Practical Grid-Based Spatial Estimation of Number of Electric Vehicles and Public Chargers for Country-Level Planning with Utilization of GIS Data
Abstract
:1. Introduction
- The number of EVs was estimated using the subdistrict-level vehicle registration information because it was the highest data resolution that we could acquire due to the constraint on data privacy regulation.
- The road GIS data was utilized to provide more reasonable results for small-scale specific areas since the data would represent the actual vehicle usage, and the vehicle registration information itself could only provide the overall vehicle density for a vast area. Therefore, the estimated number of EVs based on the overall vehicle density alone would not be appropriate for some rugged or inaccessible areas such as forest and mountain areas.
- Grids with fixed-sized square cells were created for small-scale spatial applications use in mind, making forecast results more practically useful in various works. Additionally, not only would it help policymakers to easily understand and visualize, but the flexibility in setting the grid size according to the specific application also reduced the unnecessary computational burden, particularly in large-scale implementation.
- The estimation of energy consumption of EVs was determined by three factors: (1) the number of EVs, (2) the characteristics of EVs, and (3) the driving behavior of EV users. Each type of EV would have different details for each of the factors; for example, buses and trucks have significantly higher energy consumption rates and average daily mileage than others.
- The probability of charging locations and plug-in time was also taken into account because it would affect the public charger demand. The personal EVs tend to be recharged in residential premises after work in the evening whereas, in EVs such as taxis, recharging can occur in charging stations at any time of the day.
- Under the assumption that charging stations should be connected to the nearest substations, a Voronoi diagram was proposed to analyze the MW loading of each substation. Therefore, the application of Voronoi is very beneficial for the planning of electrical infrastructure reinforcement to support the mass deployment of EVs in the future.
2. Literature Review
3. Grid-Based Electric Vehicles Estimation
- Target penetration is an overall goal for the number of EVs in the future. It can be either a fixed number of EVs or a percentage of penetration versus a cumulative number of vehicles, which is dependent on the target estimation scenario.
- The cumulative number of vehicles in one particular area is a statistical data record of the number of different types of vehicles in that area since the estimation of the number of EVs is proportional to vehicles in that area while reflecting the features of those areas in different characteristics. Different areas have different types of vehicle usage; for example, rural areas or island areas may have a higher proportion of motorcycle use than cars compared to urban areas.
- The vehicle registration information should be organized according to acquirable boundary GIS data as the vehicle registration information is easier to manipulate. Suppose the vehicle registration information is inconsistent with the boundary, such as in the case of new registration zoning. In that case, the total vehicles within the boundary could be reevaluated in such a way similar to the estimation of the number of EVs in the cells.
- The road GIS data obtained from OpenStreetMap is country-level data. The road data should then be at least divided into province-level data. Removing the unassociated road data from the target estimation area can reduce the computation burden in the process of determining which roads are in the target area.
- Only the road that crosses over the subdistrict boundary needs to be dissected into multiple road segments. The actual road is simply not a straight line, and consists of a lot of small straight roads. Instead of checking all of those small straight roads, the bounding box of road GIS data can be used by overlaying them with the subdistrict boundary to quickly determine which road is likely to cross over the subdistrict and needs to be dissected.
4. Charging Demand and Utilizing Method
4.1. Energy Consumption Estimation
- Number of EVs: of course, as more and more EVs are adopted, the demand for electric energy must also increase accordingly.
- Characteristics of EVs: heavy-duty vehicles tend to have more energy consumption than light-duty ones [38]. Improving EV technology with high energy efficiency and low energy consumption rate will reduce the demand for electrical energy.
- External factors: there are numerous factors that affect the energy consumption rate of EVs [41], including weather conditions, traffic jams, terrains, etc.
4.2. Power Demand Estimation
- Energy consumption: when there is high energy consumption for EVs, there must be a high-power demand to support such a daily energy use.
- Energy management: uncontrolled charging can put a huge burden on the grid, even during off-peak times. If EV users coincidentally charge their EVs, especially when using faster chargers, this uncontrolled charging may result in a very high demand for electricity in a very short period of time. To mitigate this negative effect, energy management that integrates chargers with energy storage offers an attractive solution for peak demand reduction.
- Charging behavior: each EV user has different driving purposes, which will result in different charging behaviors as well. For example, EV users rarely need to rely on public fast-charging services for daily short-distance commuting.
4.3. Recommended Number of Public Chargers
- Charging demand: the number of chargers must be sufficient to support charging needs in public areas.
- Charger power rating: the higher the power rating, the less charging time and, therefore, more services for EV users. However, the cost-effectiveness and the impact on the grid become issues that must be addressed for high-power charger installations.
- Utilization: charging station investors would like to have a high utilization rate. If the utilization rate of the station is low, the likelihood of queuing for the service is reduced. Therefore, the determination of the utilization rate is subjective and depends primarily on the characteristic of the area.
