Physics-Constrained Generative Artificial Intelligence for Rapid Takeoff Trajectory Design
Samuel Sisk, Xiaosong Du

TL;DR
This paper introduces physicsGAN, a physics-constrained generative AI framework that efficiently designs feasible eVTOL takeoff trajectories with high accuracy, significantly reducing computational time compared to traditional methods.
Contribution
The work presents the first physics-constrained generative adversarial network for trajectory design, improving efficiency, feasibility, and optimality in eVTOL takeoff control profiles.
Findings
PhysicsGAN generates 98.9% feasible control profiles.
Achieves 99.6% accuracy in optimal design.
Reduces computational time by around 200 times.
Abstract
To aid urban air mobility (UAM), electric vertical takeoff and landing (eVTOL) aircraft are being targeted. Conventional multidisciplinary analysis and optimization (MDAO) can be expensive, while surrogate-based optimization can struggle with challenging physical constraints. This work proposes physics-constrained generative adversarial networks (physicsGAN), to intelligently parameterize the takeoff control profiles of an eVTOL aircraft and to transform the original design space to a feasible space. Specifically, the transformed feasible space refers to a space where all designs directly satisfy all design constraints. The physicsGAN-enabled surrogate-based takeoff trajectory design framework was demonstrated on the Airbus A3 Vahana. The physicsGAN generated only feasible control profiles of power and wing angle in the feasible space with around 98.9% of designs satisfying all…
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Taxonomy
TopicsReal-time simulation and control systems · Autonomous Vehicle Technology and Safety
