The research focuses on the aerodynamic design of airfoils for a Multi-Mission Unmanned Aerial Vehicle (MM-UAV). Novel shape design processes using evolutionary algorithms (EA) and a surrogate-based management system are developed to address the identified issues and challenges of solution feasibility and computational efficiency associated with present methods. Feasibility refers to the optimality of the converged solution as a function of the defined objectives and constraints. Computational efficiency is a measure of the number of design iterations needed to achieve convergence to the theoretical optimum. Airfoil design problems are characterised by a multi-modal solution topology. Present gradient-based optimisation methods do not con...
This paper describes the development of a preliminary aircraft design application employing the conc...
Future Re-Configurable Multi Mission Unmanned Aerial Vehicle (RC-MM-UAV) Design concepts are expecte...
In this work, an interactive optimisation framework—a combination of a low fidelity flow solver, At...
Unmanned Aerial Vehicle (UAV) design tends to focus on sensors, payload and navigation systems, as t...
AbstractDifferent evolutionary algorithms, by their very nature, will have different search trajecto...
Different evolutionary algorithms, by their very nature, will have different search trajectory chara...
The Particle Swarm Optimization (PSO) method is sensitive to convergence at a sub-optimum solution f...
The process of aerodynamic shape optimisation requires the development of intelligent models to addr...
This thesis presents a modern evolutionary technique for design and optimisation in aeronautics, wi...
Aerodynamic designers rely on high-fidelity numerical models to approximate, within reasonable accu...
In design optimisation problems, it is essential to ensure the convergence to the optimal design spa...
Intelligent shape optimisation architecture is developed, validated and applied in the design of hig...
This article presents an optimisation framework that uses stochastic multi-objective optimisation, c...
The paper investigates two advanced Computational Intelligence Systems (CIS) for a morphing Unmanned...
The development and accelerated use of optimization frameworks in aircraft design is a testament to ...
This paper describes the development of a preliminary aircraft design application employing the conc...
Future Re-Configurable Multi Mission Unmanned Aerial Vehicle (RC-MM-UAV) Design concepts are expecte...
In this work, an interactive optimisation framework—a combination of a low fidelity flow solver, At...
Unmanned Aerial Vehicle (UAV) design tends to focus on sensors, payload and navigation systems, as t...
AbstractDifferent evolutionary algorithms, by their very nature, will have different search trajecto...
Different evolutionary algorithms, by their very nature, will have different search trajectory chara...
The Particle Swarm Optimization (PSO) method is sensitive to convergence at a sub-optimum solution f...
The process of aerodynamic shape optimisation requires the development of intelligent models to addr...
This thesis presents a modern evolutionary technique for design and optimisation in aeronautics, wi...
Aerodynamic designers rely on high-fidelity numerical models to approximate, within reasonable accu...
In design optimisation problems, it is essential to ensure the convergence to the optimal design spa...
Intelligent shape optimisation architecture is developed, validated and applied in the design of hig...
This article presents an optimisation framework that uses stochastic multi-objective optimisation, c...
The paper investigates two advanced Computational Intelligence Systems (CIS) for a morphing Unmanned...
The development and accelerated use of optimization frameworks in aircraft design is a testament to ...
This paper describes the development of a preliminary aircraft design application employing the conc...
Future Re-Configurable Multi Mission Unmanned Aerial Vehicle (RC-MM-UAV) Design concepts are expecte...
In this work, an interactive optimisation framework—a combination of a low fidelity flow solver, At...