Trends for Aviation Industry Development through Artificial Intelligence (AI)

Main Article Content

Jakkawat Laphet
Waraphon Klinsreesuk
Panida Rakklin
Dultadej Sanvises

Abstract

           This article aims to explore the trends in the development of the aviation industry using artificial intelligence (AI) in Thailand. It highlights AI’s role in enhancing flight efficiency, including passenger services, safety, and aircraft maintenance. The study analyzes six main topics: flight route planning and air traffic management, safety innovations, aircraft maintenance, improving passenger experience, impacts on training and developing personnel, and trends in unmanned aerial vehicles (UAVs). The analysis results indicate that AI has the potential to significantly enhance flight efficiency by reducing flight times and fuel consumption. Moreover, it can improve safety in the aviation industry through data analysis and anomaly detection. The AI-based Condition Monitoring Sensors (CATS) used for air traffic management in Thailand have proven to reduce aircraft waiting times. Additionally, the implementation of AI in predictive maintenance can help lower costs and repair times, particularly for airlines in Thailand. AI also enhances the passenger experience through improved services. Investing in AI technology will be a key factor in driving the aviation industry toward a sustainable and efficient future both in Thailand and globally.

Article Details

How to Cite
Laphet, J., Klinsreesuk, W., Rakklin, P. ., & Sanvises, D. (2024). Trends for Aviation Industry Development through Artificial Intelligence (AI). Journal of Roi Kaensarn Academi, 9(11), 1904–1913. retrieved from https://so02.tci-thaijo.org/index.php/JRKSA/article/view/274655
Section
Academic Article

References

Adryan, F. A., & Sastra, K. W. (2021). Predictive maintenance for aircraft engine

using machine learning: Trends and challenges. Avia, 3(1).

Abderrahmane Moubarek Sadou and Eric Tchouamou Njoya. (2023).

Applications of Artificial Intelligence in the Air Transport Industry: A Bibliometric and Systematic Literature Review. September 2023. Journal of Aerospace Technology and Management, 15(1).

Charoensook, C. (2023). Efficiency Sustainability of Air Traffic Control and

Management System in Aviation Sector. International Journal of Engineering Research and Sustainable Technologies (IJERST), 1(2), 10-19.

Cheng, Nan, Shen Wu, Xiucheng Wang, Zhisheng Yin, Changle Li, Wen Chen, and

Fangjiong Chen. (2023). AI for UAV-assisted IoT applications: A comprehensive review. IEEE Internet of Things Journal, 10(16), 14438-14461.

Doğan, S., & Niyet, İ. Z. (2024). Artificial Intelligence (AI) in Tourism. In Future

Tourism Trends Volume 2: Technology Advancement, Trends and Innovations for the Future in Tourism (pp. 3-21). Emerald Publishing Limited.

Hossain, M. N., Rahman, M. M., & Ramasamy, D. (2024). Artificial Intelligence-

Driven Vehicle Fault Diagnosis to Revolutionize Automotive Maintenance: A Review. CMES-Computer Modeling in Engineering & Sciences, 141(2).

Liangrokapart, J., & Sittiwatethanasiri, T. (2023). Strategic direction for aviation

maintenance, repair, and overhaul hub after crisis recovery. Asia Pacific Management Review, 28(2), 81-89.

Malang C, Charoenkwan P, Wudhikarn R. (2023). Implementation and Critical

Factors of Unmanned Aerial Vehicle (UAV) in Warehouse Management: A Systematic Literature Review. Drones, 7(2), 80. https://doi.org/10.3390/drones7020080

Merlo, T. R. (2024). Emerging Role of Artificial Intelligence (AI) in Aviation: Using

Predictive Maintenance for Operational Efficiency. In Harnessing Digital Innovation for Air Transportation (pp. 25-41). IGI Global.

MoghadasNian, S. A. (2024). Strategic and Transformational Excellence in the

Airline Industry: Leveraging Key Performance Indicators (KPIs).

Seran, I., & Subiyanto, A. (2023). The Study of Subtitling Strategy In 'All Too Well'

Song Translation. Wiralodra English Journal (WEJ), 7(1), 111-122.

Shaker, M. H., & Al-Alawi, A. I. (2023). Application of big data and artificial

intelligence in pilot training: a systematic literature review. In 2023 International Conference on Cyber Management and Engineering (CyMaEn) (pp. 205-209). IEEE.

Soonthodu, S., Wahab, I. N., & Hassan, A. (2022). Technology application usage in

aviation industry in Asia. In Handbook of Technology Application in Tourism in Asia (pp. 313-341). Singapore: Springer Nature Singapore.

Tang Jun, Liu Gang, and Pan Qingtao (2022). Review on artificial intelligence

techniques for improving representative air traffic management capability. Journal of Systems Engineering and Electronics, 33(5), 1123-1134. doi: 10.23919/JSEE.2022.000109.

Tereza Raquel Merlo (2024). Emerging Role of Artificial Intelligence (AI) in

Aviation: Harnessing Digital Innovation for Air Transportation. March 2024. 10.4018/979-8-3693-0732-8.ch002.

TTTech (2024). AI to increase the autonomy of drones and light aircraft. Accessed on

October 31, 2024. https://www.tttech.com/increase-autonomy-drones-and-aircraft-with-ai

Wattanacharoensil, W., & Yoopetch, C. (2012). Thailand's human resource

competencies in airline service quality: Voices from the airline industry. Journal of Human Resources in Hospitality & Tourism, 11(4), 280-302.