This paper presents an alternative workflow for thermal comfort prediction. By using the leverage of Data Science & AI in combination with the power of computational design, the proposed methodology exploits the extensive comfort data provided by the ASHRAE Global Thermal Comfort Database II to generate more customised comfort prediction models. These models consider additional, often significant input parameters like location and specific building characteristics. Results from an early case study indicate that such an approach has the potential for more accurate comfort predictions that eventually lead to more efficient and comfortable buildings
This project is to explore the use of machine learning technique such as ANN, ELM etc to derive at a...
Efficient management of energy in buildings saves a very important amount of resources (both economi...
Thermal comfort in a large indoor office space with open office plan are highly influenced by the HV...
This paper presents an alternative workflow for thermal comfort prediction. By using the leverage of...
This paper presents an alternative workflow for thermal comfort prediction. By using the leverage of...
The goal of this work is to give a full review of how machine learning (ML) is used in thermal comfo...
Thermal comfort is a key consideration in the design and modeling of buildings and is one of the mai...
In thermal comfort measurements, commonly uses indices like Predictive Mean Vote (PMV) to measure th...
Thermal comfort modeling has been of interest in built environment research for decades. Mostly the ...
International audienceOccupants' thermal comfort assessment is becoming a crucial research topic sin...
In this paper, an innovative hybrid modelling technique based on machine learning and building dynam...
The assessment of the occupants' thermal sensation (TS) in a living environment is fundamental to en...
Thermal comfort prediction is essential for both maintaining a favorable indoor environment and redu...
Thermal comfort is a crucial factor of people’s happiness and work productivity. In today’s predomin...
Cities are becoming increasingly warm as a result of climate change and increasing population (Dimou...
This project is to explore the use of machine learning technique such as ANN, ELM etc to derive at a...
Efficient management of energy in buildings saves a very important amount of resources (both economi...
Thermal comfort in a large indoor office space with open office plan are highly influenced by the HV...
This paper presents an alternative workflow for thermal comfort prediction. By using the leverage of...
This paper presents an alternative workflow for thermal comfort prediction. By using the leverage of...
The goal of this work is to give a full review of how machine learning (ML) is used in thermal comfo...
Thermal comfort is a key consideration in the design and modeling of buildings and is one of the mai...
In thermal comfort measurements, commonly uses indices like Predictive Mean Vote (PMV) to measure th...
Thermal comfort modeling has been of interest in built environment research for decades. Mostly the ...
International audienceOccupants' thermal comfort assessment is becoming a crucial research topic sin...
In this paper, an innovative hybrid modelling technique based on machine learning and building dynam...
The assessment of the occupants' thermal sensation (TS) in a living environment is fundamental to en...
Thermal comfort prediction is essential for both maintaining a favorable indoor environment and redu...
Thermal comfort is a crucial factor of people’s happiness and work productivity. In today’s predomin...
Cities are becoming increasingly warm as a result of climate change and increasing population (Dimou...
This project is to explore the use of machine learning technique such as ANN, ELM etc to derive at a...
Efficient management of energy in buildings saves a very important amount of resources (both economi...
Thermal comfort in a large indoor office space with open office plan are highly influenced by the HV...