Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Predictive Information Modeling: Machine Learning Strategies for Material Uncertainty
This article presents a new design framework for the specification and prototyping of geometrically and behaviorally complex materials with graded properties, coined predictive information modeling (PIM). The contribution is the development of new circular design workflows employing machine learning for predicting fabrication files based on performance and design requirements. The aim is linking endogenous capacities as well as exogenous environmental dynamics of graded materials, as an approach to material focused intelligent design systems. Using two experimental case studies, the research demonstrates PIM as an applied design framework for addressing (1) material uncertainty, (2) multi-scale data integration, and (3) cyclical fabrication workflows. Through the analysis of these models, we demonstrate research methods that are validated for design applications, review their implications, and discuss further trajectories.
Predictive Information Modeling: Machine Learning Strategies for Material Uncertainty
This article presents a new design framework for the specification and prototyping of geometrically and behaviorally complex materials with graded properties, coined predictive information modeling (PIM). The contribution is the development of new circular design workflows employing machine learning for predicting fabrication files based on performance and design requirements. The aim is linking endogenous capacities as well as exogenous environmental dynamics of graded materials, as an approach to material focused intelligent design systems. Using two experimental case studies, the research demonstrates PIM as an applied design framework for addressing (1) material uncertainty, (2) multi-scale data integration, and (3) cyclical fabrication workflows. Through the analysis of these models, we demonstrate research methods that are validated for design applications, review their implications, and discuss further trajectories.
Predictive Information Modeling: Machine Learning Strategies for Material Uncertainty
Fragkia, Vasiliki (Autor:in) / Foged, Isak Worre (Autor:in) / Pasold, Anke (Autor:in)
Technology|Architecture + Design ; 5 ; 163-176
03.07.2021
14 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Unbekannt
British Library Online Contents | 2014
|British Library Online Contents | 2019
|Predictive modeling of critical headway based on machine learning techniques
DOAJ | 2022
|Machine Learning-Based Predictive Modeling of Sustainable Lightweight Aggregate Concrete
DOAJ | 2022
|Machine Learning-Based Digital Twin for Predictive Modeling in Wind Turbines
BASE | 2022
|