Spatial Differentiation of Multi-Airport Logistics in Four Urban Agglomerations in China
Abstract
:1. Introduction
2. Literature Review
3. Methods and Data
3.1. Initial Evaluation Index System
3.2. Case Selection
3.3. Data Collection and Analysis
3.3.1. Airport Logistics Resource Data Analysis
- (1)
- The higher the number of aircraft take-offs and landings, the better the airport logistics resources and the higher the development level in the MAS of this urban agglomeration.
- (2)
- If there are more hubs within the National Logistics Hub City in an urban agglomeration, the country pays more attention to this region, and its resources are richer.
- (3)
- The greater the number of customs supervision sites in airports, the higher the development level. If there are more customs supervision sites in an airport location in urban agglomerations, business between them might become more cooperative.
- (4)
- The better an airport’s accessibility, the better its logistics resources.
- (5)
- The closer the concentration of the Herfindahl–Hirschman Index (HHI), , the better, but it is not the average ( is the total number of airports in an urban agglomeration).
- (6)
- The greater the number of airports all-cargo routes in the urban agglomeration, the better the development level.
3.3.2. Airport Logistics Service Chain Data Analysis
- (1)
- The shorter the average import customs clearance time, the higher the efficiency of customs and the more conducive it is to the development of airport logistics.
- (2)
- The larger the size of the airport logistics park, the more beneficial it is for the development of airport logistics.
- (3)
- The number of freight carriers operating in more than two airports is directly proportional to the development level of airport logistics. This is more conducive to matching capacity from a global perspective, and vicious competition can be avoided among airports in the region to a certain extent.
- (4)
- If UPS and other integrators have transhipment centers, it shows that air carriers are developing well, which is conducive to air logistics development. The greater the number of top 10 global freight forwarders in the urban agglomeration, the more attractive the airports in the region.
- (5)
- The greater the investment and general public budget expenditure (science and technology) of the CAAC for large- and medium-sized projects of airport fixed assets in that year, the more attention paid to airport logistics, which is conducive to the development of airport logistics.
3.3.3. Airport Logistics Market Demand Data Analysis
- (1)
- The greater the air cargo and mail throughput volume, the stronger the air logistics market demand in this region. The growth rate reflects the quality of market demand.
- (2)
- The larger the per capita GDP, the greater the consumption potential and the stronger the market demand for airport logistics.
- (3)
- With e-commerce development, the total number of online retail sales of goods represents the development degree of e-commerce in the region. The higher the value of online retail sales goods, the greater the demand for e-commerce in the region and the greater the demand for the airport logistics market.
- (4)
- The greater the total import and export trade, the greater the demand for the airport logistics market.
3.4. Final Evaluation Index System
3.5. Evaluation Method Selection
4. Results and Discussion
4.1. Overall Spatial Differentiation Characteristics
4.2. Differentiation Characteristics of Airport Logistics Resources
- (1)
- HHI in GHM decreased year by year, and each airport had a clear position. MLS in GHM gradually developed from “competition” to “competition and cooperation”. Overall competitiveness improved. Hong Kong, Guangzhou, and Shenzhen all have international hub airports. Guangzhou Airport and Shenzhen Airport are continually expanding to enhance the supply capacity of airport logistics resources.
- (2)
- HHI in YRD fluctuated, and competition was far greater than cooperation. Shanghai is the core city in YRD. There are two international hubs in Shanghai. The advantages of airport logistics resources in Shanghai are outstanding. The airports in Nanjing, Hangzhou, and Ningbo have strong development momentum. They are attracting many logistics resources, and their overall development is uneven.
- (3)
- The overall construction of C–C airports was late. The number of airports in the early stage was small. With the construction of new airports and the suspension of old airports, market concentration in C–C has been unstable. In the later period, with an increase in the number of airports, market concentration tended to be stable. The airports in Chengdu and Chongqing are in a monopoly position in C–C. HHI was above 0.6 over the last 20 years.
- (4)
- In BTH, the Beijing Capital Airport showed a strong siphon effect. It was in a monopoly position in MLS development. In addition, MLS was seriously insufficient in Tianjin and Hebei. Thus, MLS resources in BTH were uneven, with HHI hovering around 0.8 over the last 10 years. Beijing Daxing International Airport opened to traffic in 2019, aiming to build itself into a freight hub in Northeast Asia. It is bound to bring changes in the concentration of BTH. At the beginning of 2020, however, with the spread of COVID-19, cargo and mail throughput at Beijing Capital Airport and Tianjin Airport dropped sharply. However, air cargo at Shijiazhuang Airport went against the trend. Meanwhile, cargo and mail throughput at Daxing Airport was only 78,000 tons, which delayed the regulation of the unbalanced development of MLS in BTH.
