| Literature DB >> 35194345 |
Pei-Fen Kuo1, I Gede Brawiswa Putra1, Faizal Azmi Setiawan1, Tzai-Hung Wen2, Chui-Sheng Chiu1, Umroh Dian Sulistyah1.
Abstract
The ongoing COVID-19 pandemic has posed a global threat to human health. In order to prevent the spread of this virus, many countries have imposed travel restrictions. This difficult situation has dramatically affected the airline industry by reducing the passenger volume, number of flights, airline flow patterns, and even has changed the entire airport network, especially in Northeast Asia (because it includes the original disease seed). However, although most scholars have used conventional statistical analysis to describe the changes in passenger volume before and during the COVID-19 outbreak, very few of them have applied statistical assessment or time series analysis, and have not even examined how the impact may be different from place to place. Therefore, the purpose of this study was to identify the impact of COVID-19 on the airline industry and affected areas (including the origin-destination flow and the airport network). First, a Clustering Large Applications (CLARA) algorithm was used to group numerous origin-destination (O-D) flow patterns based on their characteristics and to determine if these characteristics have changed the severity of the impact of each cluster during the COVID-19 outbreak. Second, two statistical tests (the paired t-test and the Wilcoxon signed-rank test) were utilized to determine if the entire airport network and the top 30 hub airports changed during COVID-19. Four centrality measurement indices (degree, closeness, eigenvector, and betweenness centrality) of the airports were used to assess the entire network and ranking of individual hub airports. The study data, provided by The Official Aviation Guide (OAG) from December 2019 to April 2020, indicated that during the COVID-19 outbreak, there was a decrease in passenger volume (60%-98.4%) as well as the number of flights (1.5%-82.6%). However, there were no such significant changes regarding the popularity ranking of most airports during the outbreak. Before this occurred (December 2019), most hub airports were in China (April 2020), and this trend remain similar during the COVID-19 outbreak. However, the values of the centrality measurement decreased significantly for most hub airports due to travel restrictions issued by the government.Entities:
Keywords: Airport network; CLARA clustering Algorithm; COVID-19; Centrality
Year: 2022 PMID: 35194345 PMCID: PMC8849875 DOI: 10.1016/j.jairtraman.2022.102192
Source DB: PubMed Journal: J Air Transp Manag ISSN: 0969-6997
OAG O-D flow dataset.
| ID | Dep. Airport Code | Dep. Country Name | Lat Dep. | Long Dep. | Arr. Airport Code | Arr. Country.Name | Lat Arr | Long Arr | Passenger | Flight Distance (km) |
|---|---|---|---|---|---|---|---|---|---|---|
| OD_01 | FUK | Japan | 33.586 | 130.451 | HND | Japan | 35.552 | 139.780 | 104783 | 879 |
| OD_02 | SZX | China | 22.639 | 113.811 | SHA | China | 31.198 | 121.336 | 79274 | 1207 |
| OD_03 | NRT | Japan | 35.765 | 140.386 | ICN | South Korea | 37.469 | 126.451 | 13091 | 1255 |
| OD_04 | TPE | Taiwan | 25.078 | 121.233 | HKG | Hong Kong | 22.309 | 113.915 | 9881 | 805 |
Descriptive statistics dataset.
| Before COVID-19 (December 2019) | ||||
|---|---|---|---|---|
| Airports in Operation: 362 | ||||
| Number of O-D flows: 2,370 | ||||
| Minimum | Median | Maximum | Average | |
| Passengers | 13 | 2,725 | 350,928 | 11,084.94 |
| Flight Distances | 23 | 1,086 | 5,047 | 1,242.59 |
| During COVID-19 (April 2020) | ||||
| Airports in Operation: 344 | ||||
| Number of O-D flows: 1,685 | ||||
| Minimum | Median | Maximum | Average | |
| Passengers | 12 | 983 | 196,702 | 3,969.39 |
| Flight Distances | 23 | 941 | 5,047 | 1,095.32 |
Fig. 1The results of the silhouette analysis, (a) Before COVID-19; (b) During COVID-19.
