An Evaluation Framework for the Planning of Electric Car-Sharing Systems: A Combination Model of AHP-CBA-VD
Abstract
:1. Introduction
2. Literature Review
2.1. Evaluation of Car-sharing (CS)
2.2. Planning the CS
3. Identification of Planning Evaluation Criteria
3.1. Construction of CS Stations (CSS)
3.2. Routine Inspection (RI)
3.3. Vehicle Usability and Relocation Management (VURM)
3.4. Maintenance and Replacement of Stations (MR)
4. Research Methodology
4.1. Analytic Hierarchy Process (AHP)
4.1.1. Construction of the Hierarchical Structure
4.1.2. Formulation of Pair-Wise Comparison Matrix
4.1.3. Calculation of Eigen Value and Eigen Vector
4.1.4. Determination of Consistency Ration (CR)
4.1.5. Ranking the Alternatives
4.2. Cost-benefit Analysis (CBA)
4.2.1. Identifying Sub-Factors Based on CBA
4.2.2. Constructing the Questionnaire Based on CBA
4.3. Voronoi Diagram
4.3.1. Determining the Generator Point Sets
4.3.2. Analyzing the Demand Characteristics for the ECSS
4.3.3. Analyzing the Service Areas
4.3.4. Estimating the Capacity of the ECS
5. Case Study
5.1. Study Area
5.2. Data Collection
5.3. Results and Analysis
5.3.1. Criteria Hierarchy Results
5.3.2. Results of Overall Ranking
6. Discussion and Conclusions
6.1. Discussion
- According to the experts’ assessment, the score of each question under VURM was higher than that of the other questions (Table 3). VURM is considered to be the greatest criterion influencing the planning performance of ECSS in China (Table 6). This means that ECS companies must pay more attention in controlling the relocation costs by reducing the relocation distance and relocation staff. Meanwhile, this assessment result shows that the convenience of renting and returning shared vehicles means the most for users and the score for this question was the highest. This demonstrates that the value co-creation between the CS companies and users is essential in the ECSS, in other words, the planning performance improvement of the ECSS must be based on the satisfaction of the consumers’ travel demand. [74]. Operators may have to consider how to increase the convenience through good planning methods such as increasing the reservation time (time between requesting and picking up a vehicle) [75], adequate parking spaces [63], longer business hours [74], or the application of intelligent networking technology. The development of CS/ECSS in China greatly relies on government support [68]. It is essential for the government to take appropriate policies to promote the takeoff of CS/ECSS. The results show that policies such as appropriately allocating parking resources to CS/ECSS operators are key for improving the attractiveness of CS/ECSS.
- CSS and RI were reported as the second highest factors influencing the planning (Table 6). The importance of CSS on the strategic planning has already been identified in prior studies as described above. For CS companies, station attributes such as the coverage area of each station and the corresponding density and fleet size should be calculated regarding the demand forecast so that use efficiency and construction costs can be balanced. The location of stations is what consumers emphasize, and its choice should consider the built environment.
- RI is a negligible but important factor, which is directly related to user satisfaction. How to deal with facility failure and equipment occupancy more effectively and efficiently is what CS operators must focus on. In fact, for CS operators, intelligent and information technology should be integrated to improve the supervision efficiency, and achieve the coordination of vehicles, charging piles, parking spaces, and power grids.
- MR was reported as the least important factor (Table 6). This may be due to the operation phase of ECS. After all, most of the ECS companies in China are still in the early stage of development.
- According to the evaluation results, the JA district of EVCARD performed better than the CN district (Table 10). The main reasons were the RI and VURM. However, the assessment value of the JD district was lower than the CN district in CSS and MR. The main reason may be due to the geographic location. The JA district is much closer to the urban center, which may cause difficulties in distributing station networks and controlling the relevant costs. In fact, the stations of EVCARD are distributed more in the outskirts of the city rather than in urban centers. How to improve the construction planning of ECSS in urban centers, therefore, should be seriously considered during future development.
