Project

Development of surrogate-assisted algorithms for combined design and trajectory optimization of dynamic mechatronic systems

Code
12ZZP23N
Duration
01 October 2022 → 30 September 2025
Funding
Research Foundation - Flanders (FWO)
Research disciplines
  • Natural sciences
    • Calculus of variations and optimal control, optimisation
  • Engineering and technology
    • Aeronautical engineering
    • Computer aided engineering, simulation and design
    • Physical system modelling
    • Fluid mechanics and fluid dynamics
Keywords
Unmanned aerial vehicles Bayesian optimization Optimal control and trajectory optimization
 
Project description

Up until recently a sequential approach has been pursued for model-based design of dynamic mechatronic systems, where first the system is optimized for static performance measures after which its functionality is enhanced by optimizing its control trajectory. However, this impedes finding systems with concurrent optimal design and trajectory. To address this, multi-disciplinary integrated design methods – co-design – have appeared that treat design and trajectory optimization simultaneously. However, as yet, co-design has only been applied to low-fidelity models, that are cheap to evaluate but typically lack the ability to correctly represent reality. In this proposal I wish to push model-based system design further by including high-fidelity models, that more accurately capture the system’s actual behavior but come at an increased computational cost. To do this, I introduce surrogate-assisted methodologies that possess the ability to include high-fidelity models in co-design. I intend to validate the new methodology by performing a model-based design of an unmanned aerial vehicle with the objective of enabling medical transportation beyond its current capabilities, that are presently limited by range. Furthermore, the methodological development will also enable the innovative design of e.g. airborne wind energy and break through the current barrier of several fields to accelerate the transition towards renewable energy.