Computational Fluid Dynamic (CFD) simulations are used to predict indoor thermal environments and assess their response to specific internal/external conditions. Although computing power has increased exponentially in the past decade, CFD simulations are still time-consuming and their prediction results cannot be used for real-time immersive visualization in buildings. A method that can bypass the timeconsuming simulations and generate “acceptablei results will allow such visualization to be constructed.This paper discusses a project that utilizes a supervised Artificial Neural Network (ANN) as a learning algorithm to predict post-processed CFD data to ensure rapid data visualization. To develop a generic learning model for a wide range of ...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
This paper reports on the latest results in the development of a new approach for simulating the the...
This thesis presents and evaluates an approach for model-based deep reinforcement learning used for ...
Computational Fluid Dynamic (CFD) simulations are used to predict indoor thermal environments and as...
Computational Fluid Dynamics (CFD) simulations are used to predict the fluid behavior and particle s...
It is important to maintain a comfortable indoor thermal environment because people spend most of th...
It is important to maintain a comfortable indoor thermal environment because people spend most of th...
Two approaches for improving web-based post-processing tools for databases of computational fluid dy...
This paper reports on the latest results in the development of a new approach for simulating the the...
Abstract—An expert system that learns data from Compu-tational Fluid Dynamics (CFD) simulations and ...
AbstractWhen designing the indoor environment based on computational fluid dynamics (CFD), the artif...
The paper is concerned with an artificial neural network (ANN) based coarse-grain method (CGM) for r...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
An expert system that learns data from Computational Fluid Dynamics (CFD) simulations and presents i...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
This paper reports on the latest results in the development of a new approach for simulating the the...
This thesis presents and evaluates an approach for model-based deep reinforcement learning used for ...
Computational Fluid Dynamic (CFD) simulations are used to predict indoor thermal environments and as...
Computational Fluid Dynamics (CFD) simulations are used to predict the fluid behavior and particle s...
It is important to maintain a comfortable indoor thermal environment because people spend most of th...
It is important to maintain a comfortable indoor thermal environment because people spend most of th...
Two approaches for improving web-based post-processing tools for databases of computational fluid dy...
This paper reports on the latest results in the development of a new approach for simulating the the...
Abstract—An expert system that learns data from Compu-tational Fluid Dynamics (CFD) simulations and ...
AbstractWhen designing the indoor environment based on computational fluid dynamics (CFD), the artif...
The paper is concerned with an artificial neural network (ANN) based coarse-grain method (CGM) for r...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
An expert system that learns data from Computational Fluid Dynamics (CFD) simulations and presents i...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
This paper reports on the latest results in the development of a new approach for simulating the the...
This thesis presents and evaluates an approach for model-based deep reinforcement learning used for ...