Iterative Scenario-Based Testing in an Operational Design Domain for Artificial Intelligence Based Systems in Aviation

ARGESIM Report 21 (ISBN 978-3-903347-61-8), p 95-102, DOI: 10.11128/arep.21.a2108

Abstract

The use and development of Artificial Intelligence (AI) based systems is becoming increasingly prominent in different industries. The aviation industry is also gradually adopting AI-based systems, for instance, with Machine Learning algorithms for flight assistance. There are several reasons why adopting these technologies poses additional obstacles in aviation compared to other industries. One reason are the strong safety requirements which lead to obligatory and thorough assurance activities such as testing to obtain certification. Therefore, a systematic approach is needed for developing, deploying, and assessing test cases for AI-based systems in aviation. This paper proposes a method for iterative scenario-based testing for AI-based systems. The method contains three major parts: First, a high-level description of test scenarios; second, the generation and execution of these scenarios; and last, monitoring of parameters during scenario execution. Parameters are refined, and the steps are repeated iteratively. The method forms a basis for developing iterative scenario-based testing solutions. As a domain-specific example, a practical implementation of this method is illustrated. For an object detection application used on an airplane, flight scenarios, including multiple airplanes are generated from a descriptive scenario model and executed in a simulation environment. The parameters are monitored using a custom Operational Design Domain monitoring tool and refined in the process of iterative scenario generation and execution. The proposed iterative scenario-based testing method helps in generating precise test cases for AI-based systems while having a high potential for automation.