Fig. 2Illustration of network centrality.
The differences before and during the COVID-19 outbreak in each cluster.
| Cluster No. | Flow Characteristics | Ratio | Ratio During | Number of OD Flow | Number of Passengers | ||||
|---|---|---|---|---|---|---|---|---|---|
| Before | During | Percentage of reduction | Before | During | Percentage of reduction | ||||
| 1 | Domestic (outside China), short flight distance | 31.17% | 43.35% | 738 | 727 | 1.50% | 8,130,211 | 3,255,994 | 60.00% |
| 2 | Domestic (outside China), medium flight distance | 4.86% | 5.25% | 115 | 88 | 23.50% | 566,166 | 225,455 | 60.20% |
| 3 | Domestic (outside China), long flight distance | 0.42% | 0.48% | 10 | 8 | 20.00% | 9,277 | 3,035 | 67.30% |
| 4 | International, short, origin not from China, destination not to China | 6.42% | 4.89% | 152 | 82 | 46.10% | 2,313,504 | 160,189 | 93.10% |
| 5 | International, medium/long, origin not from China, destination not to China | 5.91% | 3.58% | 140 | 60 | 57.10% | 1,776,739 | 71,370 | 96.00% |
| 6 | International, short, originate from China | 2.15% | 0.95% | 51 | 16 | 68.60% | 656,467 | 17,567 | 97.30% |
| 7 | International, medium/long, originate from China | 1.73% | 0.78% | 41 | 13 | 68.30% | 466,780 | 7,387 | 98.40% |
| 8 | International, short, destination to China | 9.92% | 3.22% | 235 | 54 | 77.00% | 1,435,411 | 36,213 | 97.50% |
| 9 | International, medium and long, destination to China | 8.02% | 1.97% | 190 | 33 | 82.60% | 820,983 | 20,273 | 97.50% |
| 10 | China domestic, short flight distance | 19.97% | 24.21% | 473 | 406 | 14.20% | 7,024,330 | 2,096,954 | 70.10% |
| 11 | China domestic, medium, and long flight distance | 9.42% | 11.33% | 223 | 190 | 14.80% | 3,049,326 | 762,235 | 75.00% |
Paired t-test results for the centrality metrics.
| All Airports | |||||
|---|---|---|---|---|---|
| Metrics | Before | During | Difference | Percentage of Differece | P-value |
| Degree | 13.8 ± 26.6 | 9.9 ± 19.2 | −3.95 | −28.6% | 5.2E-13*** |
| Closeness | 9.8E-4±1.6E-4 | 1.1E-3±1.8E-4 | 1.05E-4 | 10.7% | 2.3E-16*** |
| Eigenvalue | 0.1 ± 0.02 | 0.06 ± 0.1 | −0.07 | −70% | 2.3E-16*** |
| Betweenness | 339.4 ± 1319.7 | 412.5 ± 1722.8 | 73.17 | 21.5% | 0.16 |
| Degree | 85.6 ± 45.5 | 58.6 ± 37.8 | −27 | −31.5% | 3.5E-08*** |
| Closeness | 1.7E-3±9.0E-5 | 1.9E-3±8.0E-5 | 1.89E-4 | 11.1% | 8.6E-12*** |
| Eigenvector | 0.5 ± 0.2 | 0.3 ± 0.3 | −0.23 | −46% | 3.5E-05*** |
| Betweenness | 3358.5 ± 3055.6 | 3956.6 ± 4314.6 | 597.96 | 17.8% | 0.31 |
Wilcoxon signed-rank test result on centrality metrics of all airports.
| All Airports | ||||
|---|---|---|---|---|
| Metrics | Before > During | Before < During | Z-value | P-value |
| Degree | 199 | 137 | −1.725 | 0.085. |
| Closeness | 218 | 119 | −4.794 | 0.0001*** |
| Eigenvector | 187 | 151 | −1.864 | 0.062. |
| Betweenness | 222 | 110 | −3.782 | 0.0001*** |
| Degree | 15 | 12 | −0.072 | 0.942 |
| Closeness | 8 | 22 | −2.897 | 0.004** |
| Eigenvector | 9 | 20 | −2.628 | 0.009** |
| Betweenness | 13 | 17 | −1.102 | 0.270 |
Significant Code: 0.001’***’; 0.01’**’; 0.05’*’; 0.1 ‘.’