6.2. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
No. | Station Name | Address (CN District) | Parking Number | Type |
1 | Guoxue Yanxiu Center | No.106, Jinbang Road | 9 | B |
2 | Shanghai International Trade Center | No. 2201, West Yan’an Road | 3 | C |
3 | Shanghai Second Construction Headquarters | No. 768, Changning Road | 3 | B |
4 | Shanghai Institute of Ceramics Chinese Academy of Sciences | No. 1295, Dingxi Road | 3 | B |
5 | Linkong Economic Park Public Security Police Station | No. 23, Tongxie Road | 2 | C |
6 | Grand Millennium Shanghai Hongqiao | No. 2588, West Yan’an Road | 3 | C |
7 | L’Avenue | No. 99, Xianxia Road | 8 | C |
8 | Shangjie Loft Changning Assembly Hall | No. 546, Changning Road | 3 | C |
9 | Renaissance Yangtze Shanghai Hotel | No. 2099, West Yan’an Road | 3 | C |
10 | New Town Mansion | No. 55, Loushanguan Road | 3 | C |
11 | Xinhongqiao Plaza Underground Garage | No. 48, Xingyi Road | 4 | C |
12 | Xinhongqiao Garden Parking Lot | Yan’an Elevated Road Entrance | 20 | C |
13 | Songhong Road Station P + R Parking Lot | 631 Long, Jinzhong Road | 10 | C |
14 | Green Convention Center | No. 111, Xiehe Road | 2 | C |
15 | Greenland Residence | No. 193, Xiehe Road | 6 | C |
16 | Sheraton Shanghai Hongqiao Hotel | No. 5, South Zunyi Road | 5 | C |
17 | Hongqiao International Science & Technology Square | 288 Long, Tongxie Road | 4 | C |
18 | Yinglong Mansion | No. 1358, West Yan’an Road | 5 | C |
No. | Station Name | Address (JA District) | Parking Number | Type |
1 | 5i CENTER (Feimalv Headquarters) | No. 538, Hutai Branch Road | 12 | C |
2 | Shanghai Railway Station | No. 760, Datong Road | 25 | A |
3 | CITIC Pacific Plaza | No. 1168, West Nanjing Road | 3 | C |
4 | Shanghai Shuhao Automobile Service Co. Ltd | No. 1, Sanquan Road | 4 | C |
5 | Wheelock Square | No. 1717, West Nanjing Road | 4 | C |
6 | Tongji University Hubei Campus | No. 727, North Zhongshan Road | 4 | B |
7 | Hedian Originality Park | No. 108, West Jiangchang Road | 5 | B |
8 | Daning Central Square 2 | No. 700, Wanrong Road | 2 | C |
9 | Daning International Commercial Plaza | No. 1878-2008, Gonghexin Road | 3 | C |
10 | Baotong Road Parking lot | No. 1, Baotong Road | 4 | C |
11 | Shanghai DOBE Cultural and Creative Industry Development Co. Ltd. | No. 602, Pengjiang Road | 4 | C |
12 | Xinhe Middle School | No. 128, Yuanping Road | 4 | B |
13 | European City | No. 437-1, East Luochuan Road | 3 | C |
14 | Shangtex Hotel | No. 670, North Shanxi Road | 1 | C |
15 | Merry Hotel Shanghai | No. 396, West Yan’an Road | 5 | C |
16 | Yuncheng Road Parking Lot | No. 625, Yuncheng Road | 4 | C |
17 | Metropolo Jinjiang Hotels | No. 3033, Changzhong Road | 7 | C |
18 | Changxing Road Parking Lot | Intersection of Jingjiang Road and Changxing Road | 2 | C |
19 | Jing’an Hilton Hotel | No. 250, Huashan Road | 5 | C |
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Criteria | Definition | Source |
---|---|---|
Construction of Stations | Related to location network, size and infrastructure of stations. | Brandstätter et al. [55], Deveci et al. [51]. |
Routine Inspection | Related to the routine check on equipment fault and parking occupancy. | Expert Interview |
Vehicle Usability & Relocation Management | Related to the flexibility of picking up and returning vehicles and vehicle relocation. | Boyaci et al. [57,58], Gambella et al. [13]. |
