A platform for research: civil engineering, architecture and urbanism
Decoding the Architectural Genome: Multi-Objective Evolutionary Algorithms in Design
The application of population-based optimization algorithms in design is heavily driven by the translation and analysis of various data sets that represent a design problem; in evolutionary-based algorithms, these data sets are illustrated through two primary data streams: genes and fitness functions. The latter is frequently examined when analyzing the algorithm’s output, and the former is comparatively less so. This paper examines the role of genomic analysis in applying multi-objective evolutionary algorithms (MOEA) in design. The results demonstrate the significance of utilizing the genetic analysis to understand better the relationships between parameters used in the design problem’s formulation and differentiate between morphological differences in the algorithmic output not commonly observed through fitness-based analyses.
Decoding the Architectural Genome: Multi-Objective Evolutionary Algorithms in Design
The application of population-based optimization algorithms in design is heavily driven by the translation and analysis of various data sets that represent a design problem; in evolutionary-based algorithms, these data sets are illustrated through two primary data streams: genes and fitness functions. The latter is frequently examined when analyzing the algorithm’s output, and the former is comparatively less so. This paper examines the role of genomic analysis in applying multi-objective evolutionary algorithms (MOEA) in design. The results demonstrate the significance of utilizing the genetic analysis to understand better the relationships between parameters used in the design problem’s formulation and differentiate between morphological differences in the algorithmic output not commonly observed through fitness-based analyses.
Decoding the Architectural Genome: Multi-Objective Evolutionary Algorithms in Design
Makki, Mohammad (author) / Navarro-Mateu, Diego (author) / Showkatbakhsh, Milad (author)
Technology|Architecture + Design ; 6 ; 68-79
2022-01-02
12 pages
Article (Journal)
Electronic Resource
Unknown
Co-operative co-evolutionary genetic algorithms for multi-objective topology design
British Library Conference Proceedings | 2005
|Tailor-made material design: An evolutionary approach using multi-objective genetic algorithms
British Library Online Contents | 2009
|Optimized Design of a Steel-Glass Parabolic Vault Using Evolutionary Multi-Objective Algorithms
SAGE Publications | 2008
|Optimized Design of a Steel-Glass Parabolic Vault Using Evolutionary Multi-Objective Algorithms
Online Contents | 2008
|