In this study, potential of neural-signal electroencephalogram (EEG)-based methods for enhancing human-building interaction under various indoor temperatures were explored. Correlations between EEG and subjective perceptions/tasks performance were experimentally investigated. Machine learning-based EEG pattern recognition was further studied. Results showed that the EEG frontal asymmetrical activity related well to the subjective questionnaire and objective tasks performance, which can be used as a more objective metric to corroborate traditional subjective questionnaire-based methods and task-based methods. Machine learning-based EEG pattern recognition with linear discriminant analysis (LDA) classifiers can well classify the different men...
When executing a task, brain activity can be observed through electric waves recorded in different f...
Personal comfort models (PCM) represent the most promising paradigm for human-centric thermal comfor...
The work investigates the application of artificial neural networks and logistic regression for the ...
In this study, potential of neural-signal electroencephalogram (EEG)-based methods for enhancing hum...
Varying indoor environmental conditions is known to affect office worker’s performance; wherei...
Multidomain comfort theories have been demonstrated to interpret human thermal comfort in buildings ...
The use of daylighting in building nowadays has become one alternative to save electric energy consu...
Harsh climate conditions, events of over-heating and over-cooling created a gap between envisioned i...
Human comfort perception has a key role in building energy performance since it drives occupants’ be...
Environmental and personal characteristics influence the behavior of individuals through the limitat...
Neuroarchitecture is the way dealing with the design of spaces by studying the relationship between ...
Neuroscience-based or neuroscience-informed design is a new application area of Brain-Computer Inter...
The human brain contains 86 billion nerve cells, the interaction activity of which makes human think...
Applied neuroscience in architecture emerges to understand how the environment influences the human ...
This study investigates the brainwaves associated with thermal discomfort induced by temperature upw...
When executing a task, brain activity can be observed through electric waves recorded in different f...
Personal comfort models (PCM) represent the most promising paradigm for human-centric thermal comfor...
The work investigates the application of artificial neural networks and logistic regression for the ...
In this study, potential of neural-signal electroencephalogram (EEG)-based methods for enhancing hum...
Varying indoor environmental conditions is known to affect office worker’s performance; wherei...
Multidomain comfort theories have been demonstrated to interpret human thermal comfort in buildings ...
The use of daylighting in building nowadays has become one alternative to save electric energy consu...
Harsh climate conditions, events of over-heating and over-cooling created a gap between envisioned i...
Human comfort perception has a key role in building energy performance since it drives occupants’ be...
Environmental and personal characteristics influence the behavior of individuals through the limitat...
Neuroarchitecture is the way dealing with the design of spaces by studying the relationship between ...
Neuroscience-based or neuroscience-informed design is a new application area of Brain-Computer Inter...
The human brain contains 86 billion nerve cells, the interaction activity of which makes human think...
Applied neuroscience in architecture emerges to understand how the environment influences the human ...
This study investigates the brainwaves associated with thermal discomfort induced by temperature upw...
When executing a task, brain activity can be observed through electric waves recorded in different f...
Personal comfort models (PCM) represent the most promising paradigm for human-centric thermal comfor...
The work investigates the application of artificial neural networks and logistic regression for the ...