Top 30 rankings based on the centrality metrics results for Northeast Asia.
| IATA code | Airport Name | City | Country | Latitude. | Longitude. | Timezone |
|---|---|---|---|---|---|---|
| ASJ | Amami Airport | Amami | Japan | 28.4306 | 129.713 | 9 |
| CAN | Guangzhou Baiyun International Airport | Guangzhou | China | 23.3924 | 113.299 | 8 |
| CJU | Jeju International Airport | Cheju | South Korea | 33.5113 | 126.493 | 9 |
| CKG | Chongqing Jiangbei International Airport | Chongqing | China | 29.7192 | 106.642 | 8 |
| CSX | Changsha Huanghua International Airport | Changcha | China | 28.1892 | 113.22 | 8 |
| CTS | New Chitose Airport | Sapporo | Japan | 42.7752 | 141.692 | 9 |
| CTU | Chengdu Shuangliu International Airport | Chengdu | China | 30.5785 | 103.947 | 8 |
| DLC | Zhoushuizi Airport | Dalian | China | 38.9657 | 121.539 | 8 |
| FOC | Fuzhou Changle International Airport | Fuzhou | China | 25.9351 | 119.663 | 8 |
| FUK | Fukuoka Airport | Fukuoka | Japan | 33.5859 | 130.451 | 9 |
| GMP | Gimpo International Airport | Seoul | South Korea | 37.5583 | 126.791 | 9 |
| HFE | Hefei Luogang International Airport | Hefei | China | 31.78 | 117.298 | 8 |
| HGH | Hangzhou Xiaoshan International Airport | Hangzhou | China | 30.2295 | 120.434 | 8 |
| HKD | Hakodate Airport | Hakodate | Japan | 41.77 | 140.822 | 9 |
| HKG | Hong Kong International Airport | Hong Kong | Hong Kong | 22.3089 | 113.915 | 8 |
| HMA | Khanty Mansiysk Airport | Khanty-Mansiysk | Russia | 61.0285 | 69.0861 | 5 |
| HND | Tokyo Haneda International Airport | Tokyo | Japan | 35.5523 | 139.78 | 9 |
| HRB | Taiping Airport | Harbin | China | 45.6234 | 126.25 | 8 |
| ICN | Incheon International Airport | Seoul | South Korea | 37.4691 | 126.451 | 9 |
| IKT | Irkutsk Airport | Irkutsk | Russia | 52.268 | 104.389 | 8 |
| ISG | New Ishigaki Airport | Ishigaki | Japan | 24.39639 | 124.245 | 9 |
| ITM | Osaka International Airport | Osaka | Japan | 34.7855 | 135.438 | 9 |
| KCZ | K??chi Ry??ma Airport | Kochi | Japan | 33.5461 | 133.669 | 9 |
| KHH | Kaohsiung International Airport | Kaohsiung | Taiwan | 22.5771 | 120.35 | 8 |
| KHV | Khabarovsk-Novy Airport | Khabarovsk | Russia | 48.528 | 135.188 | 10 |
| KIJ | Niigata Airport | Niigata | Japan | 37.9559 | 139.121 | 9 |
| KIX | Kansai International Airport | Osaka | Japan | 34.4273 | 135.244 | 9 |
| KJA | Yemelyanovo Airport | Krasnoyarsk | Russia | 56.1729 | 92.4933 | 7 |
| KMI | Miyazaki Airport | Miyazaki | Japan | 31.8772 | 131.449 | 9 |
| KMJ | Kumamoto Airport | Kumamoto | Japan | 32.8373 | 130.855 | 9 |
| KMQ | Komatsu Airport | Kanazawa | Japan | 36.3946 | 136.407 | 9 |
