Impacts of Problem Scale and Sampling Strategy on Surrogate Model Accuracy An Application of Surrogate-based Optimization in Building Design
Loading...

Date
2016
Authors
Ding Yang
Yimin Sun
Danilo di Stefano
Michela Turrin
Sevil Sariyildiz
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Open Access Color
OpenAIRE Downloads
OpenAIRE Views
Abstract
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 necessary to get a reasonably accurate surrogate model. This paper aims to unveil: 1) the possible impacts of problem scale and sampling strategy on the surrogate model accuracy, and 2) the potential of Surrogate-based Optimization in finding high quality solutions for building envelope design optimization problems. For this purpose a series of multi-objective optimization test cases that mainly consider daylight and energy performance were conducted within the same time frame. Then the results were compared in pair based on which discussions were made. Finally the corresponding conclusions were obtained after the comparative study.
Description
Keywords
surrogate-based optimization, problem scale, sampling strategy, response surface model, design of experiments, multi-objective optimization, GENETIC ALGORITHM
Fields of Science
Citation
WoS Q
Scopus Q
Source
IEEE Congress on Evolutionary Computation (CEC) held as part of IEEE World Congress on Computational Intelligence (IEEE WCCI)
