HAVADA KRİZ: KOVİD-19 PANDEMİSİNİN HAVAYOLLARI PERFORMANSI ÜZERİNDEKİ ETKİSİNİN ÇOK BOYUTLU ANALİZİ

Bu çalışmanın amacı Kovid-19 salgınının havayolları üzerindeki etkisinin çok boyutlu olarak analiz edilmesidir. Çal ışma kapsam ında 2018-2020 dönemi çeyreklik verileri kullan ılmıştır. Çal ışmada Kovid-19 pandemisinin etkisini çok yönlü olarak ortaya çıkarılması amacıyla CRITIC temelli EDAS ve Trend Analizi yöntemlerinden yararlanılmıştır. Çal ışmada elde edilen bulgular, Kovid-19 pandemisinin havayolu performansı üzerinde etkili olduğunu göstermektedir. Bulgular aynı zamanda bazı havayollarının Kovid-19 sürecinde daha etkin ve verimli performans gösterdiğine işaret etmekte- dir

CRISIS IN THE AIR: A MULTI-DIMENSIONAL ANALYSIS OF THE IMPACT OF THE COVID-19 PANDEMIC ON AIRLINE PERFORMANCE

The objective of this study is to analyze the impact of the Covid-19 outbreak on airline industry multi-dimensional. Quarterly data for the 2018-2020 period were employed in the study. Within the scope of the study, the impact of the Covid-19 pandemic was revealed in a multidimensional way through CRITIC-based EDAS and Trend Analysis. The findings of the study indicate that the Covid- 19 pandemic has an impact on airline performance. The findings also demonstrate that some airlines perform more effectively and efficiently in the Covid-19 process

