Advanced UAV design optimization through deep learning-based surrogate models

Date published

2024-08-14

Free to read from

2024-08-29

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Department

Type

Article

ISSN

2226-4310

Format

Citation

Karali H, Inalhan G, Tsourdos A. (2024) Advanced UAV design optimization through deep learning-based surrogate models. Aerospace, Volume 11, Issue 8, August 2024, Article number 669

Abstract

The conceptual design of unmanned aerial vehicles (UAVs) presents significant multidisciplinary challenges requiring the optimization of aerodynamic and structural performance, stealth, and propulsion efficiency. This work addresses these challenges by integrating deep neural networks with a multiobjective genetic algorithm to optimize UAV configurations. The proposed framework enables a comprehensive evaluation of design alternatives by estimating key performance metrics required for different operational requirements. The design process resulted in a significant improvement in computational time over traditional methods by more than three orders of magnitude. The findings illustrate the framework’s capability to optimize UAV designs for a variety of mission scenarios, including specialized tasks such as intelligence, surveillance, and reconnaissance (ISR), combat air patrol (CAP), and Suppression of Enemy Air Defenses (SEAD). This flexibility and adaptability was demonstrated through a case study, showcasing the method’s effectiveness in tailoring UAV configurations to meet specific operational requirements while balancing trade-offs between aerodynamic efficiency, stealth, and structural weight. Additionally, these results underscore the transformative impact of integrating AI into the early stages of the design process, facilitating rapid prototyping and innovation in aerospace engineering. Consequently, the current work demonstrates the potential of AI-driven optimization to revolutionize UAV design by providing a robust and effective tool for solving complex engineering problems.

Description

Software Description

Software Language

Github

Keywords

40 Engineering, 4001 Aerospace Engineering, Machine Learning and Artificial Intelligence, 7 Affordable and Clean Energy, 4001 Aerospace engineering

DOI

Rights

Attribution 4.0 International

Relationships

Relationships

Supplements

Funder/s

Engineering and Physical Sciences Research Council and BAE Systems