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https://doi.org/10.48441/4427.2797
Publisher DOI: | 10.1007/s13272-025-00870-x | Title: | CPS prototype development for AI-based scenario adaptation in flight simulator training | Language: | English | Authors: | Lilla, Helge Niggemann, Oliver Netzel, Thomas |
Keywords: | AI-based CPS; Flight simulation; Machine learning; Scenario-based training; CBTA; EBT | Issue Date: | 29-Aug-2025 | Publisher: | Springer | Journal or Series Name: | CEAS aeronautical journal : an official journal of the Council of European Aerospace Societies | Volume: | :tba | Issue: | :tba | Startpage: | :tba | Endpage: | :tba | Abstract: | Evidence-based training as part of competency-based training and assessment confronts pilots with unexpected events in realistic scenarios in order to promote problem-solving and adaptability. Linking theory and practice is essential to promote these competencies. To achieve this, a cyber-physical system is presented that enables this through the innovative approach of “deep-linking keywords.” A heuristic scoring function determines a fulfillment score for each keyword. Based on the assessment, scenario-based training is adapted, enabling necessary individualization. Compared to existing systems, the prototype generates a coherent dataset that bridges knowledge work and scenario-based training, allowing for comprehensive scenario adaptation. The cyber-physical system consists of a computer-based training system built on the Django framework, a Basic Instrument Training Device, and flight simulator software, integrated via an application programming interface. After each evidence-based training session, performance data are processed through structured analysis pipelines to extract and evaluate scenario-linked feature vectors. This enables iterative parameter optimization for adaptive scenario control. Building on the prototype and the proven effectiveness of the heuristic scoring function, a large dataset will be compiled, and the rule-based method will be replaced by machine learning to enhance safety, effectiveness, and efficiency in aviation through highly individualized training enabled by an AI-based cyber-physical system. |
URI: | https://hdl.handle.net/20.500.12738/18106 | DOI: | 10.48441/4427.2797 | ISSN: | 1869-5590 | Review status: | This version was peer reviewed (peer review) | Institute: | Department Fahrzeugtechnik und Flugzeugbau Fakultät Technik und Informatik |
Type: | Article | Additional note: | Lilla, H., Niggemann, O. & Netzel, T. CPS prototype development for AI-based scenario adaptation in flight simulator training. CEAS Aeronaut J (2025). https://doi.org/10.1007/s13272-025-00870-x |
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