4.3. Differentiation Characteristics of the Airport Logistics Service Chain
4.4. Differentiation Characteristics of Airport Logistics Market Demand
5. Conclusions and Suggestions for High-Quality Development
- (1)
- The government should design the top-level logic of MLS to cooperate with each airport in the urban agglomeration. Each airport should clarify its strategy and develop differently.
- (2)
- The government should pay attention to logistics resources and learn from GHM. This can include improving the accessibility of the air cargo network, enriching air logistics resources, opening all-cargo routes, and increasing the number of access points. The government should support cargo airlines in cooperating with e-commerce and express delivery companies, promote the development of cross-border e-commerce businesses, increase the cargo capacity of all-cargo aircraft, and improve their utilization. The government should set up different types of designated supervision sites to promote intensive supervision by customs.
- (3)
- The government should learn from YRD and emphasize the airport logistics service chain. Considering the status quo in airport logistics services, the government should optimize the infrastructure and functional facilities of airport cargo terminals to improve the efficiency of customs clearance. The government should also promote innovation in freight carrier modes, introduce airlines with their own aircraft, enhance the comprehensive service capability of airport logistics, and attract international freight-forwarding companies to relocate there.
- (4)
- The government should try to expand market demand. In this aspect, C–C has potential. The government should focus on stimulating an increase in the airport logistics demand market and generating higher airport logistics demand. The government should seize the opportunity to increase international freight demand in the global context of COVID-19. The government should also expand its opening up to the outside world. This could help create a better business environment that would adapt to China’s current development pattern.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Object | System | Indicators | Symbols |
---|---|---|---|
Development level of MLSs | Airport logistics resources | Aircraft take-off and landing (sorties) | X11 |
Number of airport-type national logistics hubs (pieces) | X12 | ||
Number of designated supervision sites in airports (pieces) | X13 | ||
Number of airport-accessible points in the urban agglomeration | X14 | ||
Cargo and mail throughput concentration index | X15 | ||
Total number of airport all-cargo routes in the urban agglomeration (articles) | X16 | ||
Airport logistics service chain | Average import clearance time (hours) | X21 | |
Area of airport logistics park (square kilometers) | X22 | ||
Number of freight carriers operating in more than two airports (units) | X23 | ||
Number of integrated carrier transshipment centers (number) | X24 | ||
Number of global top 10 freight-forwarding enterprises (number) | X25 | ||
Amount of investment in large- and medium-sized projects of airport fixed assets (RMB 10,000) | X26 | ||
General public budget expenditure on science and technology (RMB 100 million) | X27 | ||
Airport logistics market demand | Air cargo and mail throughput volume (10,000 tons) | X31 | |
Growth rate of air cargo and mail throughput (%) | X32 | ||
Per capita gross domestic product (GDP) (RMB) | X33 | ||
Total online retail sales of physical goods (RMB 100 million) | X34 | ||
Total import and export trade (USD 100 million) | X35 |
Urban Agglomeration | Cities within the Urban Agglomeration | Airport Codes |
---|---|---|
Beijing–Tianjin–Hebei (BTH) | Beijing, Tianjin, Zhangjiakou, Chengde, Qinhuangdao, Tangshan, Zhangzhou, Hengshui, Langfang, Baoding, Shijiazhuang, Xingtai, Handan, and Anyang | PEK, PKX, NAY, HDG, BPE, SJW, TVS, TSN, ZQZ, CDE |
Yangtze River Delta (YRD) | Shanghai, Nanjing, Wuxi, Changzhou, Suzhou, Nantong, Yancheng, Yangzhou, Zhenjiang, Taizhou, Hangzhou, Ningbo, Jiaxing, Huzhou, Shaoxing, Jinhua, Zhoushan, Taizhou, Hefei, Wuhu, Maanshan, Tongling, Anqing, Chuzhou, Chizhou and Xuancheng | PVG, SHA, NKG, HGH, NGB, WUX, CZX, NTG, YNZ, YTY, HSN, HYN, HFE, AQG, JUH |
