155
APA StyleShi, R., Zhang, J., Su, H., Liang, Z., & Lee, K. Y. (2020). An Economic Penalty Scheme for Optimal Parking Lot Utilization with EV Charging Requirements. Energies, 13(22), 6155. https://doi.org/10.3390/en13226155