4.4. Substation Load Analysis with Voronoi Diagram
5. Results and Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Vehicle–road density of subdistrict | |
Expected number of EVs in subdistrict | |
Length of road in subdistrict | |
Weight of road in subdistrict | |
Total number of roads in subdistrict | |
Vehicle–area density of subdistrict | |
Area of subdistrict | |
Total estimated number of EVs in cell | |
Estimated number of EVs of subdistricts with road connection in cell | |
Estimated number of EVs of subdistricts without road connection in cell | |
Vehicle–road density of subdistrict within area of cell | |
Length of road in subdistrict within area of cell | |
Weight of road in subdistrict within area of cell | |
Total number of subdistricts with road connection within area of cell | |
Total number of roads in subdistricts with road connection within area of cell | |
Vehicle–area density of subdistrict within area of cell | |
Intersect area of subdistrict and cell | |
Total number of subdistricts without road connection within area of cell | |
Total energy consumption | |
Number of EVs | |
Average vehicle travel distance per day | |
Average vehicle energy consumption per distance | |
Recommended number of public EV chargers | |
Peak power demand of public charging station | |
Total energy consumption of public charging station | |
Charging power of EV charger | |
Utilization factor | |
Charging station service hours |
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Vehicle Type | Proportion of Number of Vehicles (%) | ||||
---|---|---|---|---|---|
MEA | Central PEA | North PEA | Northeast PEA | South PEA | |
Passenger car (≤7 seats) | 47.73 | 12.84 | 13.58 | 14.06 | 11.79 |
Passenger car (>7 seats) | 52.61 | 11.90 | 12.96 | 13.92 | 8.61 |
Pickup and van | 21.68 | 16.95 | 21.36 | 25.13 | 14.88 |
Taxi | 89.71 | 0.64 | 0.88 | 1.34 | 7.43 |
Motorcycle | 18.85 | 18.78 | 21.57 | 23.41 | 17.39 |
Motorcycle taxi | 66.35 | 22.36 | 2.95 | 2.15 | 6.19 |
Bus | 30.57 | 20.27 | 12.63 | 15.88 | 20.65 |
Truck | 17.35 | 27.52 | 17.83 | 24.94 | 12.35 |
Vehicle Type | (km) | (Wh/km) |
---|---|---|
Passenger car (≤7 seats) | 50 | 175 |
Passenger car (>7 seats) | 50 | 275 |
Pickup and van | 50 | 275 |
Motorcycle | 20 | 60 |
Taxi | 300 | 175 |
Motorcycle taxi | 120 | 60 |
Bus | 60 | 1300 |
Truck | 360 | 1000 |
Vehicle Type | Energy Consumption (GWh) | |||||
---|---|---|---|---|---|---|
Overall | MEA | Central PEA | North PEA | Northeast PEA | South PEA | |
Passenger car (≤7 seats) | 10.597 | 5.058 | 1.361 | 1.439 | 1.490 | 1.249 |
Passenger car (>7 seats) | 0.674 | 0.355 | 0.080 | 0.087 | 0.094 | 0.058 |
Pickup and van | 10.715 | 2.323 | 1.816 | 2.289 | 2.693 | 1.594 |
Motorcycle | 3.812 | 0.719 | 0.716 | 0.822 | 0.893 | 0.663 |
Taxi | 0.558 | 0.501 | 0.004 | 0.005 | 0.008 | 0.041 |
Motorcycle taxi | 0.167 | 0.111 | 0.037 | 0.005 | 0.004 | 0.010 |
Bus | 1.304 | 0.399 | 0.264 | 0.165 | 0.207 | 0.269 |
Truck | 51.583 | 8.949 | 14.197 | 9.197 | 12.867 | 6.373 |
Total | 79.409 | 18.412 | 18.475 | 14.010 | 18.254 | 10.259 |
Vehicle Type | Number of Public Chargers (Unit) | |||||
---|---|---|---|---|---|---|
Overall | MEA | Central PEA | North PEA | Northeast PEA | South PEA | |
Passenger car (≤7 seats) | 4017 | 1916 | 516 | 546 | 565 | 474 |
Passenger car (>7 seats) | 258 | 135 | 31 | 34 | 36 | 22 |
Pickup and van | 4060 | 880 | 689 | 867 | 1020 | 604 |
Taxi | 4230 | 3792 | 28 | 38 | 57 | 315 |
Total | 12,565 | 6723 | 1264 | 1485 | 1678 | 1415 |
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Prakobkaew, P.; Sirisumrannukul, S. Practical Grid-Based Spatial Estimation of Number of Electric Vehicles and Public Chargers for Country-Level Planning with Utilization of GIS Data. Energies 2022, 15, 3859. https://doi.org/10.3390/en15113859
Prakobkaew P, Sirisumrannukul S. Practical Grid-Based Spatial Estimation of Number of Electric Vehicles and Public Chargers for Country-Level Planning with Utilization of GIS Data. Energies. 2022; 15(11):3859. https://doi.org/10.3390/en15113859
Chicago/Turabian StylePrakobkaew, Pokpong, and Somporn Sirisumrannukul. 2022. "Practical Grid-Based Spatial Estimation of Number of Electric Vehicles and Public Chargers for Country-Level Planning with Utilization of GIS Data" Energies 15, no. 11: 3859. https://doi.org/10.3390/en15113859
APA StylePrakobkaew, P., & Sirisumrannukul, S. (2022). Practical Grid-Based Spatial Estimation of Number of Electric Vehicles and Public Chargers for Country-Level Planning with Utilization of GIS Data. Energies, 15(11), 3859. https://doi.org/10.3390/en15113859