Maintenance & Replacement of Stations | Related to the maintenance and replacement of car-sharing stations. | Fassi et al. [59]. |
Criteria | Sub-Factors | Definition | Type | Source |
---|---|---|---|---|
CSS | Number of stations | The total number of ECS stations. | Cost/benefit | Rickenberg et al. [60], Boyaci et al. [57] |
Construction costs | The construction costs per station including lease cost, infrastructure cost, and vehicle purchase cost. | Cost | Mounce and Nelson [61] | |
Coverage rate | The ratio of coverage area of stations to the total area of districts. | Benefit | Brandstätter et al. [55], Erbaş et al. [62] | |
RI | Patrol distance | The total patrol distance between different stations. | Cost | Expert Interviews |
Patrol batches | Patrol frequency within a certain period. | Benefit | Expert Interviews | |
Monitoring equipment | Total installation quantity and technical level of the monitoring equipment. | Cost/benefit | Expert Interviews | |
VURM | Distance between picking and returning EVs | Average radius value between reachable stations. | Benefit | Correia et al. [52], Prieto et al. [63] |
Number ratio of stations to EVs | The number of stations to the number of EVs. | Benefit | Kortum et al. [64], Chen et al. [65] | |
Relocation distance | Average radius value from parking station to destination station. | Cost | Park et al. [9] | |
MR | Maintenance frequency | The frequency of maintaining stations within a certain period. | Benefit | Fassi et al. [59] |
Maintenance costs | Average maintenance costs of all stations. | Cost | Jorge and Correia [15] | |
Replacement period | The average period that is used to shut down and open up stations. | Benefit | Stillwater et al. [66] | |
Replacement costs | Average replacement costs. | Cost | Fassi et al. [59] |
Criteria | Questions | Scores | Average Scores |
---|---|---|---|
CS | (1) Do the charging and parking facilities have a great impact on the operation costs of ECSS? | 7.5 | 7.800 |
(2) Do the geographical locations of ECSS matter a lot to consumers’ benefits? | 8.8 | ||
(3) Does the intensity of ECSS matter a lot to consumers’ benefits? | 7.1 | ||
RI | (1) Do the energy-related fault handling capabilities of ECSS matter a lot to consumers’ benefits? | 8.0 | 7.633 |
(2) Does the charging monitoring capability matter a lot to consumers’ benefits? | 6.3 | ||
(3) Does the occupancy of parking and charging facilities have a great impact on the consumers’ benefits? | 8.6 | ||
(4) Do the numbers of inspectors and monitoring facilities have great impact on the operation cost of ECSS? | 7.6 | ||
VURM | (1) Does the convenience of picking up and returning vehicles matter a lot to consumers’ benefits? | 9.4 | 9.300 |
(2) Does the number of vehicles and available capacity of batteries matter a lot to consumers’ benefits? | 9.2 | ||
(3) Does the relocation manage have great impact on the operation cost of ECSS? | 9.3 | ||
MR | (1) Does the shut-down and repair of stations have a great impact on the operation costs of ECSS? | 7.0 | 6.200 |
(2) Does the repair and maintenance of stations matter a lot to consumers’ benefits? | 6.2 | ||
(3) Does the stable and continuous operation of stations matter a lot to consumers’ benefits? | 5.4 |
Designation | Actor Group | |
