This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Artificial Intelligence in Air Cargo System
Technical Paper
2022-26-0022
ISSN: 0148-7191, e-ISSN: 2688-3627
Annotation ability available
Sector:
Event:
AeroCON 2022
Language:
English
Abstract
Air Cargo is one of the major modes of cargo transportation in the world. It is helping to transport goods swiftly across the globe during emergencies like pandemic, evacuation, and natural calamities etc. It plays a key role in economy of a country by exporting and importing goods across the globe. This business is growing every YOY with increase in demand for e-Commerce and globalization. It is also important to keep up the efficiency of the system as the business demand grows.
This paper focuses on Artificial Intelligence (AI) implementation can reduce the inefficiency and inconsistency due to the manual intervention in cargo operation in different areas. The major Implementation study area of AI in this paper include implementing in Cargo load planning to reduce the human dependency and error, ground handling with the help of autopiloting vehicle which can operate in any weather condition, sequence of loading Unit Load Devices (ULD’s) based on priority, operating control unit to move ULD in the Cargo deck , fixing ULD’s when it is stuck during operation and implementation of AI based predictive maintenance for the Cargo electrical and mechanical components and AI based design decision making in cargo LRU’s. The required data for AI implementation for the ground handling and cargo operation is collected from the existing system and Subject matter experts. It also generates more data after the implementation which can be continuously fed to model for the improvement.
Authors
Topic
Citation
Chitragar, V., Adavalath Puthiyaveettil, S., Vijaya Chandran, V., and Gopan, V., "Artificial Intelligence in Air Cargo System," SAE Technical Paper 2022-26-0022, 2022, https://doi.org/10.4271/2022-26-0022.Also In
References
- Baruah , P. , Chinnam , R.B. , and Filev , D. An Autonomous Diagnostics and Prognostics Framework for Condition-Based Maintenance International Joint Conference on Neural Networks Sheraton Vancouver Wall Centre Hotel, BC 2006
- Carvalho , T.P. , Soares , F.A. , Vita , R. , Francisco , R.D. et al. A Systematic Literature Review of Machine Learning Methods Applied to Predictive Maintenance Comput. Ind. Eng. 137 2019 106024
- Dai , X. and Gao , Z. From Model Signal to Knowledge: A Data-Driven Perspective of Fault Detection and Diagnosis IEEE Trans Ind Inf 9 4 2013 2226 2238 http://dx.doi.org/10.1109/TII.2013.2243743
- Brandt , F. 2013 The Air Cargo Load Planning Problem 0 175
- Lau , H.C.W. , Chan , T.M. et al. An AI Approach for Optimizing Multi-Pallet Loading Operation ELSEVIER Expert Systems with Applications 2009 36 (2009) 4296-4312
- Vis , I. Survey of Research in the Design and Control of Automated Guided Vehicle Systems European Journal of Operational Research 170 3 2006 677 709
- Bischoff , E.E. and Ratcliff , M.S.W. Loading Multiple Pallets The Journal of the Operational Research Society 46 1995 1322 1336
- Gehring , H. and Bortfeldt , A. A Genetic Algorithm for Solving the Container Loading Problem International Transactions in Operational Research 4 1997 401 418
- Herbert , E.A. and Dowsland , K.A. A Family of Genetic Algorithms for the Pallet Loading Problem Annals of Operations Research 63 415 436
- Wu , Y. and Lai , K.K. A Mixed Integer Programming Model for Container Selection and Cargo Loading Problems Proceedings of the 9th International Symposium on Manufacturing and Applications Seville, Spain 329 334