___

  • Abate, M., Christidis, P., & Puwanto, A. J. (2020). Government support to airlines in the aftermath of the COVID-19 pandemic. Journal of Air Transport Management, 1-15.
  • Albers, S., & Rundshagen, V. (2020). European airlines′ strategic responses to the COVID- 19 pandemic (January-May, 2020). Journal of Air Transport Management, 87, 101863. https://doi.org/10.1016/j.jairtraman.2020.101863
  • Akbulut, O. Y. (2019). CRITIC Ve EDAS Yöntemleri İle İş Bankası'nın 2009-2018 Yılları Arasındaki Performansının Analizi. Ekonomi, Politika & Finans Araştırmaları Dergisi, 4(2), 249-263.
  • Akgüç, Ö. (2013). Mali Tablolar Analizi. İstanbul: Avcıol Basım Yayım.
  • Akyüz, G., & Aka, S. (2017). Çok Kriterli Karar Verme Teknikleriyle Tedarikçi Performansı Değerlendirmede Toplamsal Bir Yaklaşım. Yönetim ve Ekonomi Araştırmaları Dergisi, 15(02), 28-46.
  • Altuğ, F. (2010). Finansal Analiz Sürecinde Sistematik Bir Yaklaşım Ve Öneriler. İstanbul: Marmara Üniversitesi.
  • Andreana, G., Gualini, A., Martini, G., Porta, F., & Scotti, D. (2021). The disruptive impact of COVID-19 on air transportation: An ITS econometric analysis. Research in Transportation Economics, 1-17.
  • Aydın, N., Başar, M., & Coşkun, M. (2010). Finansal Yönetim. Ankara: Detay Yayıncılık.
  • Barak, S., & Dahooei, J. H. (2018). A novel hybrid fuzzy DEA-Fuzzy MADM method for airlines safety evaluation. Journal of Air Transport Management(73), 134-149.
  • Bauer, L. B., Bloch, D., & Merkert, R. (2020). Ultra Long-Haul: An emerging business model accelerated by COVID-19. Journal of Air Transport Management, 1-8.
  • Berittella, M., Franca, L. L., & Zito, P. (2009). An Analytic Hierarchy Process for Ranking Operating Costs of Low Cost and Full Service Airlines. Journal Of Air Transport Management, 15(5), 249-255.
  • Beuchamp-Akatova, E., & Curran, R. (2013). From initial risk assessments to system risk management. Journal of Modelling in Management, 262-289.
  • Bruno, G., Esposito, E., & Genovese, A. (2015). A model for aircraft evaluation to support strategic decisions. Expert Systems with Application, 5580-5590.
  • Budd, L., Ison, S., & Adrienne, N. (2020). European airline response to the COVID-19 pandemic – Contraction, consolidation and future considerations for airline business and management. Research in Transportation Business and Management, 37. https://doi.org/10.1016/j.rtbm.2020.100578
  • Chang, Y.-H., & Hsing Yeh, C. (2002). A Survey Analysis of Service Quality For Domestic Airlines. European Journal of Operational Research, 139(1), 166-177.
  • Chang, Y.-H., & Yeh, C.-H. (2001). Evaluating airline competitiveness using multiattribute decision making. Omega, 29, 405-415.
  • Chang, Y.-H., & Yeh, C.-H. (2004). A new airline safety index. Transportation Research Part B: Methodological, 38(4), 369-383.
  • Clemenson, B., & Sellers, R. D. (2013). Hull House: An autopsy of not-for-profit financial accountability. Journal of Accounting Education, 252-293.
  • Çakır, S., & Perçin, S. (2013). Çok Krite rli Karar Verme Teknikleriyle Lojistik Firmalarında Performans Ölçümü. Ege Akademik Bakış, 13(4), 449-459.
  • DeFranco, A. L., & Schmidgall, R. (2008). Club Ratios: A Four-Year Trend Analysis. Hospitality Review, 26(2), 42-55.
  • Demircioğlu, M., & Coşkun, İ. T. (2018). CRITIC-MOOSRA Yöntemi Ve UPS Seçimi Üzerine Bir Uygulama. Ç.Ü. Sosyal Bilimler Enstitüsü Dergisi, 27(1), 183-195.
  • Diakoulaki, D., Mavrotas, G., & Papayannakis, L. (1995). Determining Objective Weights in Multiple Criteria Problems: The CRITIC Method. Computers & Operations Research, 22(7), 763-770.
  • Dozic, S., & Kalic, M. (2015). Three-stage airline fleet planning model. Journal of Air Transport Management, 30-39.
  • Feng, C.-M., & Wang, R.-T. (2000). Performance Evaluation For Airlines Including The Consideration Of Financial Ratios. Journal of Air Transport Management, 6(3), 133- 142.
  • Ghorabaee, M. K., Amiri, M., & Zavadskas, E. K. (2017). Stochastic EDAS method for multi-criteria decision-making with normally distributed data. Journal of Intelligent & Fuzzy Systems, 33, 1627-1638.
  • Ghorabaee, M. K., Amiri, M., Zavadskas, E. K., Turskis, Z., & Antucheviciene, J. (2017). A new hybrid simulation-based assignment approach for evaluating airlines with multiple service quality criteria. Journal of Air Transport Management, 63, 45-60.
  • Ghorabaee, M. K., Zavadskas, E. K., Olfat, L., & Turskıs, Z. (2015). Multi-Criteria Inventory Classification Using a New Method of Evaluation Based on Distance from Average Solution (EDAS). Informatıca, 26(03), 435-451.
  • Gomes, L., Fernandes, J., & Mello, J. (2012). A fuzzy stochastic approach to the multicriteria selection of an ai rcraft for regional chartering. Journal Of Advanced Transportation, 48(3), 223-237.
  • Gudmundsson, S. V., Cattaneo, M., & Redondi, R. (2021). Forecasting temporal world recovery in air transport markets in the presence of large economic shocks: The case of COVID-19. Journal of Air Transport Management, 1-8.
  • Hsu, Y.-L., Li, W.-C., & Chen, K.-W. (2010). Structuring critical success factors of airline safety management system using a hybrid model. Transportation Research Part E: Logistics and Transportation Review, 222-235.
