Surrogate-based Optimization is a useful approach when the objective function is computationally expensive to evaluate, compared to Simulation-based Optimization. In the surrogate-based method, analytically tractable “surrogate models” (also known as “Response Surface Models — RSMs” or “metamodels”), are constructed and validated for each optimization objective and constraint at relatively low computational cost. They are useful for replacing the time-consuming simulations during the optimization; quickly locating the area where the optimum is expected to be for further search; and gaining insight into the global behavior of the system. Nevertheless, there are still concerns about the surrogate model accuracy and the number of simulations n...
The construction of models aimed at learning the behaviour of a system whose responses to inputs are...
Recent progress in computer science and stringent requirements of the design of “greener” buildings ...
The construction of models aimed at learning the behaviour of a system whose responses to inputs are...
Surrogate-based Optimization is a useful approach when the objective function is computationally exp...
Building performance simulations are usually timeconsuming. They may account for the major portion o...
In order to improve the performance of a surrogate model-based optimization method for building opti...
Building simulation based optimization involves direct coupling of the optimization algorithm to a s...
Building simulation based optimization involves direct coupling of the optimization algorithm to a s...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
In surrogate-based optimization, the designer's full precision computer (or even physical) models ar...
La recherche de la performance énergétique dans les bâtiments est devenue un objectif sociétal et ré...
La recherche de la performance énergétique dans les bâtiments est devenue un objectif sociétal et ré...
Optimization in buildings has been increasingly popular due to its growing availability and document...
Optimization in buildings has been increasingly popular due to its growing availability and document...
The evaluation of aerospace designs is synonymous with the use of long running computationally inten...
The construction of models aimed at learning the behaviour of a system whose responses to inputs are...
Recent progress in computer science and stringent requirements of the design of “greener” buildings ...
The construction of models aimed at learning the behaviour of a system whose responses to inputs are...
Surrogate-based Optimization is a useful approach when the objective function is computationally exp...
Building performance simulations are usually timeconsuming. They may account for the major portion o...
In order to improve the performance of a surrogate model-based optimization method for building opti...
Building simulation based optimization involves direct coupling of the optimization algorithm to a s...
Building simulation based optimization involves direct coupling of the optimization algorithm to a s...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
In surrogate-based optimization, the designer's full precision computer (or even physical) models ar...
La recherche de la performance énergétique dans les bâtiments est devenue un objectif sociétal et ré...
La recherche de la performance énergétique dans les bâtiments est devenue un objectif sociétal et ré...
Optimization in buildings has been increasingly popular due to its growing availability and document...
Optimization in buildings has been increasingly popular due to its growing availability and document...
The evaluation of aerospace designs is synonymous with the use of long running computationally inten...
The construction of models aimed at learning the behaviour of a system whose responses to inputs are...
Recent progress in computer science and stringent requirements of the design of “greener” buildings ...
The construction of models aimed at learning the behaviour of a system whose responses to inputs are...