We present a data-driven or non-intrusive reduced-order model (NIROM) which is capable of making predictions for a significantly larger domain than the one used to generate the snapshots or training data. This development relies on the combination of a novel way of sampling the training data (which frees the NIROM from its dependency on the original problem domain) and a domain decomposition approach (which partitions unseen geometries in a manner consistent with the sub-sampling approach). The method extends current capabilities of reduced-order models to generalise, i.e., to make predictions for unseen scenarios. The method is applied to a 2D test case which simulates the chaotic time-dependent flow of air past buildings at a moderate Rey...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. Itis based ...
This paper describes the development of a systematic tool chain capable of automatically extracting ...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...
To help create a comfortable and healthy indoor and outdoor environment in which to live, there is a...
In this paper, a new Domain Decomposition Non-Intrusive Reduced Order Model (DDNIROM) is developed f...
The modeling of multiphase flow in a pipe presents a significant challenge for high-resolution compu...
A non-intrusive reduced-order model for nonlinear parametric flowproblems is developed. It is based ...
Reduced-order models (ROMs) are computationally inexpensive simplifications of high-fidelity complex...
The modelling of multiphase flow in a pipe presents a significant challenge for high-resolution comp...
The goal of this work is to evaluate the aptness of generative adversarial networks (GANs) for use a...
In this thesis, a number of data-driven techniques are proposed for the analysis and extraction of ...
Physical systems whose dynamics are governed by partial differential equations (PDEs) find applicati...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
In this paper we present a new domain decomposition non-intrusive reduced order model (DDNIROM) for ...
Many-query scientific and industrial applications, such as design, demand affordable yet accurate co...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. Itis based ...
This paper describes the development of a systematic tool chain capable of automatically extracting ...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...
To help create a comfortable and healthy indoor and outdoor environment in which to live, there is a...
In this paper, a new Domain Decomposition Non-Intrusive Reduced Order Model (DDNIROM) is developed f...
The modeling of multiphase flow in a pipe presents a significant challenge for high-resolution compu...
A non-intrusive reduced-order model for nonlinear parametric flowproblems is developed. It is based ...
Reduced-order models (ROMs) are computationally inexpensive simplifications of high-fidelity complex...
The modelling of multiphase flow in a pipe presents a significant challenge for high-resolution comp...
The goal of this work is to evaluate the aptness of generative adversarial networks (GANs) for use a...
In this thesis, a number of data-driven techniques are proposed for the analysis and extraction of ...
Physical systems whose dynamics are governed by partial differential equations (PDEs) find applicati...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
In this paper we present a new domain decomposition non-intrusive reduced order model (DDNIROM) for ...
Many-query scientific and industrial applications, such as design, demand affordable yet accurate co...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. Itis based ...
This paper describes the development of a systematic tool chain capable of automatically extracting ...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...