Indoor air quality analysis is of interest to understand the abnormal atmospheric phenomena and external factors that affect air quality. By recording and analyzing quality measurements, we are able to observe patterns in the measurements and predict the air quality of near future. We designed a microchip made out of sensors that is capable of periodically recording measurements, and proposed a model that estimates atmospheric changes using deep learning. In addition, we developed an efficient algorithm to determine the optimal observation period for accurate air quality prediction. Experimental results with real-world data demonstrate the feasibility of our approach
Predicting the status of particulate air pollution is extremely important in terms of preventing pos...
Monitoring indoor air quality (IAQ) is deemed important nowadays. A sophisticated IAQ monitoring sys...
The influence of Machine learning and Data Science is advancing in healthcare, personalized recommen...
This paper presents a novel approach for detecting and predicting air quality using machine learning...
Air and good air quality are important for humans to carry out their everyday activities. Bad indoor...
Indoor air quality typically encompasses the ambient conditions inside buildings and public faciliti...
Indoor Air Quality (IAQ) pertains to the air quality within a specific space and is directly linked...
- With increased industry and urbanization, air pollution is becoming an environmental hazard. Air Q...
Indoor air pollution is more dangerous for residents. So, it is necessary to monitor the quality of ...
As the environmental awareness of urban citizens increases, traditional air quality monitoring stati...
The evolution of low-cost sensors (LCSs) has made the spatio-temporal mapping of indoor air quality ...
People mostly spend their time indoors for their daily activities. However, indoor air pollutant con...
The advancement and development of new technology provide atmospheric scientists and modelers to acq...
Particulate matter (PM) of sizes less than 10 µm (PM10) and 2.5 µm (PM2.5) found in the environment ...
In the coming decades, as we experience global population growth and global aging issues, there will...
Predicting the status of particulate air pollution is extremely important in terms of preventing pos...
Monitoring indoor air quality (IAQ) is deemed important nowadays. A sophisticated IAQ monitoring sys...
The influence of Machine learning and Data Science is advancing in healthcare, personalized recommen...
This paper presents a novel approach for detecting and predicting air quality using machine learning...
Air and good air quality are important for humans to carry out their everyday activities. Bad indoor...
Indoor air quality typically encompasses the ambient conditions inside buildings and public faciliti...
Indoor Air Quality (IAQ) pertains to the air quality within a specific space and is directly linked...
- With increased industry and urbanization, air pollution is becoming an environmental hazard. Air Q...
Indoor air pollution is more dangerous for residents. So, it is necessary to monitor the quality of ...
As the environmental awareness of urban citizens increases, traditional air quality monitoring stati...
The evolution of low-cost sensors (LCSs) has made the spatio-temporal mapping of indoor air quality ...
People mostly spend their time indoors for their daily activities. However, indoor air pollutant con...
The advancement and development of new technology provide atmospheric scientists and modelers to acq...
Particulate matter (PM) of sizes less than 10 µm (PM10) and 2.5 µm (PM2.5) found in the environment ...
In the coming decades, as we experience global population growth and global aging issues, there will...
Predicting the status of particulate air pollution is extremely important in terms of preventing pos...
Monitoring indoor air quality (IAQ) is deemed important nowadays. A sophisticated IAQ monitoring sys...
The influence of Machine learning and Data Science is advancing in healthcare, personalized recommen...