Guangdong–Hong Kong–Macau Greater Bay Area (GHM) | Hong Kong Special Administrative Region, Macao Special Administrative Region, Guangzhou, Shenzhen, Zhuhai, Foshan, Huizhou, Dongguan, Zhongshan, Jiangmen, and Zhaoqing | HKG, MFM, CAN, SZX, ZUH, FUO, HUZ |
Chengdu–Chongqing Double Cities Economic Circle (C–C) | Chongqing, Chengdu, Zigong, Zhangzhou, Deyang, Mianyang, Suining, Neijiang, Leshan, Nanchong, Meishan, Yibin, Guang’an, Dazhou, Ya’an, and Ziyang | CTU, CKG, MIG, NAO, YBP, WXN, DAX, LZO, JIQ, WSK |
Indicator | BTH | YRD | GHM | C–C | Source |
---|---|---|---|---|---|
X11 | 1,009,989 | 1,637,269 | 1,473,731 | 957,026 | Statistical Bulletin of Civil Aviation Airport Production in 2020 |
X12 | 3 | 5 | 2 | 2 | National Development and Reform Commission, Ministry of Transport in China |
X13 | 9 | 22 | 8 | 9 | Website of the China Customs |
X14 | 311 | 282 | 306 | 233 | OAG Database |
X15 | 0.7591 | 0.4525 | 0.4323 | 0.5060 | Calculated according to Formula (13) using X31 of each airport |
X16 | 14 | 43 | 123 | 4 | Statistical Yearbook of Civil Aviation of China 2019 |
X21 | 26.9 | 37.07 | 7.33 | 51.61 | Websites of airport customs, city governments and airports |
X22 | 6.85 | 3.405 | 6.09 | 5.55 | |
X23 | 32 | 45 | 43 | 38 | |
X24 | 0 | 3 | 3 | 0 | 2019 annual reports of UPS, FedEx, and DHL |
X25 | 9 | 10 | 10 | 9 | Transport Topics 2019 |
X26 | 261,089 | 2,744,587 | 434,107 | 1,772,420 | Statistical Yearbook of Civil Aviation of China 2019 |
X27 | 585.2767 | 1069.39792 | 1282.8897 | 143.6714 | China Urban Statistical Yearbook 2020 |
X31 | 226.01 | 557.18 | 811.47 | 110.73 | Statistical Bulletin of Civil Aviation Airport Production in 2020 |
X32 | −6.10 | −0.15 | −2.51 | 3.88 | |
X33 | 73,582.38 | 124,631.25 | 159,625.52 | 64,652.49 | China Urban Statistical Yearbook 2020 |
X34 | 10,543.78 | 27,530.383 | 20,028.5244 | 3240.5 | |
X35 | 5808.54 | 11,195.28 | 17,487.92 | 1820.3 |
Object | System Layer | Indicator Layer |
---|---|---|
Development level of the MLS | Airport logistics resources | Aircraft take-off and landing sorties |
Number of designated supervision sites in airports | ||
Number of airport-accessible points in the urban agglomeration | ||
Cargo and mail throughput concentration index | ||
Total number of airport all-cargo routes in the urban agglomeration | ||
Airport logistics service chain | Average import clearance time | |
Area of airport logistics parks | ||
Number of freight carriers operating in >2 airports | ||
Number of global top 10 freight-forwarding enterprises | ||
Amount of investment in large- and medium-sized projects of airport fixed assets | ||
Airport logistics market demand | Growth rate of air cargo and mail throughput | |
Total online retail sales of physical goods | ||
Total import and export trade |
No. | Urban Agglomeration | Overall Level | Airport Logistics Resources | Airport Logistics Service Chain | Airport Logistics Market Demand |
---|---|---|---|---|---|
1 | GHM | 0.7624 | 0.9431 | 0.5735 | 0.8180 |
2 | YRD | 0.6932 | 0.6296 | 0.6887 | 0.7812 |
3 | C–C | 0.3832 | 0.3207 | 0.5634 | 0.1900 |
4 | BTH | 0.3640 | 0.3466 | 0.3889 | 0.3487 |
Urban Agglomeration | HHI of 2022 | Significant Airport | Market Occupation |
---|---|---|---|
C–C | 0.4893 | CTU | 55.08% |
CKG | 43.11% | ||
YRD | 0.4459 | PVG | 63.91% |
HGH | 17.01% | ||
GHM | 0.3980 | HKG | 54.70% |
CAN | 24.54% | ||
SZX | 19.63% | ||
BTH | 0.6063 | PEK | 76.49% |
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Shen, D.; Li, X.; Zhao, H. Spatial Differentiation of Multi-Airport Logistics in Four Urban Agglomerations in China. Sustainability 2023, 15, 7346. https://doi.org/10.3390/su15097346
Shen D, Li X, Zhao H. Spatial Differentiation of Multi-Airport Logistics in Four Urban Agglomerations in China. Sustainability. 2023; 15(9):7346. https://doi.org/10.3390/su15097346
Chicago/Turabian StyleShen, Danyang, Xiudi Li, and Haoran Zhao. 2023. "Spatial Differentiation of Multi-Airport Logistics in Four Urban Agglomerations in China" Sustainability 15, no. 9: 7346. https://doi.org/10.3390/su15097346
APA StyleShen, D., Li, X., & Zhao, H. (2023). Spatial Differentiation of Multi-Airport Logistics in Four Urban Agglomerations in China. Sustainability, 15(9), 7346. https://doi.org/10.3390/su15097346