It is well known that search-space reformulation can improve the speed and reliability of numerical optimization in engineering design. We argue that the best choice of reformulation depends on the design goal, and present a technique for automatically constructing rules that map the design goal into a reformulation chosen from a space of possible reformulations. We tested our technique in the domain of racing-yacht-hull design, where each reformulation corresponds to incorporating constraints into the search space. We applied a standard inductive-learning algorithm, C4.5, to a set of training data describing which constraints are active in the optimal design for each goal encountered in a previous design session. We then used these rules t...
Design Space Exploration is an important concept in engineering design in which the design space is ...
A method that exploits machine learning to aid modification-based computational design synthesis is ...
The performance of hillclimbing design optimization can be improved by abstraction and decomposition...
It is well known that search-space reformulation can improve the speed and reliability of numerical ...
Automatic design optimization is highly sensitive to problem formulation. The choice of objective fu...
Numerical design optimization algorithms are highly sensitive to the particular formulation of the o...
The first step for most case-based design systems is to select an initial prototype from a database ...
This paper presents a design optimization problem reformulation method based on Singular Value Decom...
Computational optimization methods are most often used to find a single or multiple optimal or near-...
AbstractAutomated search of a space of candidate designs is an attractive way to improve the traditi...
Abstract. For high performance yacht design systematic investigations of the design space play an in...
Many important applications can be formalized as constrained optimization tasks. For example, we are...
Graduation date: 1992Many important application problems in engineering can be formalized as nonline...
Available online 31 October 2013Computational optimization methods are most often used to find a sin...
There is a need to adapt and improve conceptual design methods through better optimization, in order...
Design Space Exploration is an important concept in engineering design in which the design space is ...
A method that exploits machine learning to aid modification-based computational design synthesis is ...
The performance of hillclimbing design optimization can be improved by abstraction and decomposition...
It is well known that search-space reformulation can improve the speed and reliability of numerical ...
Automatic design optimization is highly sensitive to problem formulation. The choice of objective fu...
Numerical design optimization algorithms are highly sensitive to the particular formulation of the o...
The first step for most case-based design systems is to select an initial prototype from a database ...
This paper presents a design optimization problem reformulation method based on Singular Value Decom...
Computational optimization methods are most often used to find a single or multiple optimal or near-...
AbstractAutomated search of a space of candidate designs is an attractive way to improve the traditi...
Abstract. For high performance yacht design systematic investigations of the design space play an in...
Many important applications can be formalized as constrained optimization tasks. For example, we are...
Graduation date: 1992Many important application problems in engineering can be formalized as nonline...
Available online 31 October 2013Computational optimization methods are most often used to find a sin...
There is a need to adapt and improve conceptual design methods through better optimization, in order...
Design Space Exploration is an important concept in engineering design in which the design space is ...
A method that exploits machine learning to aid modification-based computational design synthesis is ...
The performance of hillclimbing design optimization can be improved by abstraction and decomposition...