Unit information: Advanced Techniques in Multi-Disciplinary Design in 2012/13

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Unit name Advanced Techniques in Multi-Disciplinary Design
Unit code AENGM2005
Credit points 10
Level of study M/7
Teaching block(s) Teaching Block 2 (weeks 13 - 24)
Unit director Professor. Richards
Open unit status Not open
Pre-requisites

AENG30001 / AENG30011/AENGM2003/AENGM2013 Aerospace Vehicle Design and Systems Integration

Co-requisites

None

School/department Department of Aerospace Engineering
Faculty Faculty of Engineering

Description including Unit Aims

This Unit instructs students in numerical optimisation methods and architectures for executing automated multi-disciplinary sizing of aerospace vehicles. The unit is segmented into four areas of instruction: 1. The design process and requirements for numerical synthesis; 2. Design search and optimisation methods; 3. Advanced multi-disciplinary sub-space simulation and architectures; 4. Design space sensitivities and synthesised solution robustness. A series of practical examples in conjunction with well-documented case studies will complement the presented material. The coursework emphasises a hands-on approach comprising assignments and a group project.

This module aims to provide a comprehensive introduction to the use of numerical search and optimisation tools for purposes of conducting advanced technical decision-making in aerospace design. Focus is placed on the four themes of optimisation associated with contemporary aerospace engineering, namely, Size (cross-section), Shape (boundary), Topology (form) and Behaviour (group). Upon successful completion of this unit the student will:

  • Have a fundamental understanding of various optimisation techniques; be able to state the definitions of important terms, the properties of common methods; and, be able to implement and apply simple optimisation methods;
  • Have a fundamental understanding of constrained, multi-objective optimisation problems including the conditions for optimality;
  • Appreciate the requisite array of principles and practises when attempting to couple in automated design within the product development process;
  • Acquire an ability to judiciously declare an automated design suite architecture with suitable objective functions, design variables, parameters and constraints; and,
  • Be equipped to perform critical evaluations of optimisation results by scrutinising sensitivity analyses, and exploring cost functions, figures of merit.

Teaching Information

Lectures.

Assessment Information

20% in class test, 30% reflective account of case studies, and 50% major project