---|---|---|
Expert 1 | General Manager | CS companies |
Expert 2 | Manager | CS companies |
Expert 3 | Chief Engineer | CS companies |
Expert 4 | Manager | CS companies |
Expert 5 | General Manager | CS companies |
Expert 6 | Deputy Director | Government |
Expert 7 | Assistant Director | Government |
Expert 8 | Professor | Academic |
Expert 9 | Research Professorship | Academic |
Expert 10 | Associate professor | Academic |
Criteria | CSS | RI | VURM | MR |
---|---|---|---|---|
CSS | 0.000 | 0.167 | −1.500 | 1.600 |
RI | - | 0.000 | −1.667 | 1.433 |
VURM | - | - | 0.000 | 3.100 |
MR | - | - | - | 0.000 |
Criteria | CSS | RI | VURM | MR |
---|---|---|---|---|
CSS | 1 | 1 | 1/5 | 5 |
RI | 1 | 1 | 1/5 | 5 |
VURM | 5 | 5 | 1 | 9 |
MR | 1/5 | 1/5 | 1/9 | 1 |
W | W’ | λmax | CI | CR | |
---|---|---|---|---|---|
CSS | 0.165 | 0.68 | 4.140 | 0.047 | 0.052 |
RI | 0.165 | 0.68 | |||
VURM | 0.625 | 2.68 | |||
MR | 0.045 | 0.18 |
CSS | CN District | JA District | |
CN District | 1 | 3 | |
JA District | 1/3 | 1 | |
Normalized | |||
CSS | CN District | JA District | W |
CN District | 0.75 | 0.75 | 0.75 |
JA District | 0.25 | 0.25 | 0.25 |
RI | CN District | JA District | |
CN District | 1 | 1/3 | |
JA District | 3 | 1 | |
Normalized | |||
RI | CN District | JA District | W |
CN District | 0.25 | 0.25 | 0.25 |
JA District | 0.75 | 0.75 | 0.75 |
VURM | CN District | JA District | |
CN District | 1 | 1/3 | |
JA District | 3 | 1 | |
Normalized | |||
VURM | CN District | JA District | W |
CN District | 0.25 | 0.25 | 0.25 |
JA District | 0.75 | 0.75 | 0.75 |
MR | CN District | JA District | |
CN District | 1 | 5 | |
JA District | 1/5 | 1 | |
Normalized | |||
MR | CN District | JA District | W |
CN District | 0.83 | 0.83 | 0.83 |
JA District | 0.17 | 0.17 | 0.17 |
Criteria versus Goal | Alternative | A | B | C | |
---|---|---|---|---|---|
CSS | 0.165 | CN District JA District | 0.75 × 0.165 = 0.124 0.25 × 0.165 = 0.041 | ||
RI | 0.165 | CN District JA District | 0.25 × 0.165 = 0.041 0.75 × 0.165 = 0.124 | ||
VURM | 0.625 | CN District JA District | 0.25 × 0.625 = 0.156 0.75 × 0.625 = 0.469 | ||
MR | 0.045 | CN District JA District | 0.83 × 0.045 = 0.037 0.17 × 0.045 = 0.008 |
Priority with Respect to | ||||||
---|---|---|---|---|---|---|
ECSS | CSS | RI | VURM | MR | Goal | Rank |
CN District | 0.124 | 0.041 | 0.156 | 0.037 | 0.358 | 2 |
JA District | 0.041 | 0.124 | 0.469 | 0.008 | 0.642 | 1 |
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Xue, Y.; Zhang, Y.; Chen, Y. An Evaluation Framework for the Planning of Electric Car-Sharing Systems: A Combination Model of AHP-CBA-VD. Sustainability 2019, 11, 5627. https://doi.org/10.3390/su11205627
Xue Y, Zhang Y, Chen Y. An Evaluation Framework for the Planning of Electric Car-Sharing Systems: A Combination Model of AHP-CBA-VD. Sustainability. 2019; 11(20):5627. https://doi.org/10.3390/su11205627
Chicago/Turabian StyleXue, Yixi, Yi Zhang, and Yi Chen. 2019. "An Evaluation Framework for the Planning of Electric Car-Sharing Systems: A Combination Model of AHP-CBA-VD" Sustainability 11, no. 20: 5627. https://doi.org/10.3390/su11205627
APA StyleXue, Y., Zhang, Y., & Chen, Y. (2019). An Evaluation Framework for the Planning of Electric Car-Sharing Systems: A Combination Model of AHP-CBA-VD. Sustainability, 11(20), 5627. https://doi.org/10.3390/su11205627