  • Işık, Ö. (2019). Türkiye'de Hayat Dışı Sigorta Sektörünün Finansal Performansının CRITIC Tabanlı TOPSIS ve MULTIMOORA Yöntemiyle Değerlendirilmesi. Busıness & Management Studies: An International Journal, 7(1), 542-562.
  • Jahan, A., Mustapha, F., Sapuan, S. M., Md., Y. İ., & Bahraminasab, M. (2012). A framework for weighting of criteria in ranking stageof material selection process. Int J Adv Manuf Technol(58), 411-420.
  • Karatop, B., Taşkan, B., Adar, E., & Kubat, C. (2021). Decision analysis related to the renewable energy investments in Turkey based on a Fuzzy AHP-EDAS-Fuzzy FMEA approach. Computers & Industrial Engineering, 1-15.
  • Kazan, H., & Özdemir, Ö. (2014). Financial Performance Assesment Of Large Scale Conglomerates Via TOPS IS and CRITIC Methods. International Journal of Management and Sustainability, 3(4), 203-224.
  • Kiracı, K., & Bakır, M. (2019). CRITIC Temelli EDAS Yöntemi İle Havayolu İşletmelerinde Performans Ölçümü Uygulaması. Pamukkale Üniversitesi Sosyal Bilimler Enstitüsü Dergisi, 35, 157-174.
  • Li, T. (2020). A SWOT analysis of China’s air cargo sector in the context of COVID-19 pandemic. Journal of Air Transport Management(88), 1-6.
  • Liou, J. J., & Tzeng, G.-H. (2007). A non-additive model for evaluating airline service quality. Journal of Air Transport Management, 13(3), 131-138.
  • Liou, J. J., Tzeng, G.-H., & Chang, H.-C. (2007). Airline Safety Measurement Using a Hybrid Model. Journal Of Air Transport Management, 13(4), 243-249.
  • Mahtani, U. S., & Garg, C. P. (2018). An analysis of Key Factors of Financial Distress in Airline Companies in India Using Fuzzy AHP Framework. Transportation Research Part A(117), 87-102.
  • Maneenop, S., & Kotcharin, S. (2020). The impacts of COVID-19 on the global airline industry: An event study approach. Journal of Air Transport Management, 89, 101920. https://doi.org/10.1016/j.jairtraman.2020.101920
  • Nejati, M., Nejati, M., & Shafaei, A. (2009). Ranking Airlines Service Quality Factors Using a Fuzzy Approach: Study of the Iranian Society. International Journal of Quality & Reliability Management, 26(3), 247-260.
  • Orhan, M., & Aytekin, M. (2020). Türkiye İle AB'ye Son Katılan Ülkelerin Ar-Ge Performanslarının CRITIC Ağırlıklı MAUT Ve SAW Yöntemi İle Kıyaslanması. Business & Management Studies: An International Journal, 8(1), 754-778.
  • Özdemir, Y., & Baslıgil, H. (2016). Aircraft selection using fuzzy ANP and the generalized choquet integral method: The Turkish airlines case. Journal of Intelligent & Fuzzy Systems, 589-600.
  • Pereira, D., & Mello, J. (2021). Efficiency evaluation of Brazilian airlines operations considering the Covid-19 outbreak. Journal of Air Transport Management, 1-6.
  • Pineda, P. G., Liou, J. J., Hsu, C.-C., & Chuang, Y.-C. (2018). An Integrated MCDM Model for Improving Airline Operational and Financial Performance. Journal of Air Transport Management(68), 103-117.
  • Sotomayor-Castillo, C., Radford, K., Li, C., Nahidi, S., & Shaban, R. Z. (2020). Air travel in a COVID-19 world: Commercial airline passengers’ health concerns and attitudes towards infection prevention and disease control measures. Infection, Disease and Health. https://doi.org/10.1016/j.idh.2020.11.002
  • Su, X., Wu, Y., Song, J., & Peilong, Y. (2018). A Fuzzy Path Selection Strategy for Aircraft Landing on a Carrier. Applied Science, 8(5), 1-17
  • Sun, X., Wandelt, S., & Zhang, A. (2020). How did COVID-19 impact air transportation? A first peek through the lens of complex networks. Journal of Air Transport Management, 89, 101928. https://doi.org/10.1016/j.jairtraman.2020.101928
  • Trinkuniene, E., Podvezko, V., Zavadskas, E. K., Joksiene, I., Vinogradova, I., & Trinkünas, V. (2017). Evaluation of quality assurance in contractor contracts by multi- attribute decision-making methods. Economic Research-Ekonomska Istraživanja, 30(1), 1152-1180.
  • Tsafarakis, S., Kokotas, T., & Pantouvakis, A. (2018). A multiple criteria approach for airline passenger satisfaction measurement and service quality improvement. Journal Of Air Transport Management(68), 61-75.
  • Tsaur, S.-H., Chang, T.-Y., & Yen, C.-H. (2002). The Evaluation of Airline Service Quality by Fuzzy MCDM. Tourism Management, 23(2), 107-115.
  • Ulutaş, A. (2017). EDAS Yöntemi Kullanılarak Bir Tekstil Atölyesi İçin Dikiş Makinesi Seçimi. Journal Of Business Research Turk, 169-183.
  • Ulutaş, A. (2019). Entropi Tabanlı EDAS Yöntemi İle Lojistik Firmalarının Performans Analizi. Uluslararası İktisadi ve İdari İncelemeler Dergisi(23), 53-66.
  • Ünlü, U., Yalç ın, N., & Yağlı, İ. (2016). Kurumsal Yönetim Ve Firma Performansı: TOPSIS Yöntemi İle BIST 30 Firmaları Üzerine Bir Uygulama. Dokuz Eylül Üniversitesi Sosyal Bilimler Enstitüsü Dergisi, 19(1), 63-81.
  • Wang, Y.-J. (2008). Applying FMCDM to Evaluate Financial Performance Of Domestic Airlines in Taiwan. Expert Systems with Applications(34), 1837-1845.
  • Zhang, W., Ju, Y., Liu, X., & Ginnakis, M. (2017). A mathematical programming-based method for heterogeneous multicriteria group decision analysis with aspirations and incomplete preference information. Computers & Industrial Engineering, 113, 541-557.