The wind velocity field around buildings provides deep insights into the aerodynamic characteristics of buildings and indicates the pedestrian-level wind environment around buildings. Particle image velocimetry (PIV) is usually employed to measure the wind velocities around building models. Due to laser-light shielding, measuring instantaneous wind velocities at some shielded locations around a building model remains difficult. As a result, analyzing the wind flow pattern with these unmeasured wind velocities is difficult. Using machine learning techniques to impute unmeasured values allows for a comprehensive study of wind flow patterns with laser-light shielding. Unmeasured velocities around building models were imputed in this study usin...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
It is a challenge to design buildings that are both energy efficient and healthy. The factors that c...
A novel approach is presented to predict wind pressure on tall buildings for early-stage generative ...
Although the wind microclimate and wind environment play important roles in urban prediction, the ti...
Wind power is known as a major renewable and eco-friendly power generation source. As a clean and co...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
Rapidly computing the wind flow over complex terrain features is a challenging problem with many pot...
The aim of this work present a comprehensive exploration of machine learning models and compare thei...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
To balance electricity production and demand, it is required to use different prediction techniques ...
Abstract- The exponential rise in global population and rapidly depleting reserves of fossil fuels a...
Wind speed prediction with spatio–temporal correlation is among the most challenging tasks in wind s...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
Resolving the wind profile in an urban canyon environment means dealing with the turbulent nature of...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
It is a challenge to design buildings that are both energy efficient and healthy. The factors that c...
A novel approach is presented to predict wind pressure on tall buildings for early-stage generative ...
Although the wind microclimate and wind environment play important roles in urban prediction, the ti...
Wind power is known as a major renewable and eco-friendly power generation source. As a clean and co...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
Rapidly computing the wind flow over complex terrain features is a challenging problem with many pot...
The aim of this work present a comprehensive exploration of machine learning models and compare thei...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
To balance electricity production and demand, it is required to use different prediction techniques ...
Abstract- The exponential rise in global population and rapidly depleting reserves of fossil fuels a...
Wind speed prediction with spatio–temporal correlation is among the most challenging tasks in wind s...
We use deep learning techniques to model computational fluid dynamics (CFD) simulations of wind flow...
Resolving the wind profile in an urban canyon environment means dealing with the turbulent nature of...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
It is a challenge to design buildings that are both energy efficient and healthy. The factors that c...
A novel approach is presented to predict wind pressure on tall buildings for early-stage generative ...