| KOJ | Kagoshima Airport | Kagoshima | Japan | 31.8034 | 130.719 | 9 |
| MFM | Macau International Airport | Macau | Macau | 22.1496 | 113.592 | 8 |
| MYJ | Matsuyama Airport | Matsuyama | Japan | 33.8272 | 132.7 | 9 |
| NGB | Ningbo Lishe International Airport | Ninbo | China | 29.8267 | 121.462 | 8 |
| NGO | Chubu Centrair International Airport | Nagoya | Japan | 34.8584 | 136.805 | 9 |
| NGS | Nagasaki Airport | Nagasaki | Japan | 32.9169 | 129.914 | 9 |
| NKG | Nanjing Lukou Airport | Nanjing | China | 31.742 | 118.862 | 8 |
| NRT | Narita International Airport | Tokyo | Japan | 35.7647 | 140.386 | 9 |
| OKA | Naha Airport | Okinawa | Japan | 26.1958 | 127.646 | 9 |
| OVB | Tolmachevo Airport | Novosibirsk | Russia | 55.0126 | 82.6507 | 7 |
| PEK | Beijing Capital International Airport | Beijing | China | 40.0801 | 116.585 | 8 |
| PUS | Gimhae International Airport | Busan | South Korea | 35.1795 | 128.938 | 9 |
| PVG | Shanghai Pudong International Airport | Shanghai | China | 31.1434 | 121.805 | 8 |
| SDJ | Sendai Airport | Sendai | Japan | 38.1397 | 140.917 | 9 |
| SGC | Surgut Airport | Surgut | Russia | 61.3437 | 73.4018 | 5 |
| SHA | Shanghai Hongqiao International Airport | Shanghai | China | 31.1979 | 121.336 | 8 |
| SHE | Taoxian Airport | Shenyang | China | 41.6398 | 123.483 | 8 |
| SVX | Koltsovo Airport | Yekaterinburg | Russia | 56.7431 | 60.8027 | 5 |
| SYX | Sanya Phoenix International Airport | Sanya | China | 18.3029 | 109.412 | 8 |
| SZX | Shenzhen Bao'an International Airport | Shenzhen | China | 22.6393 | 113.811 | 8 |
| TAO | Liuting Airport | Qingdao | China | 36.2661 | 120.374 | 8 |
| TPE | Taiwan Taoyuan International Airport | Taipei | Taiwan | 25.0777 | 121.233 | 8 |
| TSA | Taipei Songshan Airport | Taipei | Taiwan | 25.0694 | 121.552 | 8 |
| TSN | Tianjin Binhai International Airport | Tianjin | China | 39.1244 | 117.346 | 8 |
| UKB | Kobe Airport | Kobe | Japan | 34.6328 | 135.224 | 9 |
| ULN | Chinggis Khaan International Airport | Ulan Bator | Mongolia | 47.8431 | 106.767 | 8 |
| UUS | Yuzhno-Sakhalinsk Airport | Yuzhno-sakhalinsk | Russia | 46.8887 | 142.718 | 11 |
| VVO | Vladivostok International Airport | Vladivostok | Russia | 43.399 | 132.148 | 10 |
| WEH | Weihai Airport | Weihai | China | 37.1871 | 122.229 | 8 |
| WUH | Wuhan Tianhe International Airport | Wuhan | China | 30.7838 | 114.208 | 8 |
| XIY | Xi'an Xianyang International Airport | Xi'an | China | 34.4471 | 108.752 | 8 |
| XMN | Xiamen Gaoqi International Airport | Xiamen | China | 24.544 | 118.128 | 8 |
| YKS | Yakutsk Airport | Yakutsk | Russia | 62.0933 | 129.771 | 9 |
| YNT | Yantai Laishan Airport | Yantai | China | 37.4017 | 121.372 | 8 |